#####################FASTAPI___________________############## import os os.environ["OMP_NUM_THREADS"] = "1" import shutil import uuid import cv2 import numpy as np import threading import asyncio import subprocess import logging import tempfile import sys import time from datetime import datetime,timedelta import tempfile import insightface from insightface.app import FaceAnalysis from huggingface_hub import hf_hub_download from fastapi import FastAPI, UploadFile, File, HTTPException, Response, Depends, Security, Form from fastapi.responses import RedirectResponse from fastapi.security import HTTPBearer, HTTPAuthorizationCredentials from motor.motor_asyncio import AsyncIOMotorClient from bson import ObjectId from bson.errors import InvalidId import httpx import uvicorn from PIL import Image import io import requests # DigitalOcean Spaces import boto3 from botocore.client import Config from typing import Optional # --------------------- Logging --------------------- logging.basicConfig(level=logging.INFO) logger = logging.getLogger(__name__) # --------------------- Secrets & Paths --------------------- REPO_ID = "HariLogicgo/face_swap_models" MODELS_DIR = "./models" os.makedirs(MODELS_DIR, exist_ok=True) HF_TOKEN = os.getenv("HF_TOKEN") API_SECRET_TOKEN = os.getenv("API_SECRET_TOKEN") DO_SPACES_REGION = os.getenv("DO_SPACES_REGION", "blr1") DO_SPACES_ENDPOINT = f"https://{DO_SPACES_REGION}.digitaloceanspaces.com" DO_SPACES_KEY = os.getenv("DO_SPACES_KEY") DO_SPACES_SECRET = os.getenv("DO_SPACES_SECRET") DO_SPACES_BUCKET = os.getenv("DO_SPACES_BUCKET") # NEW admin DB (with error handling for missing env vars) ADMIN_MONGO_URL = os.getenv("ADMIN_MONGO_URL") admin_client = None admin_db = None subcategories_col = None media_clicks_col = None if ADMIN_MONGO_URL: try: admin_client = AsyncIOMotorClient(ADMIN_MONGO_URL) admin_db = admin_client.adminPanel subcategories_col = admin_db.subcategories media_clicks_col = admin_db.media_clicks except Exception as e: logger.warning(f"MongoDB admin connection failed (optional): {e}") # Collage Maker DB (optional) COLLAGE_MAKER_DB_URL = os.getenv("COLLAGE_MAKER_DB_URL") collage_maker_client = None collage_maker_db = None collage_media_clicks_col = None collage_subcategories_col = None if COLLAGE_MAKER_DB_URL: try: collage_maker_client = AsyncIOMotorClient(COLLAGE_MAKER_DB_URL) collage_maker_db = collage_maker_client.adminPanel collage_media_clicks_col = collage_maker_db.media_clicks collage_subcategories_col = collage_maker_db.subcategories except Exception as e: logger.warning(f"MongoDB collage-maker connection failed (optional): {e}") # AI Enhancer DB (optional) AI_ENHANCER_DB_URL = os.getenv("AI_ENHANCER_DB_URL") ai_enhancer_client = None ai_enhancer_db = None ai_enhancer_media_clicks_col = None ai_enhancer_subcategories_col = None if AI_ENHANCER_DB_URL: try: ai_enhancer_client = AsyncIOMotorClient(AI_ENHANCER_DB_URL) ai_enhancer_db = ai_enhancer_client.test # 🔴 test database ai_enhancer_media_clicks_col = ai_enhancer_db.media_clicks ai_enhancer_subcategories_col = ai_enhancer_db.subcategories except Exception as e: logger.warning(f"MongoDB ai-enhancer connection failed (optional): {e}") def get_media_clicks_collection(appname: Optional[str] = None): """Return the media clicks collection for the given app (default: main admin).""" if appname and str(appname).strip().lower() == "collage-maker": return collage_media_clicks_col return media_clicks_col # OLD logs DB MONGODB_URL = os.getenv("MONGODB_URL") client = None database = None # --------------------- Download Models --------------------- def download_models(): try: logger.info("Downloading models...") inswapper_path = hf_hub_download( repo_id=REPO_ID, filename="models/inswapper_128.onnx", repo_type="model", local_dir=MODELS_DIR, token=HF_TOKEN ) buffalo_files = ["1k3d68.onnx", "2d106det.onnx", "genderage.onnx", "det_10g.onnx", "w600k_r50.onnx"] for f in buffalo_files: hf_hub_download( repo_id=REPO_ID, filename=f"models/buffalo_l/" + f, repo_type="model", local_dir=MODELS_DIR, token=HF_TOKEN ) logger.info("Models downloaded successfully.") return inswapper_path except Exception as e: logger.error(f"Model download failed: {e}") raise try: inswapper_path = download_models() # --------------------- Face Analysis + Swapper --------------------- providers = ['CUDAExecutionProvider', 'CPUExecutionProvider'] face_analysis_app = FaceAnalysis(name="buffalo_l", root=MODELS_DIR, providers=providers) face_analysis_app.prepare(ctx_id=0, det_size=(640, 640)) swapper = insightface.model_zoo.get_model(inswapper_path, providers=providers) logger.info("Face analysis models loaded successfully") except Exception as e: logger.error(f"Failed to initialize face analysis models: {e}") # Set defaults to prevent crash inswapper_path = None face_analysis_app = None swapper = None # --------------------- CodeFormer --------------------- CODEFORMER_PATH = "CodeFormer/inference_codeformer.py" def ensure_codeformer(): """ Ensure CodeFormer's local basicsr + facelib are importable and pretrained weights are downloaded. No setup.py needed — we use sys.path / PYTHONPATH instead. """ try: if not os.path.exists("CodeFormer"): logger.info("CodeFormer not found, cloning repository...") subprocess.run("git clone https://github.com/sczhou/CodeFormer.git", shell=True, check=True) subprocess.run("pip install -r CodeFormer/requirements.txt", shell=True, check=False) # Add CodeFormer root to sys.path so `import basicsr` and # `import facelib` resolve to the local (compatible) versions # instead of the broken PyPI basicsr==1.4.2. codeformer_root = os.path.join(os.getcwd(), "CodeFormer") if codeformer_root not in sys.path: sys.path.insert(0, codeformer_root) logger.info(f"Added {codeformer_root} to sys.path for local basicsr/facelib") # NOTE: We do NOT need the PyPI 'realesrgan' package. # Both in-process and subprocess paths use CodeFormer's local # basicsr.utils.realesrgan_utils.RealESRGANer instead. # Installing PyPI realesrgan at runtime would re-install the # broken basicsr==1.4.2 and break everything. # Download pretrained weights if not already present if os.path.exists("CodeFormer"): try: subprocess.run("python CodeFormer/scripts/download_pretrained_models.py facelib", shell=True, check=False, timeout=300) except (subprocess.TimeoutExpired, subprocess.CalledProcessError): logger.warning("Failed to download facelib models (optional)") try: subprocess.run("python CodeFormer/scripts/download_pretrained_models.py CodeFormer", shell=True, check=False, timeout=300) except (subprocess.TimeoutExpired, subprocess.CalledProcessError): logger.warning("Failed to download CodeFormer models (optional)") except Exception as e: logger.error(f"CodeFormer setup failed: {e}") logger.warning("Continuing without CodeFormer features...") ensure_codeformer() # --------------------- In-Process CodeFormer (No Subprocess!) --------------------- # Load CodeFormer models ONCE at startup instead of spawning a new Python process per request. # This eliminates 15-40s of model loading overhead per request. codeformer_net = None codeformer_upsampler = None codeformer_face_helper = None codeformer_device = None def init_codeformer_in_process(): """Load CodeFormer models once into memory for fast per-request inference.""" global codeformer_net, codeformer_upsampler, codeformer_face_helper, codeformer_device try: import torch from torchvision.transforms.functional import normalize as torch_normalize # Add CodeFormer to Python path codeformer_root = os.path.join(os.getcwd(), "CodeFormer") if codeformer_root not in sys.path: sys.path.insert(0, codeformer_root) from basicsr.utils.registry import ARCH_REGISTRY from basicsr.utils.download_util import load_file_from_url from facelib.utils.face_restoration_helper import FaceRestoreHelper codeformer_device = torch.device('cuda' if torch.cuda.is_available() else 'cpu') logger.info(f"Initializing CodeFormer on device: {codeformer_device}") # 1) Load CodeFormer network net = ARCH_REGISTRY.get('CodeFormer')( dim_embd=512, codebook_size=1024, n_head=8, n_layers=9, connect_list=['32', '64', '128', '256'] ).to(codeformer_device) ckpt_path = load_file_from_url( url='https://github.com/sczhou/CodeFormer/releases/download/v0.1.0/codeformer.pth', model_dir='weights/CodeFormer', progress=True, file_name=None ) checkpoint = torch.load(ckpt_path, map_location=codeformer_device)['params_ema'] net.load_state_dict(checkpoint) net.eval() codeformer_net = net # 2) RealESRGAN upsampler — SKIPPED for face swap # Background/face upsampling is the #1 bottleneck (~20s per image). # For face swap we only need CodeFormer face restoration, not super-resolution. # The upsampler is kept as None; we no longer download the 64MB model at startup. codeformer_upsampler = None # 3) Create FaceRestoreHelper (reused per request) # NOTE: local CodeFormer uses "upscale_factor" (not "upscale") # upscale_factor=1 → keep original resolution (no 2x upscale needed for face swap) codeformer_face_helper = FaceRestoreHelper( upscale_factor=1, face_size=512, crop_ratio=(1, 1), det_model='retinaface_resnet50', save_ext='png', use_parse=True, device=codeformer_device ) logger.info("✅ CodeFormer models loaded in-process successfully!") return True except Exception as e: logger.error(f"Failed to load CodeFormer in-process: {e}") logger.warning("CodeFormer enhancement will be unavailable.") return False # Try to load CodeFormer models in-process _codeformer_available = init_codeformer_in_process() # --------------------- FastAPI --------------------- fastapi_app = FastAPI() @fastapi_app.on_event("startup") async def startup_db(): global client, database if MONGODB_URL: try: logger.info("Initializing MongoDB for API logs...") client = AsyncIOMotorClient(MONGODB_URL) database = client.FaceSwap logger.info("MongoDB initialized for API logs") except Exception as e: logger.warning(f"MongoDB connection failed (optional): {e}") client = None database = None else: logger.warning("MONGODB_URL not set, skipping MongoDB initialization") @fastapi_app.on_event("shutdown") async def shutdown_db(): global client, admin_client, collage_maker_client if client is not None: client.close() logger.info("MongoDB connection closed") if admin_client is not None: admin_client.close() logger.info("Admin MongoDB connection closed") if collage_maker_client is not None: collage_maker_client.close() logger.info("Collage Maker MongoDB connection closed") # --------------------- Auth --------------------- security = HTTPBearer() def verify_token(credentials: HTTPAuthorizationCredentials = Security(security)): if credentials.credentials != API_SECRET_TOKEN: raise HTTPException(status_code=401, detail="Invalid or missing token") return credentials.credentials # --------------------- DB Selector --------------------- def get_app_db_collections(appname: Optional[str] = None): """ Returns (media_clicks_collection, subcategories_collection) based on appname. """ if appname: app = appname.strip().lower() if app == "collage-maker": if collage_media_clicks_col is not None and collage_subcategories_col is not None: return collage_media_clicks_col, collage_subcategories_col logger.warning("Collage-maker DB not configured, falling back to admin") elif app == "ai-enhancer": if ai_enhancer_media_clicks_col is not None and ai_enhancer_subcategories_col is not None: return ai_enhancer_media_clicks_col, ai_enhancer_subcategories_col logger.warning("AI-Enhancer DB not configured, falling back to admin") # default fallback return media_clicks_col, subcategories_col # --------------------- Logging API Hits --------------------- async def log_faceswap_hit(token: str, status: str = "success"): global database if database is None: return await database.api_logs.insert_one({ "token": token, "endpoint": "/faceswap", "status": status, "timestamp": datetime.utcnow() }) # --------------------- Face Swap Pipeline --------------------- swap_lock = threading.Lock() def enhance_image_with_codeformer(rgb_img, temp_dir=None, w=0.7): """ Enhance face image using CodeFormer. Uses in-process models (fast) if available, falls back to subprocess (slow). """ global codeformer_net, codeformer_upsampler, codeformer_face_helper, codeformer_device t0 = time.time() # ── FAST PATH: In-process CodeFormer (no subprocess!) ── if codeformer_net is not None and codeformer_face_helper is not None: import torch from torchvision.transforms.functional import normalize as torch_normalize from basicsr.utils import img2tensor, tensor2img from facelib.utils.misc import is_gray bgr_img = cv2.cvtColor(rgb_img, cv2.COLOR_RGB2BGR) # Reset face helper state codeformer_face_helper.clean_all() codeformer_face_helper.read_image(bgr_img) num_faces = codeformer_face_helper.get_face_landmarks_5( only_center_face=False, resize=640, eye_dist_threshold=5 ) logger.info(f"[CodeFormer] Detected {num_faces} faces in {time.time()-t0:.2f}s") codeformer_face_helper.align_warp_face() # Enhance each cropped face with CodeFormer neural net t_faces = time.time() for idx, cropped_face in enumerate(codeformer_face_helper.cropped_faces): cropped_face_t = img2tensor(cropped_face / 255., bgr2rgb=True, float32=True) torch_normalize(cropped_face_t, (0.5, 0.5, 0.5), (0.5, 0.5, 0.5), inplace=True) cropped_face_t = cropped_face_t.unsqueeze(0).to(codeformer_device) try: with torch.no_grad(): output = codeformer_net(cropped_face_t, w=w, adain=True)[0] restored_face = tensor2img(output, rgb2bgr=True, min_max=(-1, 1)) del output torch.cuda.empty_cache() except Exception as e: logger.warning(f"[CodeFormer] Face {idx} inference failed: {e}") restored_face = tensor2img(cropped_face_t, rgb2bgr=True, min_max=(-1, 1)) restored_face = restored_face.astype('uint8') codeformer_face_helper.add_restored_face(restored_face, cropped_face) logger.info(f"[CodeFormer] Face restoration ({num_faces} faces): {time.time()-t_faces:.2f}s") # Paste restored faces back onto original image # NOTE: We skip RealESRGAN background/face upsampling — it's the #1 bottleneck # (~20s) and unnecessary for face swap. We only need CodeFormer face restoration. t_paste = time.time() codeformer_face_helper.get_inverse_affine(None) restored_img = codeformer_face_helper.paste_faces_to_input_image( upsample_img=None, draw_box=False ) logger.info(f"[CodeFormer] Paste back: {time.time()-t_paste:.2f}s") logger.info(f"[CodeFormer] In-process enhancement done in {time.time()-t0:.2f}s") return cv2.cvtColor(restored_img, cv2.COLOR_BGR2RGB) # ── SLOW FALLBACK: Subprocess CodeFormer (with timeout!) ── logger.warning("[CodeFormer] In-process models unavailable, falling back to subprocess") if temp_dir is None: temp_dir = os.path.join(tempfile.gettempdir(), f"enhance_{uuid.uuid4().hex[:8]}") os.makedirs(temp_dir, exist_ok=True) input_path = os.path.join(temp_dir, "input.jpg") cv2.imwrite(input_path, cv2.cvtColor(rgb_img, cv2.COLOR_RGB2BGR)) python_cmd = sys.executable if sys.executable else "python3" cmd = ( f"{python_cmd} {CODEFORMER_PATH} " f"-w {w} " f"--input_path {input_path} " f"--output_path {temp_dir} " f"--bg_upsampler None " f"--upscale 1" ) result = subprocess.run(cmd, shell=True, capture_output=True, text=True, timeout=120) if result.returncode != 0: raise RuntimeError(result.stderr) final_dir = os.path.join(temp_dir, "final_results") files = [f for f in os.listdir(final_dir) if f.endswith(".png")] if not files: raise RuntimeError("No enhanced output") final_path = os.path.join(final_dir, files[0]) enhanced = cv2.imread(final_path) logger.info(f"[CodeFormer] Subprocess enhancement done in {time.time()-t0:.2f}s") return cv2.cvtColor(enhanced, cv2.COLOR_BGR2RGB) def multi_face_swap(src_img, tgt_img): pipeline_start = time.time() src_bgr = cv2.cvtColor(src_img, cv2.COLOR_RGB2BGR) tgt_bgr = cv2.cvtColor(tgt_img, cv2.COLOR_RGB2BGR) t0 = time.time() src_faces = face_analysis_app.get(src_bgr) tgt_faces = face_analysis_app.get(tgt_bgr) logger.info(f"[Pipeline] Multi-face detection: {time.time()-t0:.2f}s") if not src_faces or not tgt_faces: raise ValueError("No faces detected") def face_sort_key(face): x1, y1, x2, y2 = face.bbox area = (x2 - x1) * (y2 - y1) cx = (x1 + x2) / 2 return (-area, cx) src_male = sorted([f for f in src_faces if f.gender == 1], key=face_sort_key) src_female = sorted([f for f in src_faces if f.gender == 0], key=face_sort_key) tgt_male = sorted([f for f in tgt_faces if f.gender == 1], key=face_sort_key) tgt_female = sorted([f for f in tgt_faces if f.gender == 0], key=face_sort_key) pairs = [] for s, t in zip(src_male, tgt_male): pairs.append((s, t)) for s, t in zip(src_female, tgt_female): pairs.append((s, t)) if not pairs: src_faces = sorted(src_faces, key=face_sort_key) tgt_faces = sorted(tgt_faces, key=face_sort_key) pairs = list(zip(src_faces, tgt_faces)) t0 = time.time() result_img = tgt_bgr.copy() for src_face, _ in pairs: if face_analysis_app is None: raise ValueError("Face analysis models not initialized.") current_faces = sorted(face_analysis_app.get(result_img), key=face_sort_key) candidates = [f for f in current_faces if f.gender == src_face.gender] or current_faces target_face = candidates[0] if swapper is None: raise ValueError("Face swap models not initialized.") result_img = swapper.get(result_img, target_face, src_face, paste_back=True) logger.info(f"[Pipeline] Multi-face swap ({len(pairs)} pairs): {time.time()-t0:.2f}s") logger.info(f"[Pipeline] TOTAL multi_face_swap: {time.time()-pipeline_start:.2f}s") return cv2.cvtColor(result_img, cv2.COLOR_BGR2RGB) def face_swap_and_enhance(src_img, tgt_img, temp_dir=None): try: with swap_lock: pipeline_start = time.time() if temp_dir is None: temp_dir = os.path.join(tempfile.gettempdir(), f"faceswap_work_{uuid.uuid4().hex[:8]}") if os.path.exists(temp_dir): shutil.rmtree(temp_dir) os.makedirs(temp_dir, exist_ok=True) if face_analysis_app is None: return None, None, "❌ Face analysis models not initialized." if swapper is None: return None, None, "❌ Face swap models not initialized." src_bgr = cv2.cvtColor(src_img, cv2.COLOR_RGB2BGR) tgt_bgr = cv2.cvtColor(tgt_img, cv2.COLOR_RGB2BGR) t0 = time.time() src_faces = face_analysis_app.get(src_bgr) tgt_faces = face_analysis_app.get(tgt_bgr) logger.info(f"[Pipeline] Face detection: {time.time()-t0:.2f}s") if not src_faces or not tgt_faces: return None, None, "❌ Face not detected in one of the images" t0 = time.time() swapped_bgr = swapper.get(tgt_bgr, tgt_faces[0], src_faces[0]) logger.info(f"[Pipeline] Face swap: {time.time()-t0:.2f}s") if swapped_bgr is None: return None, None, "❌ Face swap failed" # Use in-process CodeFormer enhancement (fast path) t0 = time.time() swapped_rgb = cv2.cvtColor(swapped_bgr, cv2.COLOR_BGR2RGB) try: enhanced_rgb = enhance_image_with_codeformer(swapped_rgb) enhanced_bgr = cv2.cvtColor(enhanced_rgb, cv2.COLOR_RGB2BGR) except Exception as e: logger.error(f"[Pipeline] CodeFormer failed, using raw swap: {e}") enhanced_bgr = swapped_bgr logger.info(f"[Pipeline] Enhancement: {time.time()-t0:.2f}s") final_path = os.path.join(temp_dir, f"result_{uuid.uuid4().hex[:8]}.png") cv2.imwrite(final_path, enhanced_bgr) final_img = cv2.cvtColor(enhanced_bgr, cv2.COLOR_BGR2RGB) logger.info(f"[Pipeline] TOTAL face_swap_and_enhance: {time.time()-pipeline_start:.2f}s") return final_img, final_path, "" except Exception as e: return None, None, f"❌ Error: {str(e)}" def compress_image( image_bytes: bytes, max_size=(1280, 1280), # max width/height quality=75 # JPEG quality (60–80 is ideal) ) -> bytes: """ Compress image by resizing and lowering quality. Returns compressed image bytes. """ img = Image.open(io.BytesIO(image_bytes)).convert("RGB") # Resize while maintaining aspect ratio img.thumbnail(max_size, Image.LANCZOS) output = io.BytesIO() img.save( output, format="JPEG", quality=quality, optimize=True, progressive=True ) return output.getvalue() # --------------------- DigitalOcean Spaces Helper --------------------- def get_spaces_client(): session = boto3.session.Session() client = session.client( 's3', region_name=DO_SPACES_REGION, endpoint_url=DO_SPACES_ENDPOINT, aws_access_key_id=DO_SPACES_KEY, aws_secret_access_key=DO_SPACES_SECRET, config=Config(signature_version='s3v4') ) return client def upload_to_spaces(file_bytes, key, content_type="image/png"): client = get_spaces_client() client.put_object(Bucket=DO_SPACES_BUCKET, Key=key, Body=file_bytes, ContentType=content_type, ACL='public-read') return f"{DO_SPACES_ENDPOINT}/{DO_SPACES_BUCKET}/{key}" def download_from_spaces(key): client = get_spaces_client() obj = client.get_object(Bucket=DO_SPACES_BUCKET, Key=key) return obj['Body'].read() def mandatory_enhancement(rgb_img): """ Always runs CodeFormer on the final image. Fail-safe: returns original if enhancement fails. """ try: return enhance_image_with_codeformer(rgb_img) except Exception as e: logger.error(f"CodeFormer failed, returning original: {e}") return rgb_img # --------------------- API Endpoints --------------------- @fastapi_app.get("/") async def root(): """Root endpoint""" return { "success": True, "message": "FaceSwap API", "data": { "version": "1.0.0", "Product Name":"Beauty Camera - GlowCam AI Studio", "Released By" : "LogicGo Infotech" } } @fastapi_app.get("/health") async def health(): return {"status": "healthy"} @fastapi_app.get("/test-admin-db") async def test_admin_db(): try: doc = await admin_db.list_collection_names() return {"ok": True, "collections": doc} except Exception as e: return {"ok": False, "error": str(e), "url": ADMIN_MONGO_URL} @fastapi_app.post("/face-swap", dependencies=[Depends(verify_token)]) async def face_swap_api( source: UploadFile = File(...), image2: Optional[UploadFile] = File(None), target_category_id: str = Form(None), new_category_id: str = Form(None), user_id: Optional[str] = Form(None), appname: Optional[str] = Form(None), credentials: HTTPAuthorizationCredentials = Security(security) ): start_time = datetime.utcnow() try: # ------------------------------------------------------------------ # VALIDATION # ------------------------------------------------------------------ # -------------------------------------------------------------- # BACKWARD COMPATIBILITY FOR OLD ANDROID VERSIONS # -------------------------------------------------------------- if target_category_id == "": target_category_id = None if new_category_id == "": new_category_id = None if user_id == "": user_id = None # media_clicks_collection = get_media_clicks_collection(appname) media_clicks_collection, subcategories_collection = get_app_db_collections(appname) logger.info(f"[FaceSwap] Incoming request → target_category_id={target_category_id}, new_category_id={new_category_id}, user_id={user_id}") if target_category_id and new_category_id: raise HTTPException(400, "Provide only one of new_category_id or target_category_id.") if not target_category_id and not new_category_id: raise HTTPException(400, "Either new_category_id or target_category_id is required.") # ------------------------------------------------------------------ # READ SOURCE IMAGE # ------------------------------------------------------------------ src_bytes = await source.read() src_key = f"faceswap/source/{uuid.uuid4().hex}_{source.filename}" upload_to_spaces(src_bytes, src_key, content_type=source.content_type) # ------------------------------------------------------------------ # CASE 1 : new_category_id → MongoDB lookup # ------------------------------------------------------------------ if new_category_id: # doc = await subcategories_col.find_one({ # "asset_images._id": ObjectId(new_category_id) # }) doc = await subcategories_collection.find_one({ "asset_images._id": ObjectId(new_category_id) }) if not doc: raise HTTPException(404, "Asset image not found in database") # extract correct asset asset = next( (img for img in doc["asset_images"] if str(img["_id"]) == new_category_id), None ) if not asset: raise HTTPException(404, "Asset image URL not found") # correct URL target_url = asset["url"] # correct categoryId (ObjectId) #category_oid = doc["categoryId"] # <-- DO NOT CONVERT TO STRING subcategory_oid = doc["_id"] # ------------------------------------------------------------------# # # MEDIA_CLICKS (ONLY IF user_id PRESENT) # ------------------------------------------------------------------# if user_id and media_clicks_collection is not None: try: user_id_clean = user_id.strip() if not user_id_clean: raise ValueError("user_id cannot be empty") try: user_oid = ObjectId(user_id_clean) except (InvalidId, ValueError) as e: logger.error(f"Invalid user_id format: {user_id_clean}") raise ValueError(f"Invalid user_id format: {user_id_clean}") now = datetime.utcnow() # Normalize dates (UTC midnight) today_date = datetime(now.year, now.month, now.day) # ------------------------------------------------- # STEP 1: Ensure root document exists # ------------------------------------------------- await media_clicks_collection.update_one( {"userId": user_oid}, { "$setOnInsert": { "userId": user_oid, "createdAt": now, "ai_edit_complete": 0, "ai_edit_daily_count": [] } }, upsert=True ) # ------------------------------------------------- # STEP 2: Handle DAILY USAGE (BINARY, NO DUPLICATES) # ------------------------------------------------- doc = await media_clicks_collection.find_one( {"userId": user_oid}, {"ai_edit_daily_count": 1} ) daily_entries = doc.get("ai_edit_daily_count", []) if doc else [] # Normalize today to UTC midnight today_date = datetime(now.year, now.month, now.day) # Build normalized date → count map (THIS ENFORCES UNIQUENESS) daily_map = {} for entry in daily_entries: d = entry["date"] if isinstance(d, datetime): d = datetime(d.year, d.month, d.day) daily_map[d] = entry["count"] # overwrite = no duplicates # Determine last recorded date last_date = max(daily_map.keys()) if daily_map else today_date # Fill ALL missing days with count = 0 next_day = last_date + timedelta(days=1) while next_day < today_date: daily_map.setdefault(next_day, 0) next_day += timedelta(days=1) # Mark today as used (binary) daily_map[today_date] = 1 # Rebuild list: OLDEST → NEWEST final_daily_entries = [ {"date": d, "count": daily_map[d]} for d in sorted(daily_map.keys()) ] # Keep only last 32 days final_daily_entries = final_daily_entries[-32:] # Atomic replace await media_clicks_collection.update_one( {"userId": user_oid}, { "$set": { "ai_edit_daily_count": final_daily_entries, "updatedAt": now } } ) # ------------------------------------------------- # STEP 3: Try updating existing subCategory # ------------------------------------------------- update_result = await media_clicks_collection.update_one( { "userId": user_oid, "subCategories.subCategoryId": subcategory_oid }, { "$inc": { "subCategories.$.click_count": 1, "ai_edit_complete": 1 }, "$set": { "subCategories.$.lastClickedAt": now, "ai_edit_last_date": now, "updatedAt": now } } ) # ------------------------------------------------- # STEP 4: Push subCategory if missing # ------------------------------------------------- if update_result.matched_count == 0: await media_clicks_collection.update_one( {"userId": user_oid}, { "$inc": { "ai_edit_complete": 1 }, "$set": { "ai_edit_last_date": now, "updatedAt": now }, "$push": { "subCategories": { "subCategoryId": subcategory_oid, "click_count": 1, "lastClickedAt": now } } } ) # ------------------------------------------------- # STEP 5: Sort subCategories by lastClickedAt (ascending - oldest first) # ------------------------------------------------- user_doc = await media_clicks_collection.find_one({"userId": user_oid}) if user_doc and "subCategories" in user_doc: subcategories = user_doc["subCategories"] # Sort by lastClickedAt in ascending order (oldest first) # Handle missing or None dates by using datetime.min subcategories_sorted = sorted( subcategories, key=lambda x: x.get("lastClickedAt") if x.get("lastClickedAt") is not None else datetime.min ) # Update with sorted array await media_clicks_collection.update_one( {"userId": user_oid}, { "$set": { "subCategories": subcategories_sorted, "updatedAt": now } } ) logger.info( "[MEDIA_CLICK] user=%s subCategory=%s ai_edit_complete++ daily_tracked", user_id, str(subcategory_oid) ) except Exception as media_err: logger.error(f"MEDIA_CLICK ERROR: {media_err}") elif user_id and media_clicks_collection is None: logger.warning("Media clicks collection unavailable; skipping media click tracking") # # ------------------------------------------------------------------ # # CASE 2 : target_category_id → DigitalOcean path (unchanged logic) # # ------------------------------------------------------------------ if target_category_id: client = get_spaces_client() base_prefix = "faceswap/target/" resp = client.list_objects_v2( Bucket=DO_SPACES_BUCKET, Prefix=base_prefix, Delimiter="/" ) # Extract categories from the CommonPrefixes categories = [p["Prefix"].split("/")[2] for p in resp.get("CommonPrefixes", [])] target_url = None # --- FIX STARTS HERE --- for category in categories: original_prefix = f"faceswap/target/{category}/original/" thumb_prefix = f"faceswap/target/{category}/thumb/" # Keep for file list check (optional but safe) # List objects in original/ original_objects = client.list_objects_v2( Bucket=DO_SPACES_BUCKET, Prefix=original_prefix ).get("Contents", []) # List objects in thumb/ (optional: for the old code's extra check) thumb_objects = client.list_objects_v2( Bucket=DO_SPACES_BUCKET, Prefix=thumb_prefix ).get("Contents", []) # Extract only the filenames and filter for .png original_filenames = sorted([ obj["Key"].split("/")[-1] for obj in original_objects if obj["Key"].split("/")[-1].endswith(".png") ]) thumb_filenames = [ obj["Key"].split("/")[-1] for obj in thumb_objects ] # Replicate the old indexing logic based on sorted filenames for idx, filename in enumerate(original_filenames, start=1): cid = f"{category.lower()}image_{idx}" # Optional: Replicate the thumb file check for 100% parity # if filename in thumb_filenames and cid == target_category_id: # Simpler check just on the ID, assuming thumb files are present if cid == target_category_id: # Construct the final target URL using the full prefix and the filename target_url = f"{DO_SPACES_ENDPOINT}/{DO_SPACES_BUCKET}/{original_prefix}{filename}" break if target_url: break # --- FIX ENDS HERE --- if not target_url: raise HTTPException(404, "Target categoryId not found") # # ------------------------------------------------------------------ # # DOWNLOAD TARGET IMAGE # # ------------------------------------------------------------------ async with httpx.AsyncClient(timeout=30.0) as client: response = await client.get(target_url) response.raise_for_status() tgt_bytes = response.content src_bgr = cv2.imdecode(np.frombuffer(src_bytes, np.uint8), cv2.IMREAD_COLOR) tgt_bgr = cv2.imdecode(np.frombuffer(tgt_bytes, np.uint8), cv2.IMREAD_COLOR) if src_bgr is None or tgt_bgr is None: raise HTTPException(400, "Invalid image data") src_rgb = cv2.cvtColor(src_bgr, cv2.COLOR_BGR2RGB) tgt_rgb = cv2.cvtColor(tgt_bgr, cv2.COLOR_BGR2RGB) # ------------------------------------------------------------------ # READ OPTIONAL IMAGE2 # ------------------------------------------------------------------ img2_rgb = None if image2: img2_bytes = await image2.read() img2_bgr = cv2.imdecode(np.frombuffer(img2_bytes, np.uint8), cv2.IMREAD_COLOR) if img2_bgr is not None: img2_rgb = cv2.cvtColor(img2_bgr, cv2.COLOR_BGR2RGB) # ------------------------------------------------------------------ # FACE SWAP EXECUTION (run in thread to not block event loop) # ------------------------------------------------------------------ if img2_rgb is not None: def _couple_swap(): pipeline_start = time.time() src_images = [src_rgb, img2_rgb] all_src_faces = [] t0 = time.time() for img in src_images: faces = face_analysis_app.get(cv2.cvtColor(img, cv2.COLOR_RGB2BGR)) all_src_faces.extend(faces) tgt_faces = face_analysis_app.get(cv2.cvtColor(tgt_rgb, cv2.COLOR_RGB2BGR)) logger.info(f"[Pipeline] Couple face detection: {time.time()-t0:.2f}s") if not all_src_faces: raise ValueError("No faces detected in source images") if not tgt_faces: raise ValueError("No faces detected in target image") def face_sort_key(face): x1, y1, x2, y2 = face.bbox area = (x2 - x1) * (y2 - y1) cx = (x1 + x2) / 2 return (-area, cx) src_male = sorted([f for f in all_src_faces if f.gender == 1], key=face_sort_key) src_female = sorted([f for f in all_src_faces if f.gender == 0], key=face_sort_key) tgt_male = sorted([f for f in tgt_faces if f.gender == 1], key=face_sort_key) tgt_female = sorted([f for f in tgt_faces if f.gender == 0], key=face_sort_key) pairs = [] for s, t in zip(src_male, tgt_male): pairs.append((s, t)) for s, t in zip(src_female, tgt_female): pairs.append((s, t)) if not pairs: src_all = sorted(all_src_faces, key=face_sort_key) tgt_all = sorted(tgt_faces, key=face_sort_key) pairs = list(zip(src_all, tgt_all)) t0 = time.time() with swap_lock: result_img = cv2.cvtColor(tgt_rgb, cv2.COLOR_RGB2BGR) for src_face, _ in pairs: current_faces = sorted(face_analysis_app.get(result_img), key=face_sort_key) candidates = [f for f in current_faces if f.gender == src_face.gender] or current_faces target_face = candidates[0] result_img = swapper.get(result_img, target_face, src_face, paste_back=True) logger.info(f"[Pipeline] Couple face swap: {time.time()-t0:.2f}s") result_rgb_out = cv2.cvtColor(result_img, cv2.COLOR_BGR2RGB) t0 = time.time() enhanced_rgb = mandatory_enhancement(result_rgb_out) logger.info(f"[Pipeline] Couple enhancement: {time.time()-t0:.2f}s") enhanced_bgr = cv2.cvtColor(enhanced_rgb, cv2.COLOR_RGB2BGR) temp_dir = tempfile.mkdtemp(prefix="faceswap_") final_path = os.path.join(temp_dir, "result.png") cv2.imwrite(final_path, enhanced_bgr) with open(final_path, "rb") as f: result_bytes = f.read() logger.info(f"[Pipeline] TOTAL couple swap: {time.time()-pipeline_start:.2f}s") return result_bytes try: result_bytes = await asyncio.to_thread(_couple_swap) except ValueError as ve: raise HTTPException(400, str(ve)) else: # ----- SINGLE SOURCE SWAP (run in thread) ----- def _single_swap(): return face_swap_and_enhance(src_rgb, tgt_rgb) final_img, final_path, err = await asyncio.to_thread(_single_swap) if err: raise HTTPException(500, err) with open(final_path, "rb") as f: result_bytes = f.read() result_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced.png" result_url = upload_to_spaces(result_bytes, result_key) # ------------------------------------------------- # COMPRESS IMAGE (2–3 MB target) # ------------------------------------------------- compressed_bytes = compress_image( image_bytes=result_bytes, max_size=(1280, 1280), quality=72 ) compressed_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced_compressed.jpg" compressed_url = upload_to_spaces( compressed_bytes, compressed_key, content_type="image/jpeg" ) end_time = datetime.utcnow() response_time_ms = (end_time - start_time).total_seconds() * 1000 if database is not None: log_entry = { "endpoint": "/face-swap", "status": "success", "response_time_ms": response_time_ms, "timestamp": end_time } if appname: log_entry["appname"] = appname await database.api_logs.insert_one(log_entry) return { "result_key": result_key, "result_url": result_url, "Compressed_Image_URL": compressed_url } except Exception as e: end_time = datetime.utcnow() response_time_ms = (end_time - start_time).total_seconds() * 1000 if database is not None: log_entry = { "endpoint": "/face-swap", "status": "fail", "response_time_ms": response_time_ms, "timestamp": end_time, "error": str(e) } if appname: log_entry["appname"] = appname await database.api_logs.insert_one(log_entry) raise HTTPException(500, f"Face swap failed: {str(e)}") @fastapi_app.get("/preview/{result_key:path}") async def preview_result(result_key: str): try: img_bytes = download_from_spaces(result_key) except Exception: raise HTTPException(status_code=404, detail="Result not found") return Response( content=img_bytes, media_type="image/png", headers={"Content-Disposition": "inline; filename=result.png"} ) @fastapi_app.post("/multi-face-swap", dependencies=[Depends(verify_token)]) async def multi_face_swap_api( source_image: UploadFile = File(...), target_image: UploadFile = File(...) ): start_time = datetime.utcnow() try: # ----------------------------- # Read images # ----------------------------- src_bytes = await source_image.read() tgt_bytes = await target_image.read() src_bgr = cv2.imdecode(np.frombuffer(src_bytes, np.uint8), cv2.IMREAD_COLOR) tgt_bgr = cv2.imdecode(np.frombuffer(tgt_bytes, np.uint8), cv2.IMREAD_COLOR) if src_bgr is None or tgt_bgr is None: raise HTTPException(400, "Invalid image data") src_rgb = cv2.cvtColor(src_bgr, cv2.COLOR_BGR2RGB) tgt_rgb = cv2.cvtColor(tgt_bgr, cv2.COLOR_BGR2RGB) # ----------------------------- # Multi-face swap (run in thread to not block event loop) # ----------------------------- def _multi_swap_and_enhance(): swapped_rgb = multi_face_swap(src_rgb, tgt_rgb) return mandatory_enhancement(swapped_rgb) final_rgb = await asyncio.to_thread(_multi_swap_and_enhance) final_bgr = cv2.cvtColor(final_rgb, cv2.COLOR_RGB2BGR) # ----------------------------- # Save temp result # ----------------------------- temp_dir = tempfile.mkdtemp(prefix="multi_faceswap_") result_path = os.path.join(temp_dir, "result.png") cv2.imwrite(result_path, final_bgr) with open(result_path, "rb") as f: result_bytes = f.read() # ----------------------------- # Upload # ----------------------------- result_key = f"faceswap/multi/{uuid.uuid4().hex}.png" result_url = upload_to_spaces( result_bytes, result_key, content_type="image/png" ) return { "result_key": result_key, "result_url": result_url } except Exception as e: raise HTTPException(status_code=500, detail=str(e)) @fastapi_app.post("/face-swap-couple", dependencies=[Depends(verify_token)]) async def face_swap_couple_api( image1: UploadFile = File(...), image2: Optional[UploadFile] = File(None), target_category_id: str = Form(None), new_category_id: str = Form(None), user_id: Optional[str] = Form(None), appname: Optional[str] = Form(None), credentials: HTTPAuthorizationCredentials = Security(security) ): """ Production-ready face swap endpoint supporting: - Multiple source images (image1 + optional image2) - Gender-based pairing - Merged faces from multiple sources - Mandatory CodeFormer enhancement """ start_time = datetime.utcnow() try: # ----------------------------- # Validate input # ----------------------------- if target_category_id == "": target_category_id = None if new_category_id == "": new_category_id = None if user_id == "": user_id = None media_clicks_collection = get_media_clicks_collection(appname) if target_category_id and new_category_id: raise HTTPException(400, "Provide only one of new_category_id or target_category_id.") if not target_category_id and not new_category_id: raise HTTPException(400, "Either new_category_id or target_category_id is required.") logger.info(f"[FaceSwap] Incoming request → target_category_id={target_category_id}, new_category_id={new_category_id}, user_id={user_id}") # ----------------------------- # Read source images # ----------------------------- src_images = [] img1_bytes = await image1.read() src1 = cv2.imdecode(np.frombuffer(img1_bytes, np.uint8), cv2.IMREAD_COLOR) if src1 is None: raise HTTPException(400, "Invalid image1 data") src_images.append(cv2.cvtColor(src1, cv2.COLOR_BGR2RGB)) if image2: img2_bytes = await image2.read() src2 = cv2.imdecode(np.frombuffer(img2_bytes, np.uint8), cv2.IMREAD_COLOR) if src2 is not None: src_images.append(cv2.cvtColor(src2, cv2.COLOR_BGR2RGB)) # ----------------------------- # Resolve target image # ----------------------------- target_url = None if new_category_id: doc = await subcategories_col.find_one({ "asset_images._id": ObjectId(new_category_id) }) if not doc: raise HTTPException(404, "Asset image not found in database") asset = next( (img for img in doc["asset_images"] if str(img["_id"]) == new_category_id), None ) if not asset: raise HTTPException(404, "Asset image URL not found") target_url = asset["url"] subcategory_oid = doc["_id"] if user_id and media_clicks_collection is not None: try: user_id_clean = user_id.strip() if not user_id_clean: raise ValueError("user_id cannot be empty") try: user_oid = ObjectId(user_id_clean) except (InvalidId, ValueError): logger.error(f"Invalid user_id format: {user_id_clean}") raise ValueError(f"Invalid user_id format: {user_id_clean}") now = datetime.utcnow() # Step 1: ensure root document exists await media_clicks_collection.update_one( {"userId": user_oid}, { "$setOnInsert": { "userId": user_oid, "createdAt": now, "ai_edit_complete": 0, "ai_edit_daily_count": [] } }, upsert=True ) # Step 2: handle daily usage (binary, no duplicates) doc = await media_clicks_collection.find_one( {"userId": user_oid}, {"ai_edit_daily_count": 1} ) daily_entries = doc.get("ai_edit_daily_count", []) if doc else [] today_date = datetime(now.year, now.month, now.day) daily_map = {} for entry in daily_entries: d = entry["date"] if isinstance(d, datetime): d = datetime(d.year, d.month, d.day) daily_map[d] = entry["count"] last_date = max(daily_map.keys()) if daily_map else None if last_date != today_date: daily_map[today_date] = 1 final_daily_entries = [ {"date": d, "count": daily_map[d]} for d in sorted(daily_map.keys()) ] final_daily_entries = final_daily_entries[-32:] await media_clicks_collection.update_one( {"userId": user_oid}, { "$set": { "ai_edit_daily_count": final_daily_entries, "updatedAt": now } } ) # Step 3: try updating existing subCategory update_result = await media_clicks_collection.update_one( { "userId": user_oid, "subCategories.subCategoryId": subcategory_oid }, { "$inc": { "subCategories.$.click_count": 1, "ai_edit_complete": 1 }, "$set": { "subCategories.$.lastClickedAt": now, "ai_edit_last_date": now, "updatedAt": now } } ) # Step 4: push subCategory if missing if update_result.matched_count == 0: await media_clicks_collection.update_one( {"userId": user_oid}, { "$inc": { "ai_edit_complete": 1 }, "$set": { "ai_edit_last_date": now, "updatedAt": now }, "$push": { "subCategories": { "subCategoryId": subcategory_oid, "click_count": 1, "lastClickedAt": now } } } ) # Step 5: sort subCategories by lastClickedAt (ascending) user_doc = await media_clicks_collection.find_one({"userId": user_oid}) if user_doc and "subCategories" in user_doc: subcategories = user_doc["subCategories"] subcategories_sorted = sorted( subcategories, key=lambda x: x.get("lastClickedAt") if x.get("lastClickedAt") is not None else datetime.min ) await media_clicks_collection.update_one( {"userId": user_oid}, { "$set": { "subCategories": subcategories_sorted, "updatedAt": now } } ) logger.info( "[MEDIA_CLICK] user=%s subCategory=%s ai_edit_complete++ daily_tracked", user_id, str(subcategory_oid) ) except Exception as media_err: logger.error(f"MEDIA_CLICK ERROR: {media_err}") elif user_id and media_clicks_collection is None: logger.warning("Media clicks collection unavailable; skipping media click tracking") if target_category_id: client = get_spaces_client() base_prefix = "faceswap/target/" resp = client.list_objects_v2( Bucket=DO_SPACES_BUCKET, Prefix=base_prefix, Delimiter="/" ) categories = [p["Prefix"].split("/")[2] for p in resp.get("CommonPrefixes", [])] for category in categories: original_prefix = f"faceswap/target/{category}/original/" thumb_prefix = f"faceswap/target/{category}/thumb/" original_objects = client.list_objects_v2( Bucket=DO_SPACES_BUCKET, Prefix=original_prefix ).get("Contents", []) thumb_objects = client.list_objects_v2( Bucket=DO_SPACES_BUCKET, Prefix=thumb_prefix ).get("Contents", []) original_filenames = sorted([ obj["Key"].split("/")[-1] for obj in original_objects if obj["Key"].split("/")[-1].endswith(".png") ]) for idx, filename in enumerate(original_filenames, start=1): cid = f"{category.lower()}image_{idx}" if cid == target_category_id: target_url = f"{DO_SPACES_ENDPOINT}/{DO_SPACES_BUCKET}/{original_prefix}{filename}" break if target_url: break if not target_url: raise HTTPException(404, "Target categoryId not found") async with httpx.AsyncClient(timeout=30.0) as client: response = await client.get(target_url) response.raise_for_status() tgt_bytes = response.content tgt_bgr = cv2.imdecode(np.frombuffer(tgt_bytes, np.uint8), cv2.IMREAD_COLOR) if tgt_bgr is None: raise HTTPException(400, "Invalid target image data") # ----------------------------- # Couple face swap + enhance (run in thread) # ----------------------------- def _couple_face_swap_and_enhance(): pipeline_start = time.time() all_src_faces = [] t0 = time.time() for img in src_images: faces = face_analysis_app.get(cv2.cvtColor(img, cv2.COLOR_RGB2BGR)) all_src_faces.extend(faces) tgt_faces = face_analysis_app.get(tgt_bgr) logger.info(f"[Pipeline] Couple-ep face detection: {time.time()-t0:.2f}s") if not all_src_faces: raise ValueError("No faces detected in source images") if not tgt_faces: raise ValueError("No faces detected in target image") def face_sort_key(face): x1, y1, x2, y2 = face.bbox area = (x2 - x1) * (y2 - y1) cx = (x1 + x2) / 2 return (-area, cx) src_male = sorted([f for f in all_src_faces if f.gender == 1], key=face_sort_key) src_female = sorted([f for f in all_src_faces if f.gender == 0], key=face_sort_key) tgt_male = sorted([f for f in tgt_faces if f.gender == 1], key=face_sort_key) tgt_female = sorted([f for f in tgt_faces if f.gender == 0], key=face_sort_key) pairs = [] for s, t in zip(src_male, tgt_male): pairs.append((s, t)) for s, t in zip(src_female, tgt_female): pairs.append((s, t)) if not pairs: src_all = sorted(all_src_faces, key=face_sort_key) tgt_all = sorted(tgt_faces, key=face_sort_key) pairs = list(zip(src_all, tgt_all)) t0 = time.time() with swap_lock: result_img = tgt_bgr.copy() for src_face, _ in pairs: current_faces = sorted(face_analysis_app.get(result_img), key=face_sort_key) candidates = [f for f in current_faces if f.gender == src_face.gender] or current_faces target_face = candidates[0] result_img = swapper.get(result_img, target_face, src_face, paste_back=True) logger.info(f"[Pipeline] Couple-ep face swap: {time.time()-t0:.2f}s") result_rgb = cv2.cvtColor(result_img, cv2.COLOR_BGR2RGB) t0 = time.time() enhanced_rgb = mandatory_enhancement(result_rgb) logger.info(f"[Pipeline] Couple-ep enhancement: {time.time()-t0:.2f}s") enhanced_bgr = cv2.cvtColor(enhanced_rgb, cv2.COLOR_RGB2BGR) temp_dir = tempfile.mkdtemp(prefix="faceswap_") final_path = os.path.join(temp_dir, "result.png") cv2.imwrite(final_path, enhanced_bgr) with open(final_path, "rb") as f: result_bytes = f.read() logger.info(f"[Pipeline] TOTAL couple-ep swap: {time.time()-pipeline_start:.2f}s") return result_bytes try: result_bytes = await asyncio.to_thread(_couple_face_swap_and_enhance) except ValueError as ve: raise HTTPException(400, str(ve)) result_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced.png" result_url = upload_to_spaces(result_bytes, result_key) compressed_bytes = compress_image(result_bytes, max_size=(1280, 1280), quality=72) compressed_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced_compressed.jpg" compressed_url = upload_to_spaces(compressed_bytes, compressed_key, content_type="image/jpeg") # ----------------------------- # Log API usage # ----------------------------- end_time = datetime.utcnow() response_time_ms = (end_time - start_time).total_seconds() * 1000 if database is not None: log_entry = { "endpoint": "/face-swap-couple", "status": "success", "response_time_ms": response_time_ms, "timestamp": end_time } if appname: log_entry["appname"] = appname await database.api_logs.insert_one(log_entry) return { "result_key": result_key, "result_url": result_url, "compressed_url": compressed_url } except Exception as e: end_time = datetime.utcnow() response_time_ms = (end_time - start_time).total_seconds() * 1000 if database is not None: log_entry = { "endpoint": "/face-swap-couple", "status": "fail", "response_time_ms": response_time_ms, "timestamp": end_time, "error": str(e) } if appname: log_entry["appname"] = appname await database.api_logs.insert_one(log_entry) raise HTTPException(500, f"Face swap failed: {str(e)}") if __name__ == "__main__": uvicorn.run(fastapi_app, host="0.0.0.0", port=7860) # # # --------------------- List Images Endpoint --------------------- # # import os # # os.environ["OMP_NUM_THREADS"] = "1" # # import shutil # # import uuid # # import cv2 # # import numpy as np # # import threading # # import subprocess # # import logging # # import tempfile # # import sys # # from datetime import datetime,timedelta # # import tempfile # # import insightface # # from insightface.app import FaceAnalysis # # from huggingface_hub import hf_hub_download # # from fastapi import FastAPI, UploadFile, File, HTTPException, Response, Depends, Security, Form # # from fastapi.responses import RedirectResponse # # from fastapi.security import HTTPBearer, HTTPAuthorizationCredentials # # from motor.motor_asyncio import AsyncIOMotorClient # # from bson import ObjectId # # from bson.errors import InvalidId # # import httpx # # import uvicorn # # import gradio as gr # # from gradio import mount_gradio_app # # from PIL import Image # # import io # # # from scipy import ndimage # # # DigitalOcean Spaces # # import boto3 # # from botocore.client import Config # # from typing import Optional # # # --------------------- Logging --------------------- # # logging.basicConfig(level=logging.INFO) # # logger = logging.getLogger(__name__) # # # --------------------- Secrets & Paths --------------------- # # REPO_ID = "HariLogicgo/face_swap_models" # # MODELS_DIR = "./models" # # os.makedirs(MODELS_DIR, exist_ok=True) # # HF_TOKEN = os.getenv("HF_TOKEN") # # API_SECRET_TOKEN = os.getenv("API_SECRET_TOKEN") # # DO_SPACES_REGION = os.getenv("DO_SPACES_REGION", "blr1") # # DO_SPACES_ENDPOINT = f"https://{DO_SPACES_REGION}.digitaloceanspaces.com" # # DO_SPACES_KEY = os.getenv("DO_SPACES_KEY") # # DO_SPACES_SECRET = os.getenv("DO_SPACES_SECRET") # # DO_SPACES_BUCKET = os.getenv("DO_SPACES_BUCKET") # # # NEW admin DB (with error handling for missing env vars) # # ADMIN_MONGO_URL = os.getenv("ADMIN_MONGO_URL") # # admin_client = None # # admin_db = None # # subcategories_col = None # # media_clicks_col = None # # if ADMIN_MONGO_URL: # # try: # # admin_client = AsyncIOMotorClient(ADMIN_MONGO_URL) # # admin_db = admin_client.adminPanel # # subcategories_col = admin_db.subcategories # # media_clicks_col = admin_db.media_clicks # # except Exception as e: # # logger.warning(f"MongoDB admin connection failed (optional): {e}") # # # Collage Maker DB (optional) # # COLLAGE_MAKER_DB_URL = os.getenv("COLLAGE_MAKER_DB_URL") # # collage_maker_client = None # # collage_maker_db = None # # collage_media_clicks_col = None # # if COLLAGE_MAKER_DB_URL: # # try: # # collage_maker_client = AsyncIOMotorClient(COLLAGE_MAKER_DB_URL) # # collage_maker_db = collage_maker_client.adminPanel # # collage_media_clicks_col = collage_maker_db.media_clicks # # except Exception as e: # # logger.warning(f"MongoDB ai-enhancer connection failed (optional): {e}") # # # AI Enhancer DB (optional) # # AI_ENHANCER_DB_URL = os.getenv("AI_ENHANCER_DB_URL") # # ai_enhancer_client = None # # ai_enhancer_db = None # # ai_enhancer_media_clicks_col = None # # ai_enhancer_subcategories_col = None # # if AI_ENHANCER_DB_URL: # # try: # # ai_enhancer_client = AsyncIOMotorClient(AI_ENHANCER_DB_URL) # # ai_enhancer_db = ai_enhancer_client.test # 🔴 test database # # ai_enhancer_media_clicks_col = ai_enhancer_db.media_clicks # # ai_enhancer_subcategories_col = ai_enhancer_db.subcategories # # except Exception as e: # # logger.warning(f"MongoDB ai-enhancer connection failed (optional): {e}") # # # OLD logs DB # # MONGODB_URL = os.getenv("MONGODB_URL") # # client = None # # database = None # # # --------------------- Download Models --------------------- # # def download_models(): # # try: # # logger.info("Downloading models...") # # inswapper_path = hf_hub_download( # # repo_id=REPO_ID, # # filename="models/inswapper_128.onnx", # # repo_type="model", # # local_dir=MODELS_DIR, # # token=HF_TOKEN # # ) # # buffalo_files = ["1k3d68.onnx", "2d106det.onnx", "genderage.onnx", "det_10g.onnx", "w600k_r50.onnx"] # # for f in buffalo_files: # # hf_hub_download( # # repo_id=REPO_ID, # # filename=f"models/buffalo_l/" + f, # # repo_type="model", # # local_dir=MODELS_DIR, # # token=HF_TOKEN # # ) # # logger.info("Models downloaded successfully.") # # return inswapper_path # # except Exception as e: # # logger.error(f"Model download failed: {e}") # # raise # # try: # # inswapper_path = download_models() # # # --------------------- Face Analysis + Swapper --------------------- # # providers = ['CUDAExecutionProvider', 'CPUExecutionProvider'] # # face_analysis_app = FaceAnalysis(name="buffalo_l", root=MODELS_DIR, providers=providers) # # face_analysis_app.prepare(ctx_id=0, det_size=(640, 640)) # # swapper = insightface.model_zoo.get_model(inswapper_path, providers=providers) # # logger.info("Face analysis models loaded successfully") # # except Exception as e: # # logger.error(f"Failed to initialize face analysis models: {e}") # # # Set defaults to prevent crash # # inswapper_path = None # # face_analysis_app = None # # swapper = None # # # --------------------- CodeFormer --------------------- # # CODEFORMER_PATH = "CodeFormer/inference_codeformer.py" # # def ensure_codeformer(): # # try: # # if not os.path.exists("CodeFormer"): # # logger.info("CodeFormer not found, cloning repository...") # # subprocess.run("git clone https://github.com/sczhou/CodeFormer.git", shell=True, check=True) # # subprocess.run("pip install -r CodeFormer/requirements.txt", shell=True, check=False) # Non-critical deps # # # Always ensure BasicSR is installed from local directory # # # This is needed for Hugging Face Spaces where BasicSR can't be installed from GitHub # # if os.path.exists("CodeFormer/basicsr/setup.py"): # # logger.info("Installing BasicSR from local directory...") # # subprocess.run("python CodeFormer/basicsr/setup.py develop", shell=True, check=True) # # logger.info("BasicSR installed successfully") # # # Install realesrgan after BasicSR is installed (realesrgan depends on BasicSR) # # # This must be done after BasicSR installation to avoid PyPI install issues # # try: # # import realesrgan # # logger.info("RealESRGAN already installed") # # except ImportError: # # logger.info("Installing RealESRGAN...") # # subprocess.run("pip install --no-cache-dir realesrgan", shell=True, check=True) # # logger.info("RealESRGAN installed successfully") # # # Download models if CodeFormer exists (fixed logic) # # if os.path.exists("CodeFormer"): # # try: # # subprocess.run("python CodeFormer/scripts/download_pretrained_models.py facelib", shell=True, check=False, timeout=300) # # except (subprocess.TimeoutExpired, subprocess.CalledProcessError): # # logger.warning("Failed to download facelib models (optional)") # # try: # # subprocess.run("python CodeFormer/scripts/download_pretrained_models.py CodeFormer", shell=True, check=False, timeout=300) # # except (subprocess.TimeoutExpired, subprocess.CalledProcessError): # # logger.warning("Failed to download CodeFormer models (optional)") # # except Exception as e: # # logger.error(f"CodeFormer setup failed: {e}") # # logger.warning("Continuing without CodeFormer features...") # # ensure_codeformer() # # # --------------------- FastAPI --------------------- # # fastapi_app = FastAPI() # # @fastapi_app.on_event("startup") # # async def startup_db(): # # global client, database # # if MONGODB_URL: # # try: # # logger.info("Initializing MongoDB for API logs...") # # client = AsyncIOMotorClient(MONGODB_URL) # # database = client.FaceSwap # # logger.info("MongoDB initialized for API logs") # # except Exception as e: # # logger.warning(f"MongoDB connection failed (optional): {e}") # # client = None # # database = None # # else: # # logger.warning("MONGODB_URL not set, skipping MongoDB initialization") # # @fastapi_app.on_event("shutdown") # # async def shutdown_db(): # # global client, admin_client, collage_maker_client # # if client is not None: # # client.close() # # logger.info("MongoDB connection closed") # # if admin_client is not None: # # admin_client.close() # # logger.info("Admin MongoDB connection closed") # # if collage_maker_client is not None: # # collage_maker_client.close() # # logger.info("Collage Maker MongoDB connection closed") # # # --------------------- Auth --------------------- # # security = HTTPBearer() # # def verify_token(credentials: HTTPAuthorizationCredentials = Security(security)): # # if credentials.credentials != API_SECRET_TOKEN: # # raise HTTPException(status_code=401, detail="Invalid or missing token") # # return credentials.credentials # # # --------------------- DB Selector --------------------- # # # def get_media_clicks_collection(appname: Optional[str] = None): # # # """ # # # Returns the correct media_clicks collection based on appname. # # # Defaults to the primary admin database when no appname is provided # # # or when the requested database is unavailable. # # # """ # # # if appname: # # # normalized = appname.strip().lower() # # # if normalized == "collage-maker": # # # if collage_media_clicks_col is not None: # # # return collage_media_clicks_col # # # logger.warning("COLLAGE_MAKER_DB_URL not configured; falling back to default media_clicks collection") # # # return media_clicks_col # # def get_app_db_collections(appname: Optional[str] = None): # # """ # # Returns (media_clicks_collection, subcategories_collection) # # based on appname. # # """ # # if appname: # # app = appname.strip().lower() # # if app == "collage-maker": # # if collage_media_clicks_col is not None and subcategories_col is not None: # # return collage_media_clicks_col, subcategories_col # # logger.warning("Collage-maker DB not configured, falling back to admin") # # elif app == "ai-enhancer": # # if ai_enhancer_media_clicks_col is not None and ai_enhancer_subcategories_col is not None: # # return ai_enhancer_media_clicks_col, ai_enhancer_subcategories_col # # logger.warning("AI-Enhancer DB not configured, falling back to admin") # # # default fallback # # return media_clicks_col, subcategories_col # # # --------------------- Logging API Hits --------------------- # # async def log_faceswap_hit(token: str, status: str = "success"): # # global database # # if database is None: # # return # # await database.api_logs.insert_one({ # # "token": token, # # "endpoint": "/faceswap", # # "status": status, # # "timestamp": datetime.utcnow() # # }) # # # --------------------- Face Swap Pipeline --------------------- # # swap_lock = threading.Lock() # # def enhance_image_with_codeformer(rgb_img, temp_dir=None): # # if temp_dir is None: # # temp_dir = os.path.join(tempfile.gettempdir(), f"enhance_{uuid.uuid4().hex[:8]}") # # os.makedirs(temp_dir, exist_ok=True) # # input_path = os.path.join(temp_dir, "input.jpg") # # cv2.imwrite(input_path, cv2.cvtColor(rgb_img, cv2.COLOR_RGB2BGR)) # # python_cmd = sys.executable if sys.executable else "python3" # # cmd = ( # # f"{python_cmd} {CODEFORMER_PATH} " # # f"-w 0.7 " # # f"--input_path {input_path} " # # f"--output_path {temp_dir} " # # f"--bg_upsampler realesrgan " # # f"--face_upsample" # # ) # # result = subprocess.run(cmd, shell=True, capture_output=True, text=True) # # if result.returncode != 0: # # raise RuntimeError(result.stderr) # # final_dir = os.path.join(temp_dir, "final_results") # # files = [f for f in os.listdir(final_dir) if f.endswith(".png")] # # if not files: # # raise RuntimeError("No enhanced output") # # final_path = os.path.join(final_dir, files[0]) # # enhanced = cv2.imread(final_path) # # return cv2.cvtColor(enhanced, cv2.COLOR_BGR2RGB) # # def multi_face_swap(src_img, tgt_img): # # src_bgr = cv2.cvtColor(src_img, cv2.COLOR_RGB2BGR) # # tgt_bgr = cv2.cvtColor(tgt_img, cv2.COLOR_RGB2BGR) # # src_faces = face_analysis_app.get(src_bgr) # # tgt_faces = face_analysis_app.get(tgt_bgr) # # if not src_faces or not tgt_faces: # # raise ValueError("No faces detected") # # def face_sort_key(face): # # x1, y1, x2, y2 = face.bbox # # area = (x2 - x1) * (y2 - y1) # # cx = (x1 + x2) / 2 # # return (-area, cx) # # # Split by gender # # src_male = [f for f in src_faces if f.gender == 1] # # src_female = [f for f in src_faces if f.gender == 0] # # tgt_male = [f for f in tgt_faces if f.gender == 1] # # tgt_female = [f for f in tgt_faces if f.gender == 0] # # # Sort inside gender groups # # src_male = sorted(src_male, key=face_sort_key) # # src_female = sorted(src_female, key=face_sort_key) # # tgt_male = sorted(tgt_male, key=face_sort_key) # # tgt_female = sorted(tgt_female, key=face_sort_key) # # # Build final swap pairs # # pairs = [] # # for s, t in zip(src_male, tgt_male): # # pairs.append((s, t)) # # for s, t in zip(src_female, tgt_female): # # pairs.append((s, t)) # # # Fallback if gender mismatch # # if not pairs: # # src_faces = sorted(src_faces, key=face_sort_key) # # tgt_faces = sorted(tgt_faces, key=face_sort_key) # # pairs = list(zip(src_faces, tgt_faces)) # # result_img = tgt_bgr.copy() # # for src_face, _ in pairs: # # # 🔁 re-detect current target faces # # if face_analysis_app is None: # # raise ValueError("Face analysis models not initialized. Please ensure models are downloaded.") # # current_faces = face_analysis_app.get(result_img) # # current_faces = sorted(current_faces, key=face_sort_key) # # # choose best matching gender # # candidates = [ # # f for f in current_faces if f.gender == src_face.gender # # ] or current_faces # # target_face = candidates[0] # # if swapper is None: # # raise ValueError("Face swap models not initialized. Please ensure models are downloaded.") # # result_img = swapper.get( # # result_img, # # target_face, # # src_face, # # paste_back=True # # ) # # return cv2.cvtColor(result_img, cv2.COLOR_BGR2RGB) # # def face_swap_and_enhance(src_img, tgt_img, temp_dir=None): # # try: # # with swap_lock: # # # Use a temp dir for intermediate files # # if temp_dir is None: # # temp_dir = os.path.join(tempfile.gettempdir(), f"faceswap_work_{uuid.uuid4().hex[:8]}") # # if os.path.exists(temp_dir): # # shutil.rmtree(temp_dir) # # os.makedirs(temp_dir, exist_ok=True) # # src_bgr = cv2.cvtColor(src_img, cv2.COLOR_RGB2BGR) # # tgt_bgr = cv2.cvtColor(tgt_img, cv2.COLOR_RGB2BGR) # # src_faces = face_analysis_app.get(src_bgr) # # tgt_faces = face_analysis_app.get(tgt_bgr) # # if face_analysis_app is None: # # return None, None, "❌ Face analysis models not initialized. Please ensure models are downloaded." # # if not src_faces or not tgt_faces: # # return None, None, "❌ Face not detected in one of the images" # # swapped_path = os.path.join(temp_dir, f"swapped_{uuid.uuid4().hex[:8]}.jpg") # # if swapper is None: # # return None, None, "❌ Face swap models not initialized. Please ensure models are downloaded." # # swapped_bgr = swapper.get(tgt_bgr, tgt_faces[0], src_faces[0]) # # if swapped_bgr is None: # # return None, None, "❌ Face swap failed" # # cv2.imwrite(swapped_path, swapped_bgr) # # python_cmd = sys.executable if sys.executable else "python3" # # cmd = f"{python_cmd} {CODEFORMER_PATH} -w 0.7 --input_path {swapped_path} --output_path {temp_dir} --bg_upsampler realesrgan --face_upsample" # # result = subprocess.run(cmd, shell=True, capture_output=True, text=True) # # if result.returncode != 0: # # return None, None, f"❌ CodeFormer failed:\n{result.stderr}" # # final_results_dir = os.path.join(temp_dir, "final_results") # # final_files = [f for f in os.listdir(final_results_dir) if f.endswith(".png")] # # if not final_files: # # return None, None, "❌ No enhanced image found" # # final_path = os.path.join(final_results_dir, final_files[0]) # # final_img_bgr = cv2.imread(final_path) # # if final_img_bgr is None: # # return None, None, "❌ Failed to read enhanced image file" # # final_img = cv2.cvtColor(final_img_bgr, cv2.COLOR_BGR2RGB) # # return final_img, final_path, "" # # except Exception as e: # # return None, None, f"❌ Error: {str(e)}" # # def compress_image( # # image_bytes: bytes, # # max_size=(1280, 1280), # max width/height # # quality=75 # JPEG quality (60–80 is ideal) # # ) -> bytes: # # """ # # Compress image by resizing and lowering quality. # # Returns compressed image bytes. # # """ # # img = Image.open(io.BytesIO(image_bytes)).convert("RGB") # # # Resize while maintaining aspect ratio # # img.thumbnail(max_size, Image.LANCZOS) # # output = io.BytesIO() # # img.save( # # output, # # format="JPEG", # # quality=quality, # # optimize=True, # # progressive=True # # ) # # return output.getvalue() # # # --------------------- DigitalOcean Spaces Helper --------------------- # # def get_spaces_client(): # # session = boto3.session.Session() # # client = session.client( # # 's3', # # region_name=DO_SPACES_REGION, # # endpoint_url=DO_SPACES_ENDPOINT, # # aws_access_key_id=DO_SPACES_KEY, # # aws_secret_access_key=DO_SPACES_SECRET, # # config=Config(signature_version='s3v4') # # ) # # return client # # def upload_to_spaces(file_bytes, key, content_type="image/png"): # # client = get_spaces_client() # # client.put_object(Bucket=DO_SPACES_BUCKET, Key=key, Body=file_bytes, ContentType=content_type, ACL='public-read') # # return f"{DO_SPACES_ENDPOINT}/{DO_SPACES_BUCKET}/{key}" # # def download_from_spaces(key): # # client = get_spaces_client() # # obj = client.get_object(Bucket=DO_SPACES_BUCKET, Key=key) # # return obj['Body'].read() # # def build_multi_faceswap_gradio(): # # with gr.Blocks() as demo: # # gr.Markdown("## 👩‍❤️‍👨 Multi Face Swap (Couple → Couple)") # # with gr.Row(): # # src = gr.Image(type="numpy", label="Source Image (2 Faces)") # # tgt = gr.Image(type="numpy", label="Target Image (2 Faces)") # # out = gr.Image(type="numpy", label="Swapped Result") # # error = gr.Textbox(label="Logs", interactive=False) # # def process(src_img, tgt_img): # # try: # # swapped = multi_face_swap(src_img, tgt_img) # # enhanced = enhance_image_with_codeformer(swapped) # # return enhanced, "" # # except Exception as e: # # return None, str(e) # # btn = gr.Button("Swap Faces") # # btn.click(process, [src, tgt], [out, error]) # # return demo # # def mandatory_enhancement(rgb_img): # # """ # # Always runs CodeFormer on the final image. # # Fail-safe: returns original if enhancement fails. # # """ # # try: # # return enhance_image_with_codeformer(rgb_img) # # except Exception as e: # # logger.error(f"CodeFormer failed, returning original: {e}") # # return rgb_img # # # --------------------- API Endpoints --------------------- # # @fastapi_app.get("/") # # async def root(): # # """Root endpoint""" # # return { # # "success": True, # # "message": "FaceSwap API", # # "data": { # # "version": "1.0.0", # # "Product Name":"Beauty Camera - GlowCam AI Studio", # # "Released By" : "LogicGo Infotech" # # } # # } # # @fastapi_app.get("/health") # # async def health(): # # return {"status": "healthy"} # # from fastapi import Form # # import requests # # @fastapi_app.get("/test-admin-db") # # async def test_admin_db(): # # try: # # doc = await admin_db.list_collection_names() # # return {"ok": True, "collections": doc} # # except Exception as e: # # return {"ok": False, "error": str(e), "url": ADMIN_MONGO_URL} # # @fastapi_app.post("/face-swap", dependencies=[Depends(verify_token)]) # # async def face_swap_api( # # source: UploadFile = File(...), # # target_category_id: str = Form(None), # # new_category_id: str = Form(None), # # user_id: Optional[str] = Form(None), # # appname: Optional[str] = Form(None), # # credentials: HTTPAuthorizationCredentials = Security(security) # # ): # # start_time = datetime.utcnow() # # try: # # # ------------------------------------------------------------------ # # # VALIDATION # # # ------------------------------------------------------------------ # # # -------------------------------------------------------------- # # # BACKWARD COMPATIBILITY FOR OLD ANDROID VERSIONS # # # -------------------------------------------------------------- # # if target_category_id == "": # # target_category_id = None # # if new_category_id == "": # # new_category_id = None # # if user_id == "": # # user_id = None # # # media_clicks_collection = get_media_clicks_collection(appname) # # media_clicks_collection, subcategories_collection = get_app_db_collections(appname) # # logger.info(f"[FaceSwap] Incoming request → target_category_id={target_category_id}, new_category_id={new_category_id}, user_id={user_id}") # # if target_category_id and new_category_id: # # raise HTTPException(400, "Provide only one of new_category_id or target_category_id.") # # if not target_category_id and not new_category_id: # # raise HTTPException(400, "Either new_category_id or target_category_id is required.") # # # ------------------------------------------------------------------ # # # READ SOURCE IMAGE # # # ------------------------------------------------------------------ # # src_bytes = await source.read() # # src_key = f"faceswap/source/{uuid.uuid4().hex}_{source.filename}" # # upload_to_spaces(src_bytes, src_key, content_type=source.content_type) # # # ------------------------------------------------------------------ # # # CASE 1 : new_category_id → MongoDB lookup # # # ------------------------------------------------------------------ # # if new_category_id: # # # doc = await subcategories_col.find_one({ # # # "asset_images._id": ObjectId(new_category_id) # # # }) # # doc = await subcategories_collection.find_one({ # # "asset_images._id": ObjectId(new_category_id) # # }) # # if not doc: # # raise HTTPException(404, "Asset image not found in database") # # # extract correct asset # # asset = next( # # (img for img in doc["asset_images"] if str(img["_id"]) == new_category_id), # # None # # ) # # if not asset: # # raise HTTPException(404, "Asset image URL not found") # # # correct URL # # target_url = asset["url"] # # # correct categoryId (ObjectId) # # #category_oid = doc["categoryId"] # <-- DO NOT CONVERT TO STRING # # subcategory_oid = doc["_id"] # # # ------------------------------------------------------------------# # # # # MEDIA_CLICKS (ONLY IF user_id PRESENT) # # # ------------------------------------------------------------------# # # if user_id and media_clicks_collection is not None: # # try: # # user_id_clean = user_id.strip() # # if not user_id_clean: # # raise ValueError("user_id cannot be empty") # # try: # # user_oid = ObjectId(user_id_clean) # # except (InvalidId, ValueError) as e: # # logger.error(f"Invalid user_id format: {user_id_clean}") # # raise ValueError(f"Invalid user_id format: {user_id_clean}") # # now = datetime.utcnow() # # # Normalize dates (UTC midnight) # # today_date = datetime(now.year, now.month, now.day) # # # ------------------------------------------------- # # # STEP 1: Ensure root document exists # # # ------------------------------------------------- # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$setOnInsert": { # # "userId": user_oid, # # "createdAt": now, # # "ai_edit_complete": 0, # # "ai_edit_daily_count": [] # # } # # }, # # upsert=True # # ) # # # ------------------------------------------------- # # # STEP 2: Handle DAILY USAGE (BINARY, NO DUPLICATES) # # # ------------------------------------------------- # # doc = await media_clicks_collection.find_one( # # {"userId": user_oid}, # # {"ai_edit_daily_count": 1} # # ) # # daily_entries = doc.get("ai_edit_daily_count", []) if doc else [] # # # Normalize today to UTC midnight # # today_date = datetime(now.year, now.month, now.day) # # # Build normalized date → count map (THIS ENFORCES UNIQUENESS) # # daily_map = {} # # for entry in daily_entries: # # d = entry["date"] # # if isinstance(d, datetime): # # d = datetime(d.year, d.month, d.day) # # daily_map[d] = entry["count"] # overwrite = no duplicates # # # Determine last recorded date # # last_date = max(daily_map.keys()) if daily_map else today_date # # # Fill ALL missing days with count = 0 # # next_day = last_date + timedelta(days=1) # # while next_day < today_date: # # daily_map.setdefault(next_day, 0) # # next_day += timedelta(days=1) # # # Mark today as used (binary) # # daily_map[today_date] = 1 # # # Rebuild list: OLDEST → NEWEST # # final_daily_entries = [ # # {"date": d, "count": daily_map[d]} # # for d in sorted(daily_map.keys()) # # ] # # # Keep only last 32 days # # final_daily_entries = final_daily_entries[-32:] # # # Atomic replace # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$set": { # # "ai_edit_daily_count": final_daily_entries, # # "updatedAt": now # # } # # } # # ) # # # ------------------------------------------------- # # # STEP 3: Try updating existing subCategory # # # ------------------------------------------------- # # update_result = await media_clicks_collection.update_one( # # { # # "userId": user_oid, # # "subCategories.subCategoryId": subcategory_oid # # }, # # { # # "$inc": { # # "subCategories.$.click_count": 1, # # "ai_edit_complete": 1 # # }, # # "$set": { # # "subCategories.$.lastClickedAt": now, # # "ai_edit_last_date": now, # # "updatedAt": now # # } # # } # # ) # # # ------------------------------------------------- # # # STEP 4: Push subCategory if missing # # # ------------------------------------------------- # # if update_result.matched_count == 0: # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$inc": { # # "ai_edit_complete": 1 # # }, # # "$set": { # # "ai_edit_last_date": now, # # "updatedAt": now # # }, # # "$push": { # # "subCategories": { # # "subCategoryId": subcategory_oid, # # "click_count": 1, # # "lastClickedAt": now # # } # # } # # } # # ) # # # ------------------------------------------------- # # # STEP 5: Sort subCategories by lastClickedAt (ascending - oldest first) # # # ------------------------------------------------- # # user_doc = await media_clicks_collection.find_one({"userId": user_oid}) # # if user_doc and "subCategories" in user_doc: # # subcategories = user_doc["subCategories"] # # # Sort by lastClickedAt in ascending order (oldest first) # # # Handle missing or None dates by using datetime.min # # subcategories_sorted = sorted( # # subcategories, # # key=lambda x: x.get("lastClickedAt") if x.get("lastClickedAt") is not None else datetime.min # # ) # # # Update with sorted array # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$set": { # # "subCategories": subcategories_sorted, # # "updatedAt": now # # } # # } # # ) # # logger.info( # # "[MEDIA_CLICK] user=%s subCategory=%s ai_edit_complete++ daily_tracked", # # user_id, # # str(subcategory_oid) # # ) # # except Exception as media_err: # # logger.error(f"MEDIA_CLICK ERROR: {media_err}") # # elif user_id and media_clicks_collection is None: # # logger.warning("Media clicks collection unavailable; skipping media click tracking") # # # # ------------------------------------------------------------------ # # # # CASE 2 : target_category_id → DigitalOcean path (unchanged logic) # # # # ------------------------------------------------------------------ # # if target_category_id: # # client = get_spaces_client() # # base_prefix = "faceswap/target/" # # resp = client.list_objects_v2( # # Bucket=DO_SPACES_BUCKET, Prefix=base_prefix, Delimiter="/" # # ) # # # Extract categories from the CommonPrefixes # # categories = [p["Prefix"].split("/")[2] for p in resp.get("CommonPrefixes", [])] # # target_url = None # # # --- FIX STARTS HERE --- # # for category in categories: # # original_prefix = f"faceswap/target/{category}/original/" # # thumb_prefix = f"faceswap/target/{category}/thumb/" # Keep for file list check (optional but safe) # # # List objects in original/ # # original_objects = client.list_objects_v2( # # Bucket=DO_SPACES_BUCKET, Prefix=original_prefix # # ).get("Contents", []) # # # List objects in thumb/ (optional: for the old code's extra check) # # thumb_objects = client.list_objects_v2( # # Bucket=DO_SPACES_BUCKET, Prefix=thumb_prefix # # ).get("Contents", []) # # # Extract only the filenames and filter for .png # # original_filenames = sorted([ # # obj["Key"].split("/")[-1] for obj in original_objects # # if obj["Key"].split("/")[-1].endswith(".png") # # ]) # # thumb_filenames = [ # # obj["Key"].split("/")[-1] for obj in thumb_objects # # ] # # # Replicate the old indexing logic based on sorted filenames # # for idx, filename in enumerate(original_filenames, start=1): # # cid = f"{category.lower()}image_{idx}" # # # Optional: Replicate the thumb file check for 100% parity # # # if filename in thumb_filenames and cid == target_category_id: # # # Simpler check just on the ID, assuming thumb files are present # # if cid == target_category_id: # # # Construct the final target URL using the full prefix and the filename # # target_url = f"{DO_SPACES_ENDPOINT}/{DO_SPACES_BUCKET}/{original_prefix}{filename}" # # break # # if target_url: # # break # # # --- FIX ENDS HERE --- # # if not target_url: # # raise HTTPException(404, "Target categoryId not found") # # # # ------------------------------------------------------------------ # # # # DOWNLOAD TARGET IMAGE # # # # ------------------------------------------------------------------ # # async with httpx.AsyncClient(timeout=30.0) as client: # # response = await client.get(target_url) # # response.raise_for_status() # # tgt_bytes = response.content # # src_bgr = cv2.imdecode(np.frombuffer(src_bytes, np.uint8), cv2.IMREAD_COLOR) # # tgt_bgr = cv2.imdecode(np.frombuffer(tgt_bytes, np.uint8), cv2.IMREAD_COLOR) # # if src_bgr is None or tgt_bgr is None: # # raise HTTPException(400, "Invalid image data") # # src_rgb = cv2.cvtColor(src_bgr, cv2.COLOR_BGR2RGB) # # tgt_rgb = cv2.cvtColor(tgt_bgr, cv2.COLOR_BGR2RGB) # # # ------------------------------------------------------------------ # # # FACE SWAP EXECUTION # # # ------------------------------------------------------------------ # # final_img, final_path, err = face_swap_and_enhance(src_rgb, tgt_rgb) # # # #--------------------Version 2.0 ----------------------------------------# # # # final_img, final_path, err = enhanced_face_swap_and_enhance(src_rgb, tgt_rgb) # # # #--------------------Version 2.0 ----------------------------------------# # # if err: # # raise HTTPException(500, err) # # with open(final_path, "rb") as f: # # result_bytes = f.read() # # result_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced.png" # # result_url = upload_to_spaces(result_bytes, result_key) # # # ------------------------------------------------- # # # COMPRESS IMAGE (2–3 MB target) # # # ------------------------------------------------- # # compressed_bytes = compress_image( # # image_bytes=result_bytes, # # max_size=(1280, 1280), # # quality=72 # # ) # # compressed_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced_compressed.jpg" # # compressed_url = upload_to_spaces( # # compressed_bytes, # # compressed_key, # # content_type="image/jpeg" # # ) # # end_time = datetime.utcnow() # # response_time_ms = (end_time - start_time).total_seconds() * 1000 # # if database is not None: # # log_entry = { # # "endpoint": "/face-swap", # # "status": "success", # # "response_time_ms": response_time_ms, # # "timestamp": end_time # # } # # if appname: # # log_entry["appname"] = appname # # await database.api_logs.insert_one(log_entry) # # return { # # "result_key": result_key, # # "result_url": result_url, # # "Compressed_Image_URL": compressed_url # # } # # except Exception as e: # # end_time = datetime.utcnow() # # response_time_ms = (end_time - start_time).total_seconds() * 1000 # # if database is not None: # # log_entry = { # # "endpoint": "/face-swap", # # "status": "fail", # # "response_time_ms": response_time_ms, # # "timestamp": end_time, # # "error": str(e) # # } # # if appname: # # log_entry["appname"] = appname # # await database.api_logs.insert_one(log_entry) # # raise HTTPException(500, f"Face swap failed: {str(e)}") # # @fastapi_app.get("/preview/{result_key:path}") # # async def preview_result(result_key: str): # # try: # # img_bytes = download_from_spaces(result_key) # # except Exception: # # raise HTTPException(status_code=404, detail="Result not found") # # return Response( # # content=img_bytes, # # media_type="image/png", # # headers={"Content-Disposition": "inline; filename=result.png"} # # ) # # @fastapi_app.post("/multi-face-swap", dependencies=[Depends(verify_token)]) # # async def multi_face_swap_api( # # source_image: UploadFile = File(...), # # target_image: UploadFile = File(...) # # ): # # start_time = datetime.utcnow() # # try: # # # ----------------------------- # # # Read images # # # ----------------------------- # # src_bytes = await source_image.read() # # tgt_bytes = await target_image.read() # # src_bgr = cv2.imdecode(np.frombuffer(src_bytes, np.uint8), cv2.IMREAD_COLOR) # # tgt_bgr = cv2.imdecode(np.frombuffer(tgt_bytes, np.uint8), cv2.IMREAD_COLOR) # # if src_bgr is None or tgt_bgr is None: # # raise HTTPException(400, "Invalid image data") # # src_rgb = cv2.cvtColor(src_bgr, cv2.COLOR_BGR2RGB) # # tgt_rgb = cv2.cvtColor(tgt_bgr, cv2.COLOR_BGR2RGB) # # # ----------------------------- # # # Multi-face swap # # # ----------------------------- # # swapped_rgb = multi_face_swap(src_rgb, tgt_rgb) # # # ----------------------------- # # # 🔥 MANDATORY ENHANCEMENT # # # ----------------------------- # # final_rgb = mandatory_enhancement(swapped_rgb) # # final_bgr = cv2.cvtColor(final_rgb, cv2.COLOR_RGB2BGR) # # # ----------------------------- # # # Save temp result # # # ----------------------------- # # temp_dir = tempfile.mkdtemp(prefix="multi_faceswap_") # # result_path = os.path.join(temp_dir, "result.png") # # cv2.imwrite(result_path, final_bgr) # # with open(result_path, "rb") as f: # # result_bytes = f.read() # # # ----------------------------- # # # Upload # # # ----------------------------- # # result_key = f"faceswap/multi/{uuid.uuid4().hex}.png" # # result_url = upload_to_spaces( # # result_bytes, # # result_key, # # content_type="image/png" # # ) # # return { # # "result_key": result_key, # # "result_url": result_url # # } # # except Exception as e: # # raise HTTPException(status_code=500, detail=str(e)) # # @fastapi_app.post("/face-swap-couple", dependencies=[Depends(verify_token)]) # # async def face_swap_api( # # image1: UploadFile = File(...), # # image2: Optional[UploadFile] = File(None), # # target_category_id: str = Form(None), # # new_category_id: str = Form(None), # # user_id: Optional[str] = Form(None), # # appname: Optional[str] = Form(None), # # credentials: HTTPAuthorizationCredentials = Security(security) # # ): # # """ # # Production-ready face swap endpoint supporting: # # - Multiple source images (image1 + optional image2) # # - Gender-based pairing # # - Merged faces from multiple sources # # - Mandatory CodeFormer enhancement # # """ # # start_time = datetime.utcnow() # # try: # # # ----------------------------- # # # Validate input # # # ----------------------------- # # if target_category_id == "": # # target_category_id = None # # if new_category_id == "": # # new_category_id = None # # if user_id == "": # # user_id = None # # media_clicks_collection = get_media_clicks_collection(appname) # # if target_category_id and new_category_id: # # raise HTTPException(400, "Provide only one of new_category_id or target_category_id.") # # if not target_category_id and not new_category_id: # # raise HTTPException(400, "Either new_category_id or target_category_id is required.") # # logger.info(f"[FaceSwap] Incoming request → target_category_id={target_category_id}, new_category_id={new_category_id}, user_id={user_id}") # # # ----------------------------- # # # Read source images # # # ----------------------------- # # src_images = [] # # img1_bytes = await image1.read() # # src1 = cv2.imdecode(np.frombuffer(img1_bytes, np.uint8), cv2.IMREAD_COLOR) # # if src1 is None: # # raise HTTPException(400, "Invalid image1 data") # # src_images.append(cv2.cvtColor(src1, cv2.COLOR_BGR2RGB)) # # if image2: # # img2_bytes = await image2.read() # # src2 = cv2.imdecode(np.frombuffer(img2_bytes, np.uint8), cv2.IMREAD_COLOR) # # if src2 is not None: # # src_images.append(cv2.cvtColor(src2, cv2.COLOR_BGR2RGB)) # # # ----------------------------- # # # Resolve target image # # # ----------------------------- # # target_url = None # # if new_category_id: # # doc = await subcategories_col.find_one({ # # "asset_images._id": ObjectId(new_category_id) # # }) # # if not doc: # # raise HTTPException(404, "Asset image not found in database") # # asset = next( # # (img for img in doc["asset_images"] if str(img["_id"]) == new_category_id), # # None # # ) # # if not asset: # # raise HTTPException(404, "Asset image URL not found") # # target_url = asset["url"] # # subcategory_oid = doc["_id"] # # if user_id and media_clicks_collection is not None: # # try: # # user_id_clean = user_id.strip() # # if not user_id_clean: # # raise ValueError("user_id cannot be empty") # # try: # # user_oid = ObjectId(user_id_clean) # # except (InvalidId, ValueError): # # logger.error(f"Invalid user_id format: {user_id_clean}") # # raise ValueError(f"Invalid user_id format: {user_id_clean}") # # now = datetime.utcnow() # # # Step 1: ensure root document exists # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$setOnInsert": { # # "userId": user_oid, # # "createdAt": now, # # "ai_edit_complete": 0, # # "ai_edit_daily_count": [] # # } # # }, # # upsert=True # # ) # # # Step 2: handle daily usage (binary, no duplicates) # # doc = await media_clicks_collection.find_one( # # {"userId": user_oid}, # # {"ai_edit_daily_count": 1} # # ) # # daily_entries = doc.get("ai_edit_daily_count", []) if doc else [] # # today_date = datetime(now.year, now.month, now.day) # # daily_map = {} # # for entry in daily_entries: # # d = entry["date"] # # if isinstance(d, datetime): # # d = datetime(d.year, d.month, d.day) # # daily_map[d] = entry["count"] # # last_date = max(daily_map.keys()) if daily_map else None # # if last_date != today_date: # # daily_map[today_date] = 1 # # final_daily_entries = [ # # {"date": d, "count": daily_map[d]} # # for d in sorted(daily_map.keys()) # # ] # # final_daily_entries = final_daily_entries[-32:] # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$set": { # # "ai_edit_daily_count": final_daily_entries, # # "updatedAt": now # # } # # } # # ) # # # Step 3: try updating existing subCategory # # update_result = await media_clicks_collection.update_one( # # { # # "userId": user_oid, # # "subCategories.subCategoryId": subcategory_oid # # }, # # { # # "$inc": { # # "subCategories.$.click_count": 1, # # "ai_edit_complete": 1 # # }, # # "$set": { # # "subCategories.$.lastClickedAt": now, # # "ai_edit_last_date": now, # # "updatedAt": now # # } # # } # # ) # # # Step 4: push subCategory if missing # # if update_result.matched_count == 0: # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$inc": { # # "ai_edit_complete": 1 # # }, # # "$set": { # # "ai_edit_last_date": now, # # "updatedAt": now # # }, # # "$push": { # # "subCategories": { # # "subCategoryId": subcategory_oid, # # "click_count": 1, # # "lastClickedAt": now # # } # # } # # } # # ) # # # Step 5: sort subCategories by lastClickedAt (ascending) # # user_doc = await media_clicks_collection.find_one({"userId": user_oid}) # # if user_doc and "subCategories" in user_doc: # # subcategories = user_doc["subCategories"] # # subcategories_sorted = sorted( # # subcategories, # # key=lambda x: x.get("lastClickedAt") if x.get("lastClickedAt") is not None else datetime.min # # ) # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$set": { # # "subCategories": subcategories_sorted, # # "updatedAt": now # # } # # } # # ) # # logger.info( # # "[MEDIA_CLICK] user=%s subCategory=%s ai_edit_complete++ daily_tracked", # # user_id, # # str(subcategory_oid) # # ) # # except Exception as media_err: # # logger.error(f"MEDIA_CLICK ERROR: {media_err}") # # elif user_id and media_clicks_collection is None: # # logger.warning("Media clicks collection unavailable; skipping media click tracking") # # if target_category_id: # # client = get_spaces_client() # # base_prefix = "faceswap/target/" # # resp = client.list_objects_v2( # # Bucket=DO_SPACES_BUCKET, Prefix=base_prefix, Delimiter="/" # # ) # # categories = [p["Prefix"].split("/")[2] for p in resp.get("CommonPrefixes", [])] # # for category in categories: # # original_prefix = f"faceswap/target/{category}/original/" # # thumb_prefix = f"faceswap/target/{category}/thumb/" # # original_objects = client.list_objects_v2( # # Bucket=DO_SPACES_BUCKET, Prefix=original_prefix # # ).get("Contents", []) # # thumb_objects = client.list_objects_v2( # # Bucket=DO_SPACES_BUCKET, Prefix=thumb_prefix # # ).get("Contents", []) # # original_filenames = sorted([ # # obj["Key"].split("/")[-1] for obj in original_objects # # if obj["Key"].split("/")[-1].endswith(".png") # # ]) # # for idx, filename in enumerate(original_filenames, start=1): # # cid = f"{category.lower()}image_{idx}" # # if cid == target_category_id: # # target_url = f"{DO_SPACES_ENDPOINT}/{DO_SPACES_BUCKET}/{original_prefix}{filename}" # # break # # if target_url: # # break # # if not target_url: # # raise HTTPException(404, "Target categoryId not found") # # async with httpx.AsyncClient(timeout=30.0) as client: # # response = await client.get(target_url) # # response.raise_for_status() # # tgt_bytes = response.content # # tgt_bgr = cv2.imdecode(np.frombuffer(tgt_bytes, np.uint8), cv2.IMREAD_COLOR) # # if tgt_bgr is None: # # raise HTTPException(400, "Invalid target image data") # # # ----------------------------- # # # Merge all source faces # # # ----------------------------- # # all_src_faces = [] # # for img in src_images: # # faces = face_analysis_app.get(cv2.cvtColor(img, cv2.COLOR_RGB2BGR)) # # all_src_faces.extend(faces) # # if not all_src_faces: # # raise HTTPException(400, "No faces detected in source images") # # tgt_faces = face_analysis_app.get(tgt_bgr) # # if not tgt_faces: # # raise HTTPException(400, "No faces detected in target image") # # # ----------------------------- # # # Gender-based pairing # # # ----------------------------- # # def face_sort_key(face): # # x1, y1, x2, y2 = face.bbox # # area = (x2 - x1) * (y2 - y1) # # cx = (x1 + x2) / 2 # # return (-area, cx) # # # Separate by gender # # src_male = sorted([f for f in all_src_faces if f.gender == 1], key=face_sort_key) # # src_female = sorted([f for f in all_src_faces if f.gender == 0], key=face_sort_key) # # tgt_male = sorted([f for f in tgt_faces if f.gender == 1], key=face_sort_key) # # tgt_female = sorted([f for f in tgt_faces if f.gender == 0], key=face_sort_key) # # pairs = [] # # for s, t in zip(src_male, tgt_male): # # pairs.append((s, t)) # # for s, t in zip(src_female, tgt_female): # # pairs.append((s, t)) # # # fallback if gender mismatch # # if not pairs: # # src_all = sorted(all_src_faces, key=face_sort_key) # # tgt_all = sorted(tgt_faces, key=face_sort_key) # # pairs = list(zip(src_all, tgt_all)) # # # ----------------------------- # # # Perform face swap # # # ----------------------------- # # with swap_lock: # # result_img = tgt_bgr.copy() # # for src_face, _ in pairs: # # if face_analysis_app is None: # # raise HTTPException(status_code=500, detail="Face analysis models not initialized. Please ensure models are downloaded.") # # current_faces = sorted(face_analysis_app.get(result_img), key=face_sort_key) # # candidates = [f for f in current_faces if f.gender == src_face.gender] or current_faces # # target_face = candidates[0] # # if swapper is None: # # raise HTTPException(status_code=500, detail="Face swap models not initialized. Please ensure models are downloaded.") # # result_img = swapper.get(result_img, target_face, src_face, paste_back=True) # # result_rgb = cv2.cvtColor(result_img, cv2.COLOR_BGR2RGB) # # # ----------------------------- # # # Mandatory enhancement # # # ----------------------------- # # enhanced_rgb = mandatory_enhancement(result_rgb) # # enhanced_bgr = cv2.cvtColor(enhanced_rgb, cv2.COLOR_RGB2BGR) # # # ----------------------------- # # # Save, upload, compress # # # ----------------------------- # # temp_dir = tempfile.mkdtemp(prefix="faceswap_") # # final_path = os.path.join(temp_dir, "result.png") # # cv2.imwrite(final_path, enhanced_bgr) # # with open(final_path, "rb") as f: # # result_bytes = f.read() # # result_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced.png" # # result_url = upload_to_spaces(result_bytes, result_key) # # compressed_bytes = compress_image(result_bytes, max_size=(1280, 1280), quality=72) # # compressed_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced_compressed.jpg" # # compressed_url = upload_to_spaces(compressed_bytes, compressed_key, content_type="image/jpeg") # # # ----------------------------- # # # Log API usage # # # ----------------------------- # # end_time = datetime.utcnow() # # response_time_ms = (end_time - start_time).total_seconds() * 1000 # # if database is not None: # # log_entry = { # # "endpoint": "/face-swap-couple", # # "status": "success", # # "response_time_ms": response_time_ms, # # "timestamp": end_time # # } # # if appname: # # log_entry["appname"] = appname # # await database.api_logs.insert_one(log_entry) # # return { # # "result_key": result_key, # # "result_url": result_url, # # "compressed_url": compressed_url # # } # # except Exception as e: # # end_time = datetime.utcnow() # # response_time_ms = (end_time - start_time).total_seconds() * 1000 # # if database is not None: # # log_entry = { # # "endpoint": "/face-swap-couple", # # "status": "fail", # # "response_time_ms": response_time_ms, # # "timestamp": end_time, # # "error": str(e) # # } # # if appname: # # log_entry["appname"] = appname # # await database.api_logs.insert_one(log_entry) # # raise HTTPException(500, f"Face swap failed: {str(e)}") # # # --------------------- Mount Gradio --------------------- # # multi_faceswap_app = build_multi_faceswap_gradio() # # fastapi_app = mount_gradio_app( # # fastapi_app, # # multi_faceswap_app, # # path="/gradio-couple-faceswap" # # ) # # if __name__ == "__main__": # # uvicorn.run(fastapi_app, host="0.0.0.0", port=7860) # # --------------------- List Images Endpoint --------------------- # # import os # # os.environ["OMP_NUM_THREADS"] = "1" # # import shutil # # import uuid # # import cv2 # # import numpy as np # # import threading # # import subprocess # # import logging # # import tempfile # # import sys # # from datetime import datetime,timedelta # # import tempfile # # import insightface # # from insightface.app import FaceAnalysis # # from huggingface_hub import hf_hub_download # # from fastapi import FastAPI, UploadFile, File, HTTPException, Response, Depends, Security, Form # # from fastapi.responses import RedirectResponse # # from fastapi.security import HTTPBearer, HTTPAuthorizationCredentials # # from motor.motor_asyncio import AsyncIOMotorClient # # from bson import ObjectId # # from bson.errors import InvalidId # # import httpx # # import uvicorn # # import gradio as gr # # from gradio import mount_gradio_app # # from PIL import Image # # import io # # # from scipy import ndimage # # # DigitalOcean Spaces # # import boto3 # # from botocore.client import Config # # from typing import Optional # # # --------------------- Logging --------------------- # # logging.basicConfig(level=logging.INFO) # # logger = logging.getLogger(__name__) # # # --------------------- Secrets & Paths --------------------- # # REPO_ID = "HariLogicgo/face_swap_models" # # MODELS_DIR = "./models" # # os.makedirs(MODELS_DIR, exist_ok=True) # # HF_TOKEN = os.getenv("HF_TOKEN") # # API_SECRET_TOKEN = os.getenv("API_SECRET_TOKEN") # # DO_SPACES_REGION = os.getenv("DO_SPACES_REGION", "blr1") # # DO_SPACES_ENDPOINT = f"https://{DO_SPACES_REGION}.digitaloceanspaces.com" # # DO_SPACES_KEY = os.getenv("DO_SPACES_KEY") # # DO_SPACES_SECRET = os.getenv("DO_SPACES_SECRET") # # DO_SPACES_BUCKET = os.getenv("DO_SPACES_BUCKET") # # # NEW admin DB (with error handling for missing env vars) # # ADMIN_MONGO_URL = os.getenv("ADMIN_MONGO_URL") # # admin_client = None # # admin_db = None # # subcategories_col = None # # media_clicks_col = None # # if ADMIN_MONGO_URL: # # try: # # admin_client = AsyncIOMotorClient(ADMIN_MONGO_URL) # # admin_db = admin_client.adminPanel # # subcategories_col = admin_db.subcategories # # media_clicks_col = admin_db.media_clicks # # except Exception as e: # # logger.warning(f"MongoDB admin connection failed (optional): {e}") # # # Collage Maker DB (optional) # # COLLAGE_MAKER_DB_URL = os.getenv("COLLAGE_MAKER_DB_URL") # # collage_maker_client = None # # collage_maker_db = None # # collage_media_clicks_col = None # # if COLLAGE_MAKER_DB_URL: # # try: # # collage_maker_client = AsyncIOMotorClient(COLLAGE_MAKER_DB_URL) # # collage_maker_db = collage_maker_client.adminPanel # # collage_media_clicks_col = collage_maker_db.media_clicks # # except Exception as e: # # logger.warning(f"MongoDB ai-enhancer connection failed (optional): {e}") # # # AI Enhancer DB (optional) # # AI_ENHANCER_DB_URL = os.getenv("AI_ENHANCER_DB_URL") # # ai_enhancer_client = None # # ai_enhancer_db = None # # ai_enhancer_media_clicks_col = None # # ai_enhancer_subcategories_col = None # # if AI_ENHANCER_DB_URL: # # try: # # ai_enhancer_client = AsyncIOMotorClient(AI_ENHANCER_DB_URL) # # ai_enhancer_db = ai_enhancer_client.test # 🔴 test database # # ai_enhancer_media_clicks_col = ai_enhancer_db.media_clicks # # ai_enhancer_subcategories_col = ai_enhancer_db.subcategories # # except Exception as e: # # logger.warning(f"MongoDB ai-enhancer connection failed (optional): {e}") # # def get_media_clicks_collection(appname: Optional[str] = None): # # """Return the media clicks collection for the given app (default: main admin).""" # # if appname and str(appname).strip().lower() == "collage-maker": # # return collage_media_clicks_col # # return media_clicks_col # # # OLD logs DB # # MONGODB_URL = os.getenv("MONGODB_URL") # # client = None # # database = None # # # --------------------- Download Models --------------------- # # def download_models(): # # try: # # logger.info("Downloading models...") # # inswapper_path = hf_hub_download( # # repo_id=REPO_ID, # # filename="models/inswapper_128.onnx", # # repo_type="model", # # local_dir=MODELS_DIR, # # token=HF_TOKEN # # ) # # buffalo_files = ["1k3d68.onnx", "2d106det.onnx", "genderage.onnx", "det_10g.onnx", "w600k_r50.onnx"] # # for f in buffalo_files: # # hf_hub_download( # # repo_id=REPO_ID, # # filename=f"models/buffalo_l/" + f, # # repo_type="model", # # local_dir=MODELS_DIR, # # token=HF_TOKEN # # ) # # logger.info("Models downloaded successfully.") # # return inswapper_path # # except Exception as e: # # logger.error(f"Model download failed: {e}") # # raise # # try: # # inswapper_path = download_models() # # # --------------------- Face Analysis + Swapper --------------------- # # providers = ['CUDAExecutionProvider', 'CPUExecutionProvider'] # # face_analysis_app = FaceAnalysis(name="buffalo_l", root=MODELS_DIR, providers=providers) # # face_analysis_app.prepare(ctx_id=0, det_size=(640, 640)) # # swapper = insightface.model_zoo.get_model(inswapper_path, providers=providers) # # logger.info("Face analysis models loaded successfully") # # except Exception as e: # # logger.error(f"Failed to initialize face analysis models: {e}") # # # Set defaults to prevent crash # # inswapper_path = None # # face_analysis_app = None # # swapper = None # # # --------------------- CodeFormer --------------------- # # CODEFORMER_PATH = "CodeFormer/inference_codeformer.py" # # def ensure_codeformer(): # # try: # # if not os.path.exists("CodeFormer"): # # logger.info("CodeFormer not found, cloning repository...") # # subprocess.run("git clone https://github.com/sczhou/CodeFormer.git", shell=True, check=True) # # subprocess.run("pip install -r CodeFormer/requirements.txt", shell=True, check=False) # Non-critical deps # # # Always ensure BasicSR is installed from local directory # # # This is needed for Hugging Face Spaces where BasicSR can't be installed from GitHub # # if os.path.exists("CodeFormer/basicsr/setup.py"): # # logger.info("Installing BasicSR from local directory...") # # subprocess.run("python CodeFormer/basicsr/setup.py develop", shell=True, check=True) # # logger.info("BasicSR installed successfully") # # # Install realesrgan after BasicSR is installed (realesrgan depends on BasicSR) # # # This must be done after BasicSR installation to avoid PyPI install issues # # try: # # import realesrgan # # logger.info("RealESRGAN already installed") # # except ImportError: # # logger.info("Installing RealESRGAN...") # # subprocess.run("pip install --no-cache-dir realesrgan", shell=True, check=True) # # logger.info("RealESRGAN installed successfully") # # # Download models if CodeFormer exists (fixed logic) # # if os.path.exists("CodeFormer"): # # try: # # subprocess.run("python CodeFormer/scripts/download_pretrained_models.py facelib", shell=True, check=False, timeout=300) # # except (subprocess.TimeoutExpired, subprocess.CalledProcessError): # # logger.warning("Failed to download facelib models (optional)") # # try: # # subprocess.run("python CodeFormer/scripts/download_pretrained_models.py CodeFormer", shell=True, check=False, timeout=300) # # except (subprocess.TimeoutExpired, subprocess.CalledProcessError): # # logger.warning("Failed to download CodeFormer models (optional)") # # except Exception as e: # # logger.error(f"CodeFormer setup failed: {e}") # # logger.warning("Continuing without CodeFormer features...") # # ensure_codeformer() # # # --------------------- FastAPI --------------------- # # fastapi_app = FastAPI() # # @fastapi_app.on_event("startup") # # async def startup_db(): # # global client, database # # if MONGODB_URL: # # try: # # logger.info("Initializing MongoDB for API logs...") # # client = AsyncIOMotorClient(MONGODB_URL) # # database = client.FaceSwap # # logger.info("MongoDB initialized for API logs") # # except Exception as e: # # logger.warning(f"MongoDB connection failed (optional): {e}") # # client = None # # database = None # # else: # # logger.warning("MONGODB_URL not set, skipping MongoDB initialization") # # @fastapi_app.on_event("shutdown") # # async def shutdown_db(): # # global client, admin_client, collage_maker_client # # if client is not None: # # client.close() # # logger.info("MongoDB connection closed") # # if admin_client is not None: # # admin_client.close() # # logger.info("Admin MongoDB connection closed") # # if collage_maker_client is not None: # # collage_maker_client.close() # # logger.info("Collage Maker MongoDB connection closed") # # # --------------------- Auth --------------------- # # security = HTTPBearer() # # def verify_token(credentials: HTTPAuthorizationCredentials = Security(security)): # # if credentials.credentials != API_SECRET_TOKEN: # # raise HTTPException(status_code=401, detail="Invalid or missing token") # # return credentials.credentials # # # --------------------- DB Selector --------------------- # # # def get_media_clicks_collection(appname: Optional[str] = None): # # # """ # # # Returns the correct media_clicks collection based on appname. # # # Defaults to the primary admin database when no appname is provided # # # or when the requested database is unavailable. # # # """ # # # if appname: # # # normalized = appname.strip().lower() # # # if normalized == "collage-maker": # # # if collage_media_clicks_col is not None: # # # return collage_media_clicks_col # # # logger.warning("COLLAGE_MAKER_DB_URL not configured; falling back to default media_clicks collection") # # # return media_clicks_col # # def get_app_db_collections(appname: Optional[str] = None): # # """ # # Returns (media_clicks_collection, subcategories_collection) # # based on appname. # # """ # # if appname: # # app = appname.strip().lower() # # if app == "collage-maker": # # if collage_media_clicks_col is not None and subcategories_col is not None: # # return collage_media_clicks_col, subcategories_col # # logger.warning("Collage-maker DB not configured, falling back to admin") # # elif app == "ai-enhancer": # # if ai_enhancer_media_clicks_col is not None and ai_enhancer_subcategories_col is not None: # # return ai_enhancer_media_clicks_col, ai_enhancer_subcategories_col # # logger.warning("AI-Enhancer DB not configured, falling back to admin") # # # default fallback # # return media_clicks_col, subcategories_col # # # --------------------- Logging API Hits --------------------- # # async def log_faceswap_hit(token: str, status: str = "success"): # # global database # # if database is None: # # return # # await database.api_logs.insert_one({ # # "token": token, # # "endpoint": "/faceswap", # # "status": status, # # "timestamp": datetime.utcnow() # # }) # # # --------------------- Face Swap Pipeline --------------------- # # swap_lock = threading.Lock() # # def enhance_image_with_codeformer(rgb_img, temp_dir=None): # # if temp_dir is None: # # temp_dir = os.path.join(tempfile.gettempdir(), f"enhance_{uuid.uuid4().hex[:8]}") # # os.makedirs(temp_dir, exist_ok=True) # # input_path = os.path.join(temp_dir, "input.jpg") # # cv2.imwrite(input_path, cv2.cvtColor(rgb_img, cv2.COLOR_RGB2BGR)) # # python_cmd = sys.executable if sys.executable else "python3" # # cmd = ( # # f"{python_cmd} {CODEFORMER_PATH} " # # f"-w 0.7 " # # f"--input_path {input_path} " # # f"--output_path {temp_dir} " # # f"--bg_upsampler realesrgan " # # f"--face_upsample" # # ) # # result = subprocess.run(cmd, shell=True, capture_output=True, text=True) # # if result.returncode != 0: # # raise RuntimeError(result.stderr) # # final_dir = os.path.join(temp_dir, "final_results") # # files = [f for f in os.listdir(final_dir) if f.endswith(".png")] # # if not files: # # raise RuntimeError("No enhanced output") # # final_path = os.path.join(final_dir, files[0]) # # enhanced = cv2.imread(final_path) # # return cv2.cvtColor(enhanced, cv2.COLOR_BGR2RGB) # # def multi_face_swap(src_img, tgt_img): # # src_bgr = cv2.cvtColor(src_img, cv2.COLOR_RGB2BGR) # # tgt_bgr = cv2.cvtColor(tgt_img, cv2.COLOR_RGB2BGR) # # src_faces = face_analysis_app.get(src_bgr) # # tgt_faces = face_analysis_app.get(tgt_bgr) # # if not src_faces or not tgt_faces: # # raise ValueError("No faces detected") # # def face_sort_key(face): # # x1, y1, x2, y2 = face.bbox # # area = (x2 - x1) * (y2 - y1) # # cx = (x1 + x2) / 2 # # return (-area, cx) # # # Split by gender # # src_male = [f for f in src_faces if f.gender == 1] # # src_female = [f for f in src_faces if f.gender == 0] # # tgt_male = [f for f in tgt_faces if f.gender == 1] # # tgt_female = [f for f in tgt_faces if f.gender == 0] # # # Sort inside gender groups # # src_male = sorted(src_male, key=face_sort_key) # # src_female = sorted(src_female, key=face_sort_key) # # tgt_male = sorted(tgt_male, key=face_sort_key) # # tgt_female = sorted(tgt_female, key=face_sort_key) # # # Build final swap pairs # # pairs = [] # # for s, t in zip(src_male, tgt_male): # # pairs.append((s, t)) # # for s, t in zip(src_female, tgt_female): # # pairs.append((s, t)) # # # Fallback if gender mismatch # # if not pairs: # # src_faces = sorted(src_faces, key=face_sort_key) # # tgt_faces = sorted(tgt_faces, key=face_sort_key) # # pairs = list(zip(src_faces, tgt_faces)) # # result_img = tgt_bgr.copy() # # for src_face, _ in pairs: # # # 🔁 re-detect current target faces # # if face_analysis_app is None: # # raise ValueError("Face analysis models not initialized. Please ensure models are downloaded.") # # current_faces = face_analysis_app.get(result_img) # # current_faces = sorted(current_faces, key=face_sort_key) # # # choose best matching gender # # candidates = [ # # f for f in current_faces if f.gender == src_face.gender # # ] or current_faces # # target_face = candidates[0] # # if swapper is None: # # raise ValueError("Face swap models not initialized. Please ensure models are downloaded.") # # result_img = swapper.get( # # result_img, # # target_face, # # src_face, # # paste_back=True # # ) # # return cv2.cvtColor(result_img, cv2.COLOR_BGR2RGB) # # def face_swap_and_enhance(src_img, tgt_img, temp_dir=None): # # try: # # with swap_lock: # # # Use a temp dir for intermediate files # # if temp_dir is None: # # temp_dir = os.path.join(tempfile.gettempdir(), f"faceswap_work_{uuid.uuid4().hex[:8]}") # # if os.path.exists(temp_dir): # # shutil.rmtree(temp_dir) # # os.makedirs(temp_dir, exist_ok=True) # # src_bgr = cv2.cvtColor(src_img, cv2.COLOR_RGB2BGR) # # tgt_bgr = cv2.cvtColor(tgt_img, cv2.COLOR_RGB2BGR) # # src_faces = face_analysis_app.get(src_bgr) # # tgt_faces = face_analysis_app.get(tgt_bgr) # # if face_analysis_app is None: # # return None, None, "❌ Face analysis models not initialized. Please ensure models are downloaded." # # if not src_faces or not tgt_faces: # # return None, None, "❌ Face not detected in one of the images" # # swapped_path = os.path.join(temp_dir, f"swapped_{uuid.uuid4().hex[:8]}.jpg") # # if swapper is None: # # return None, None, "❌ Face swap models not initialized. Please ensure models are downloaded." # # swapped_bgr = swapper.get(tgt_bgr, tgt_faces[0], src_faces[0]) # # if swapped_bgr is None: # # return None, None, "❌ Face swap failed" # # cv2.imwrite(swapped_path, swapped_bgr) # # python_cmd = sys.executable if sys.executable else "python3" # # cmd = f"{python_cmd} {CODEFORMER_PATH} -w 0.7 --input_path {swapped_path} --output_path {temp_dir} --bg_upsampler realesrgan --face_upsample" # # result = subprocess.run(cmd, shell=True, capture_output=True, text=True) # # if result.returncode != 0: # # return None, None, f"❌ CodeFormer failed:\n{result.stderr}" # # final_results_dir = os.path.join(temp_dir, "final_results") # # final_files = [f for f in os.listdir(final_results_dir) if f.endswith(".png")] # # if not final_files: # # return None, None, "❌ No enhanced image found" # # final_path = os.path.join(final_results_dir, final_files[0]) # # final_img_bgr = cv2.imread(final_path) # # if final_img_bgr is None: # # return None, None, "❌ Failed to read enhanced image file" # # final_img = cv2.cvtColor(final_img_bgr, cv2.COLOR_BGR2RGB) # # return final_img, final_path, "" # # except Exception as e: # # return None, None, f"❌ Error: {str(e)}" # # def compress_image( # # image_bytes: bytes, # # max_size=(1280, 1280), # max width/height # # quality=75 # JPEG quality (60–80 is ideal) # # ) -> bytes: # # """ # # Compress image by resizing and lowering quality. # # Returns compressed image bytes. # # """ # # img = Image.open(io.BytesIO(image_bytes)).convert("RGB") # # # Resize while maintaining aspect ratio # # img.thumbnail(max_size, Image.LANCZOS) # # output = io.BytesIO() # # img.save( # # output, # # format="JPEG", # # quality=quality, # # optimize=True, # # progressive=True # # ) # # return output.getvalue() # # # --------------------- DigitalOcean Spaces Helper --------------------- # # def get_spaces_client(): # # session = boto3.session.Session() # # client = session.client( # # 's3', # # region_name=DO_SPACES_REGION, # # endpoint_url=DO_SPACES_ENDPOINT, # # aws_access_key_id=DO_SPACES_KEY, # # aws_secret_access_key=DO_SPACES_SECRET, # # config=Config(signature_version='s3v4') # # ) # # return client # # def upload_to_spaces(file_bytes, key, content_type="image/png"): # # client = get_spaces_client() # # client.put_object(Bucket=DO_SPACES_BUCKET, Key=key, Body=file_bytes, ContentType=content_type, ACL='public-read') # # return f"{DO_SPACES_ENDPOINT}/{DO_SPACES_BUCKET}/{key}" # # def download_from_spaces(key): # # client = get_spaces_client() # # obj = client.get_object(Bucket=DO_SPACES_BUCKET, Key=key) # # return obj['Body'].read() # # def build_multi_faceswap_gradio(): # # with gr.Blocks() as demo: # # gr.Markdown("## 👩‍❤️‍👨 Multi Face Swap (Couple → Couple)") # # with gr.Row(): # # src = gr.Image(type="numpy", label="Source Image (2 Faces)") # # tgt = gr.Image(type="numpy", label="Target Image (2 Faces)") # # out = gr.Image(type="numpy", label="Swapped Result") # # error = gr.Textbox(label="Logs", interactive=False) # # def process(src_img, tgt_img): # # try: # # swapped = multi_face_swap(src_img, tgt_img) # # enhanced = enhance_image_with_codeformer(swapped) # # return enhanced, "" # # except Exception as e: # # return None, str(e) # # btn = gr.Button("Swap Faces") # # btn.click(process, [src, tgt], [out, error]) # # return demo # # def mandatory_enhancement(rgb_img): # # """ # # Always runs CodeFormer on the final image. # # Fail-safe: returns original if enhancement fails. # # """ # # try: # # return enhance_image_with_codeformer(rgb_img) # # except Exception as e: # # logger.error(f"CodeFormer failed, returning original: {e}") # # return rgb_img # # # --------------------- API Endpoints --------------------- # # @fastapi_app.get("/") # # async def root(): # # """Root endpoint""" # # return { # # "success": True, # # "message": "FaceSwap API", # # "data": { # # "version": "1.0.0", # # "Product Name":"Beauty Camera - GlowCam AI Studio", # # "Released By" : "LogicGo Infotech" # # } # # } # # @fastapi_app.get("/health") # # async def health(): # # return {"status": "healthy"} # # from fastapi import Form # # import requests # # @fastapi_app.get("/test-admin-db") # # async def test_admin_db(): # # try: # # doc = await admin_db.list_collection_names() # # return {"ok": True, "collections": doc} # # except Exception as e: # # return {"ok": False, "error": str(e), "url": ADMIN_MONGO_URL} # # @fastapi_app.post("/face-swap", dependencies=[Depends(verify_token)]) # # async def face_swap_api( # # source: UploadFile = File(...), # # target_category_id: str = Form(None), # # new_category_id: str = Form(None), # # user_id: Optional[str] = Form(None), # # appname: Optional[str] = Form(None), # # credentials: HTTPAuthorizationCredentials = Security(security) # # ): # # start_time = datetime.utcnow() # # try: # # # ------------------------------------------------------------------ # # # VALIDATION # # # ------------------------------------------------------------------ # # # -------------------------------------------------------------- # # # BACKWARD COMPATIBILITY FOR OLD ANDROID VERSIONS # # # -------------------------------------------------------------- # # if target_category_id == "": # # target_category_id = None # # if new_category_id == "": # # new_category_id = None # # if user_id == "": # # user_id = None # # # media_clicks_collection = get_media_clicks_collection(appname) # # media_clicks_collection, subcategories_collection = get_app_db_collections(appname) # # logger.info(f"[FaceSwap] Incoming request → target_category_id={target_category_id}, new_category_id={new_category_id}, user_id={user_id}") # # if target_category_id and new_category_id: # # raise HTTPException(400, "Provide only one of new_category_id or target_category_id.") # # if not target_category_id and not new_category_id: # # raise HTTPException(400, "Either new_category_id or target_category_id is required.") # # # ------------------------------------------------------------------ # # # READ SOURCE IMAGE # # # ------------------------------------------------------------------ # # src_bytes = await source.read() # # src_key = f"faceswap/source/{uuid.uuid4().hex}_{source.filename}" # # upload_to_spaces(src_bytes, src_key, content_type=source.content_type) # # # ------------------------------------------------------------------ # # # CASE 1 : new_category_id → MongoDB lookup # # # ------------------------------------------------------------------ # # if new_category_id: # # # doc = await subcategories_col.find_one({ # # # "asset_images._id": ObjectId(new_category_id) # # # }) # # doc = await subcategories_collection.find_one({ # # "asset_images._id": ObjectId(new_category_id) # # }) # # if not doc: # # raise HTTPException(404, "Asset image not found in database") # # # extract correct asset # # asset = next( # # (img for img in doc["asset_images"] if str(img["_id"]) == new_category_id), # # None # # ) # # if not asset: # # raise HTTPException(404, "Asset image URL not found") # # # correct URL # # target_url = asset["url"] # # # correct categoryId (ObjectId) # # #category_oid = doc["categoryId"] # <-- DO NOT CONVERT TO STRING # # subcategory_oid = doc["_id"] # # # ------------------------------------------------------------------# # # # # MEDIA_CLICKS (ONLY IF user_id PRESENT) # # # ------------------------------------------------------------------# # # if user_id and media_clicks_collection is not None: # # try: # # user_id_clean = user_id.strip() # # if not user_id_clean: # # raise ValueError("user_id cannot be empty") # # try: # # user_oid = ObjectId(user_id_clean) # # except (InvalidId, ValueError) as e: # # logger.error(f"Invalid user_id format: {user_id_clean}") # # raise ValueError(f"Invalid user_id format: {user_id_clean}") # # now = datetime.utcnow() # # # Normalize dates (UTC midnight) # # today_date = datetime(now.year, now.month, now.day) # # # ------------------------------------------------- # # # STEP 1: Ensure root document exists # # # ------------------------------------------------- # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$setOnInsert": { # # "userId": user_oid, # # "createdAt": now, # # "ai_edit_complete": 0, # # "ai_edit_daily_count": [] # # } # # }, # # upsert=True # # ) # # # ------------------------------------------------- # # # STEP 2: Handle DAILY USAGE (BINARY, NO DUPLICATES) # # # ------------------------------------------------- # # doc = await media_clicks_collection.find_one( # # {"userId": user_oid}, # # {"ai_edit_daily_count": 1} # # ) # # daily_entries = doc.get("ai_edit_daily_count", []) if doc else [] # # # Normalize today to UTC midnight # # today_date = datetime(now.year, now.month, now.day) # # # Build normalized date → count map (THIS ENFORCES UNIQUENESS) # # daily_map = {} # # for entry in daily_entries: # # d = entry["date"] # # if isinstance(d, datetime): # # d = datetime(d.year, d.month, d.day) # # daily_map[d] = entry["count"] # overwrite = no duplicates # # # Determine last recorded date # # last_date = max(daily_map.keys()) if daily_map else today_date # # # Fill ALL missing days with count = 0 # # next_day = last_date + timedelta(days=1) # # while next_day < today_date: # # daily_map.setdefault(next_day, 0) # # next_day += timedelta(days=1) # # # Mark today as used (binary) # # daily_map[today_date] = 1 # # # Rebuild list: OLDEST → NEWEST # # final_daily_entries = [ # # {"date": d, "count": daily_map[d]} # # for d in sorted(daily_map.keys()) # # ] # # # Keep only last 32 days # # final_daily_entries = final_daily_entries[-32:] # # # Atomic replace # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$set": { # # "ai_edit_daily_count": final_daily_entries, # # "updatedAt": now # # } # # } # # ) # # # ------------------------------------------------- # # # STEP 3: Try updating existing subCategory # # # ------------------------------------------------- # # update_result = await media_clicks_collection.update_one( # # { # # "userId": user_oid, # # "subCategories.subCategoryId": subcategory_oid # # }, # # { # # "$inc": { # # "subCategories.$.click_count": 1, # # "ai_edit_complete": 1 # # }, # # "$set": { # # "subCategories.$.lastClickedAt": now, # # "ai_edit_last_date": now, # # "updatedAt": now # # } # # } # # ) # # # ------------------------------------------------- # # # STEP 4: Push subCategory if missing # # # ------------------------------------------------- # # if update_result.matched_count == 0: # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$inc": { # # "ai_edit_complete": 1 # # }, # # "$set": { # # "ai_edit_last_date": now, # # "updatedAt": now # # }, # # "$push": { # # "subCategories": { # # "subCategoryId": subcategory_oid, # # "click_count": 1, # # "lastClickedAt": now # # } # # } # # } # # ) # # # ------------------------------------------------- # # # STEP 5: Sort subCategories by lastClickedAt (ascending - oldest first) # # # ------------------------------------------------- # # user_doc = await media_clicks_collection.find_one({"userId": user_oid}) # # if user_doc and "subCategories" in user_doc: # # subcategories = user_doc["subCategories"] # # # Sort by lastClickedAt in ascending order (oldest first) # # # Handle missing or None dates by using datetime.min # # subcategories_sorted = sorted( # # subcategories, # # key=lambda x: x.get("lastClickedAt") if x.get("lastClickedAt") is not None else datetime.min # # ) # # # Update with sorted array # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$set": { # # "subCategories": subcategories_sorted, # # "updatedAt": now # # } # # } # # ) # # logger.info( # # "[MEDIA_CLICK] user=%s subCategory=%s ai_edit_complete++ daily_tracked", # # user_id, # # str(subcategory_oid) # # ) # # except Exception as media_err: # # logger.error(f"MEDIA_CLICK ERROR: {media_err}") # # elif user_id and media_clicks_collection is None: # # logger.warning("Media clicks collection unavailable; skipping media click tracking") # # # # ------------------------------------------------------------------ # # # # CASE 2 : target_category_id → DigitalOcean path (unchanged logic) # # # # ------------------------------------------------------------------ # # if target_category_id: # # client = get_spaces_client() # # base_prefix = "faceswap/target/" # # resp = client.list_objects_v2( # # Bucket=DO_SPACES_BUCKET, Prefix=base_prefix, Delimiter="/" # # ) # # # Extract categories from the CommonPrefixes # # categories = [p["Prefix"].split("/")[2] for p in resp.get("CommonPrefixes", [])] # # target_url = None # # # --- FIX STARTS HERE --- # # for category in categories: # # original_prefix = f"faceswap/target/{category}/original/" # # thumb_prefix = f"faceswap/target/{category}/thumb/" # Keep for file list check (optional but safe) # # # List objects in original/ # # original_objects = client.list_objects_v2( # # Bucket=DO_SPACES_BUCKET, Prefix=original_prefix # # ).get("Contents", []) # # # List objects in thumb/ (optional: for the old code's extra check) # # thumb_objects = client.list_objects_v2( # # Bucket=DO_SPACES_BUCKET, Prefix=thumb_prefix # # ).get("Contents", []) # # # Extract only the filenames and filter for .png # # original_filenames = sorted([ # # obj["Key"].split("/")[-1] for obj in original_objects # # if obj["Key"].split("/")[-1].endswith(".png") # # ]) # # thumb_filenames = [ # # obj["Key"].split("/")[-1] for obj in thumb_objects # # ] # # # Replicate the old indexing logic based on sorted filenames # # for idx, filename in enumerate(original_filenames, start=1): # # cid = f"{category.lower()}image_{idx}" # # # Optional: Replicate the thumb file check for 100% parity # # # if filename in thumb_filenames and cid == target_category_id: # # # Simpler check just on the ID, assuming thumb files are present # # if cid == target_category_id: # # # Construct the final target URL using the full prefix and the filename # # target_url = f"{DO_SPACES_ENDPOINT}/{DO_SPACES_BUCKET}/{original_prefix}{filename}" # # break # # if target_url: # # break # # # --- FIX ENDS HERE --- # # if not target_url: # # raise HTTPException(404, "Target categoryId not found") # # # # ------------------------------------------------------------------ # # # # DOWNLOAD TARGET IMAGE # # # # ------------------------------------------------------------------ # # async with httpx.AsyncClient(timeout=30.0) as client: # # response = await client.get(target_url) # # response.raise_for_status() # # tgt_bytes = response.content # # src_bgr = cv2.imdecode(np.frombuffer(src_bytes, np.uint8), cv2.IMREAD_COLOR) # # tgt_bgr = cv2.imdecode(np.frombuffer(tgt_bytes, np.uint8), cv2.IMREAD_COLOR) # # if src_bgr is None or tgt_bgr is None: # # raise HTTPException(400, "Invalid image data") # # src_rgb = cv2.cvtColor(src_bgr, cv2.COLOR_BGR2RGB) # # tgt_rgb = cv2.cvtColor(tgt_bgr, cv2.COLOR_BGR2RGB) # # # ------------------------------------------------------------------ # # # FACE SWAP EXECUTION # # # ------------------------------------------------------------------ # # final_img, final_path, err = face_swap_and_enhance(src_rgb, tgt_rgb) # # # #--------------------Version 2.0 ----------------------------------------# # # # final_img, final_path, err = enhanced_face_swap_and_enhance(src_rgb, tgt_rgb) # # # #--------------------Version 2.0 ----------------------------------------# # # if err: # # raise HTTPException(500, err) # # with open(final_path, "rb") as f: # # result_bytes = f.read() # # result_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced.png" # # result_url = upload_to_spaces(result_bytes, result_key) # # # ------------------------------------------------- # # # COMPRESS IMAGE (2–3 MB target) # # # ------------------------------------------------- # # compressed_bytes = compress_image( # # image_bytes=result_bytes, # # max_size=(1280, 1280), # # quality=72 # # ) # # compressed_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced_compressed.jpg" # # compressed_url = upload_to_spaces( # # compressed_bytes, # # compressed_key, # # content_type="image/jpeg" # # ) # # end_time = datetime.utcnow() # # response_time_ms = (end_time - start_time).total_seconds() * 1000 # # if database is not None: # # log_entry = { # # "endpoint": "/face-swap", # # "status": "success", # # "response_time_ms": response_time_ms, # # "timestamp": end_time # # } # # if appname: # # log_entry["appname"] = appname # # await database.api_logs.insert_one(log_entry) # # return { # # "result_key": result_key, # # "result_url": result_url, # # "Compressed_Image_URL": compressed_url # # } # # except Exception as e: # # end_time = datetime.utcnow() # # response_time_ms = (end_time - start_time).total_seconds() * 1000 # # if database is not None: # # log_entry = { # # "endpoint": "/face-swap", # # "status": "fail", # # "response_time_ms": response_time_ms, # # "timestamp": end_time, # # "error": str(e) # # } # # if appname: # # log_entry["appname"] = appname # # await database.api_logs.insert_one(log_entry) # # raise HTTPException(500, f"Face swap failed: {str(e)}") # # @fastapi_app.get("/preview/{result_key:path}") # # async def preview_result(result_key: str): # # try: # # img_bytes = download_from_spaces(result_key) # # except Exception: # # raise HTTPException(status_code=404, detail="Result not found") # # return Response( # # content=img_bytes, # # media_type="image/png", # # headers={"Content-Disposition": "inline; filename=result.png"} # # ) # # @fastapi_app.post("/multi-face-swap", dependencies=[Depends(verify_token)]) # # async def multi_face_swap_api( # # source_image: UploadFile = File(...), # # target_image: UploadFile = File(...) # # ): # # start_time = datetime.utcnow() # # try: # # # ----------------------------- # # # Read images # # # ----------------------------- # # src_bytes = await source_image.read() # # tgt_bytes = await target_image.read() # # src_bgr = cv2.imdecode(np.frombuffer(src_bytes, np.uint8), cv2.IMREAD_COLOR) # # tgt_bgr = cv2.imdecode(np.frombuffer(tgt_bytes, np.uint8), cv2.IMREAD_COLOR) # # if src_bgr is None or tgt_bgr is None: # # raise HTTPException(400, "Invalid image data") # # src_rgb = cv2.cvtColor(src_bgr, cv2.COLOR_BGR2RGB) # # tgt_rgb = cv2.cvtColor(tgt_bgr, cv2.COLOR_BGR2RGB) # # # ----------------------------- # # # Multi-face swap # # # ----------------------------- # # swapped_rgb = multi_face_swap(src_rgb, tgt_rgb) # # # ----------------------------- # # # 🔥 MANDATORY ENHANCEMENT # # # ----------------------------- # # final_rgb = mandatory_enhancement(swapped_rgb) # # final_bgr = cv2.cvtColor(final_rgb, cv2.COLOR_RGB2BGR) # # # ----------------------------- # # # Save temp result # # # ----------------------------- # # temp_dir = tempfile.mkdtemp(prefix="multi_faceswap_") # # result_path = os.path.join(temp_dir, "result.png") # # cv2.imwrite(result_path, final_bgr) # # with open(result_path, "rb") as f: # # result_bytes = f.read() # # # ----------------------------- # # # Upload # # # ----------------------------- # # result_key = f"faceswap/multi/{uuid.uuid4().hex}.png" # # result_url = upload_to_spaces( # # result_bytes, # # result_key, # # content_type="image/png" # # ) # # return { # # "result_key": result_key, # # "result_url": result_url # # } # # except Exception as e: # # raise HTTPException(status_code=500, detail=str(e)) # # @fastapi_app.post("/face-swap-couple", dependencies=[Depends(verify_token)]) # # async def face_swap_api( # # image1: UploadFile = File(...), # # image2: Optional[UploadFile] = File(None), # # target_category_id: str = Form(None), # # new_category_id: str = Form(None), # # user_id: Optional[str] = Form(None), # # appname: Optional[str] = Form(None), # # credentials: HTTPAuthorizationCredentials = Security(security) # # ): # # """ # # Production-ready face swap endpoint supporting: # # - Multiple source images (image1 + optional image2) # # - Gender-based pairing # # - Merged faces from multiple sources # # - Mandatory CodeFormer enhancement # # """ # # start_time = datetime.utcnow() # # try: # # # ----------------------------- # # # Validate input # # # ----------------------------- # # if target_category_id == "": # # target_category_id = None # # if new_category_id == "": # # new_category_id = None # # if user_id == "": # # user_id = None # # media_clicks_collection = get_media_clicks_collection(appname) # # if target_category_id and new_category_id: # # raise HTTPException(400, "Provide only one of new_category_id or target_category_id.") # # if not target_category_id and not new_category_id: # # raise HTTPException(400, "Either new_category_id or target_category_id is required.") # # logger.info(f"[FaceSwap] Incoming request → target_category_id={target_category_id}, new_category_id={new_category_id}, user_id={user_id}") # # # ----------------------------- # # # Read source images # # # ----------------------------- # # src_images = [] # # img1_bytes = await image1.read() # # src1 = cv2.imdecode(np.frombuffer(img1_bytes, np.uint8), cv2.IMREAD_COLOR) # # if src1 is None: # # raise HTTPException(400, "Invalid image1 data") # # src_images.append(cv2.cvtColor(src1, cv2.COLOR_BGR2RGB)) # # if image2: # # img2_bytes = await image2.read() # # src2 = cv2.imdecode(np.frombuffer(img2_bytes, np.uint8), cv2.IMREAD_COLOR) # # if src2 is not None: # # src_images.append(cv2.cvtColor(src2, cv2.COLOR_BGR2RGB)) # # # ----------------------------- # # # Resolve target image # # # ----------------------------- # # target_url = None # # if new_category_id: # # doc = await subcategories_col.find_one({ # # "asset_images._id": ObjectId(new_category_id) # # }) # # if not doc: # # raise HTTPException(404, "Asset image not found in database") # # asset = next( # # (img for img in doc["asset_images"] if str(img["_id"]) == new_category_id), # # None # # ) # # if not asset: # # raise HTTPException(404, "Asset image URL not found") # # target_url = asset["url"] # # subcategory_oid = doc["_id"] # # if user_id and media_clicks_collection is not None: # # try: # # user_id_clean = user_id.strip() # # if not user_id_clean: # # raise ValueError("user_id cannot be empty") # # try: # # user_oid = ObjectId(user_id_clean) # # except (InvalidId, ValueError): # # logger.error(f"Invalid user_id format: {user_id_clean}") # # raise ValueError(f"Invalid user_id format: {user_id_clean}") # # now = datetime.utcnow() # # # Step 1: ensure root document exists # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$setOnInsert": { # # "userId": user_oid, # # "createdAt": now, # # "ai_edit_complete": 0, # # "ai_edit_daily_count": [] # # } # # }, # # upsert=True # # ) # # # Step 2: handle daily usage (binary, no duplicates) # # doc = await media_clicks_collection.find_one( # # {"userId": user_oid}, # # {"ai_edit_daily_count": 1} # # ) # # daily_entries = doc.get("ai_edit_daily_count", []) if doc else [] # # today_date = datetime(now.year, now.month, now.day) # # daily_map = {} # # for entry in daily_entries: # # d = entry["date"] # # if isinstance(d, datetime): # # d = datetime(d.year, d.month, d.day) # # daily_map[d] = entry["count"] # # last_date = max(daily_map.keys()) if daily_map else None # # if last_date != today_date: # # daily_map[today_date] = 1 # # final_daily_entries = [ # # {"date": d, "count": daily_map[d]} # # for d in sorted(daily_map.keys()) # # ] # # final_daily_entries = final_daily_entries[-32:] # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$set": { # # "ai_edit_daily_count": final_daily_entries, # # "updatedAt": now # # } # # } # # ) # # # Step 3: try updating existing subCategory # # update_result = await media_clicks_collection.update_one( # # { # # "userId": user_oid, # # "subCategories.subCategoryId": subcategory_oid # # }, # # { # # "$inc": { # # "subCategories.$.click_count": 1, # # "ai_edit_complete": 1 # # }, # # "$set": { # # "subCategories.$.lastClickedAt": now, # # "ai_edit_last_date": now, # # "updatedAt": now # # } # # } # # ) # # # Step 4: push subCategory if missing # # if update_result.matched_count == 0: # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$inc": { # # "ai_edit_complete": 1 # # }, # # "$set": { # # "ai_edit_last_date": now, # # "updatedAt": now # # }, # # "$push": { # # "subCategories": { # # "subCategoryId": subcategory_oid, # # "click_count": 1, # # "lastClickedAt": now # # } # # } # # } # # ) # # # Step 5: sort subCategories by lastClickedAt (ascending) # # user_doc = await media_clicks_collection.find_one({"userId": user_oid}) # # if user_doc and "subCategories" in user_doc: # # subcategories = user_doc["subCategories"] # # subcategories_sorted = sorted( # # subcategories, # # key=lambda x: x.get("lastClickedAt") if x.get("lastClickedAt") is not None else datetime.min # # ) # # await media_clicks_collection.update_one( # # {"userId": user_oid}, # # { # # "$set": { # # "subCategories": subcategories_sorted, # # "updatedAt": now # # } # # } # # ) # # logger.info( # # "[MEDIA_CLICK] user=%s subCategory=%s ai_edit_complete++ daily_tracked", # # user_id, # # str(subcategory_oid) # # ) # # except Exception as media_err: # # logger.error(f"MEDIA_CLICK ERROR: {media_err}") # # elif user_id and media_clicks_collection is None: # # logger.warning("Media clicks collection unavailable; skipping media click tracking") # # if target_category_id: # # client = get_spaces_client() # # base_prefix = "faceswap/target/" # # resp = client.list_objects_v2( # # Bucket=DO_SPACES_BUCKET, Prefix=base_prefix, Delimiter="/" # # ) # # categories = [p["Prefix"].split("/")[2] for p in resp.get("CommonPrefixes", [])] # # for category in categories: # # original_prefix = f"faceswap/target/{category}/original/" # # thumb_prefix = f"faceswap/target/{category}/thumb/" # # original_objects = client.list_objects_v2( # # Bucket=DO_SPACES_BUCKET, Prefix=original_prefix # # ).get("Contents", []) # # thumb_objects = client.list_objects_v2( # # Bucket=DO_SPACES_BUCKET, Prefix=thumb_prefix # # ).get("Contents", []) # # original_filenames = sorted([ # # obj["Key"].split("/")[-1] for obj in original_objects # # if obj["Key"].split("/")[-1].endswith(".png") # # ]) # # for idx, filename in enumerate(original_filenames, start=1): # # cid = f"{category.lower()}image_{idx}" # # if cid == target_category_id: # # target_url = f"{DO_SPACES_ENDPOINT}/{DO_SPACES_BUCKET}/{original_prefix}{filename}" # # break # # if target_url: # # break # # if not target_url: # # raise HTTPException(404, "Target categoryId not found") # # async with httpx.AsyncClient(timeout=30.0) as client: # # response = await client.get(target_url) # # response.raise_for_status() # # tgt_bytes = response.content # # tgt_bgr = cv2.imdecode(np.frombuffer(tgt_bytes, np.uint8), cv2.IMREAD_COLOR) # # if tgt_bgr is None: # # raise HTTPException(400, "Invalid target image data") # # # ----------------------------- # # # Merge all source faces # # # ----------------------------- # # all_src_faces = [] # # for img in src_images: # # faces = face_analysis_app.get(cv2.cvtColor(img, cv2.COLOR_RGB2BGR)) # # all_src_faces.extend(faces) # # if not all_src_faces: # # raise HTTPException(400, "No faces detected in source images") # # tgt_faces = face_analysis_app.get(tgt_bgr) # # if not tgt_faces: # # raise HTTPException(400, "No faces detected in target image") # # # ----------------------------- # # # Gender-based pairing # # # ----------------------------- # # def face_sort_key(face): # # x1, y1, x2, y2 = face.bbox # # area = (x2 - x1) * (y2 - y1) # # cx = (x1 + x2) / 2 # # return (-area, cx) # # # Separate by gender # # src_male = sorted([f for f in all_src_faces if f.gender == 1], key=face_sort_key) # # src_female = sorted([f for f in all_src_faces if f.gender == 0], key=face_sort_key) # # tgt_male = sorted([f for f in tgt_faces if f.gender == 1], key=face_sort_key) # # tgt_female = sorted([f for f in tgt_faces if f.gender == 0], key=face_sort_key) # # pairs = [] # # for s, t in zip(src_male, tgt_male): # # pairs.append((s, t)) # # for s, t in zip(src_female, tgt_female): # # pairs.append((s, t)) # # # fallback if gender mismatch # # if not pairs: # # src_all = sorted(all_src_faces, key=face_sort_key) # # tgt_all = sorted(tgt_faces, key=face_sort_key) # # pairs = list(zip(src_all, tgt_all)) # # # ----------------------------- # # # Perform face swap # # # ----------------------------- # # with swap_lock: # # result_img = tgt_bgr.copy() # # for src_face, _ in pairs: # # if face_analysis_app is None: # # raise HTTPException(status_code=500, detail="Face analysis models not initialized. Please ensure models are downloaded.") # # current_faces = sorted(face_analysis_app.get(result_img), key=face_sort_key) # # candidates = [f for f in current_faces if f.gender == src_face.gender] or current_faces # # target_face = candidates[0] # # if swapper is None: # # raise HTTPException(status_code=500, detail="Face swap models not initialized. Please ensure models are downloaded.") # # result_img = swapper.get(result_img, target_face, src_face, paste_back=True) # # result_rgb = cv2.cvtColor(result_img, cv2.COLOR_BGR2RGB) # # # ----------------------------- # # # Mandatory enhancement # # # ----------------------------- # # enhanced_rgb = mandatory_enhancement(result_rgb) # # enhanced_bgr = cv2.cvtColor(enhanced_rgb, cv2.COLOR_RGB2BGR) # # # ----------------------------- # # # Save, upload, compress # # # ----------------------------- # # temp_dir = tempfile.mkdtemp(prefix="faceswap_") # # final_path = os.path.join(temp_dir, "result.png") # # cv2.imwrite(final_path, enhanced_bgr) # # with open(final_path, "rb") as f: # # result_bytes = f.read() # # result_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced.png" # # result_url = upload_to_spaces(result_bytes, result_key) # # compressed_bytes = compress_image(result_bytes, max_size=(1280, 1280), quality=72) # # compressed_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced_compressed.jpg" # # compressed_url = upload_to_spaces(compressed_bytes, compressed_key, content_type="image/jpeg") # # # ----------------------------- # # # Log API usage # # # ----------------------------- # # end_time = datetime.utcnow() # # response_time_ms = (end_time - start_time).total_seconds() * 1000 # # if database is not None: # # log_entry = { # # "endpoint": "/face-swap-couple", # # "status": "success", # # "response_time_ms": response_time_ms, # # "timestamp": end_time # # } # # if appname: # # log_entry["appname"] = appname # # await database.api_logs.insert_one(log_entry) # # return { # # "result_key": result_key, # # "result_url": result_url, # # "compressed_url": compressed_url # # } # # except Exception as e: # # end_time = datetime.utcnow() # # response_time_ms = (end_time - start_time).total_seconds() * 1000 # # if database is not None: # # log_entry = { # # "endpoint": "/face-swap-couple", # # "status": "fail", # # "response_time_ms": response_time_ms, # # "timestamp": end_time, # # "error": str(e) # # } # # if appname: # # log_entry["appname"] = appname # # await database.api_logs.insert_one(log_entry) # # raise HTTPException(500, f"Face swap failed: {str(e)}") # # # --------------------- Mount Gradio --------------------- # # multi_faceswap_app = build_multi_faceswap_gradio() # # fastapi_app = mount_gradio_app( # # fastapi_app, # # multi_faceswap_app, # # path="/gradio-couple-faceswap" # # ) # # if __name__ == "__main__": # # uvicorn.run(fastapi_app, host="0.0.0.0", port=7860) # import os # os.environ["OMP_NUM_THREADS"] = "1" # import shutil # import uuid # import cv2 # import numpy as np # import threading # import subprocess # import logging # import tempfile # import sys # from datetime import datetime,timedelta # import tempfile # import insightface # from insightface.app import FaceAnalysis # from huggingface_hub import hf_hub_download # from fastapi import FastAPI, UploadFile, File, HTTPException, Response, Depends, Security, Form # from fastapi.responses import RedirectResponse # from fastapi.security import HTTPBearer, HTTPAuthorizationCredentials # from motor.motor_asyncio import AsyncIOMotorClient # from bson import ObjectId # from bson.errors import InvalidId # import httpx # import uvicorn # import gradio as gr # from gradio import mount_gradio_app # from PIL import Image # import io # # from scipy import ndimage # # DigitalOcean Spaces # import boto3 # from botocore.client import Config # from typing import Optional # # --------------------- Logging --------------------- # logging.basicConfig(level=logging.INFO) # logger = logging.getLogger(__name__) # # --------------------- Secrets & Paths --------------------- # REPO_ID = "HariLogicgo/face_swap_models" # MODELS_DIR = "./models" # os.makedirs(MODELS_DIR, exist_ok=True) # HF_TOKEN = os.getenv("HF_TOKEN") # API_SECRET_TOKEN = os.getenv("API_SECRET_TOKEN") # DO_SPACES_REGION = os.getenv("DO_SPACES_REGION", "blr1") # DO_SPACES_ENDPOINT = f"https://{DO_SPACES_REGION}.digitaloceanspaces.com" # DO_SPACES_KEY = os.getenv("DO_SPACES_KEY") # DO_SPACES_SECRET = os.getenv("DO_SPACES_SECRET") # DO_SPACES_BUCKET = os.getenv("DO_SPACES_BUCKET") # # NEW admin DB (with error handling for missing env vars) # ADMIN_MONGO_URL = os.getenv("ADMIN_MONGO_URL") # admin_client = None # admin_db = None # subcategories_col = None # media_clicks_col = None # if ADMIN_MONGO_URL: # try: # admin_client = AsyncIOMotorClient(ADMIN_MONGO_URL) # admin_db = admin_client.adminPanel # subcategories_col = admin_db.subcategories # media_clicks_col = admin_db.media_clicks # except Exception as e: # logger.warning(f"MongoDB admin connection failed (optional): {e}") # # Collage Maker DB (optional) # COLLAGE_MAKER_DB_URL = os.getenv("COLLAGE_MAKER_DB_URL") # collage_maker_client = None # collage_maker_db = None # collage_media_clicks_col = None # collage_subcategories_col = None # if COLLAGE_MAKER_DB_URL: # try: # collage_maker_client = AsyncIOMotorClient(COLLAGE_MAKER_DB_URL) # collage_maker_db = collage_maker_client.adminPanel # collage_media_clicks_col = collage_maker_db.media_clicks # collage_subcategories_col = collage_maker_db.subcategories # except Exception as e: # logger.warning(f"MongoDB collage-maker connection failed (optional): {e}") # # AI Enhancer DB (optional) # AI_ENHANCER_DB_URL = os.getenv("AI_ENHANCER_DB_URL") # ai_enhancer_client = None # ai_enhancer_db = None # ai_enhancer_media_clicks_col = None # ai_enhancer_subcategories_col = None # if AI_ENHANCER_DB_URL: # try: # ai_enhancer_client = AsyncIOMotorClient(AI_ENHANCER_DB_URL) # ai_enhancer_db = ai_enhancer_client.test # 🔴 test database # ai_enhancer_media_clicks_col = ai_enhancer_db.media_clicks # ai_enhancer_subcategories_col = ai_enhancer_db.subcategories # except Exception as e: # logger.warning(f"MongoDB ai-enhancer connection failed (optional): {e}") # def get_media_clicks_collection(appname: Optional[str] = None): # """Return the media clicks collection for the given app (default: main admin).""" # if appname and str(appname).strip().lower() == "collage-maker": # return collage_media_clicks_col # return media_clicks_col # # OLD logs DB # MONGODB_URL = os.getenv("MONGODB_URL") # client = None # database = None # # --------------------- Download Models --------------------- # def download_models(): # try: # logger.info("Downloading models...") # inswapper_path = hf_hub_download( # repo_id=REPO_ID, # filename="models/inswapper_128.onnx", # repo_type="model", # local_dir=MODELS_DIR, # token=HF_TOKEN # ) # buffalo_files = ["1k3d68.onnx", "2d106det.onnx", "genderage.onnx", "det_10g.onnx", "w600k_r50.onnx"] # for f in buffalo_files: # hf_hub_download( # repo_id=REPO_ID, # filename=f"models/buffalo_l/" + f, # repo_type="model", # local_dir=MODELS_DIR, # token=HF_TOKEN # ) # logger.info("Models downloaded successfully.") # return inswapper_path # except Exception as e: # logger.error(f"Model download failed: {e}") # raise # try: # inswapper_path = download_models() # # --------------------- Face Analysis + Swapper --------------------- # providers = ['CUDAExecutionProvider', 'CPUExecutionProvider'] # face_analysis_app = FaceAnalysis(name="buffalo_l", root=MODELS_DIR, providers=providers) # face_analysis_app.prepare(ctx_id=0, det_size=(640, 640)) # swapper = insightface.model_zoo.get_model(inswapper_path, providers=providers) # logger.info("Face analysis models loaded successfully") # except Exception as e: # logger.error(f"Failed to initialize face analysis models: {e}") # # Set defaults to prevent crash # inswapper_path = None # face_analysis_app = None # swapper = None # # --------------------- CodeFormer --------------------- # CODEFORMER_PATH = "CodeFormer/inference_codeformer.py" # def ensure_codeformer(): # try: # if not os.path.exists("CodeFormer"): # logger.info("CodeFormer not found, cloning repository...") # subprocess.run("git clone https://github.com/sczhou/CodeFormer.git", shell=True, check=True) # subprocess.run("pip install -r CodeFormer/requirements.txt", shell=True, check=False) # Non-critical deps # # Always ensure BasicSR is installed from local directory # # This is needed for Hugging Face Spaces where BasicSR can't be installed from GitHub # if os.path.exists("CodeFormer/basicsr/setup.py"): # logger.info("Installing BasicSR from local directory...") # subprocess.run("python CodeFormer/basicsr/setup.py develop", shell=True, check=True) # logger.info("BasicSR installed successfully") # # Install realesrgan after BasicSR is installed (realesrgan depends on BasicSR) # # This must be done after BasicSR installation to avoid PyPI install issues # try: # import realesrgan # logger.info("RealESRGAN already installed") # except ImportError: # logger.info("Installing RealESRGAN...") # subprocess.run("pip install --no-cache-dir realesrgan", shell=True, check=True) # logger.info("RealESRGAN installed successfully") # # Download models if CodeFormer exists (fixed logic) # if os.path.exists("CodeFormer"): # try: # subprocess.run("python CodeFormer/scripts/download_pretrained_models.py facelib", shell=True, check=False, timeout=300) # except (subprocess.TimeoutExpired, subprocess.CalledProcessError): # logger.warning("Failed to download facelib models (optional)") # try: # subprocess.run("python CodeFormer/scripts/download_pretrained_models.py CodeFormer", shell=True, check=False, timeout=300) # except (subprocess.TimeoutExpired, subprocess.CalledProcessError): # logger.warning("Failed to download CodeFormer models (optional)") # except Exception as e: # logger.error(f"CodeFormer setup failed: {e}") # logger.warning("Continuing without CodeFormer features...") # ensure_codeformer() # # --------------------- FastAPI --------------------- # fastapi_app = FastAPI() # @fastapi_app.on_event("startup") # async def startup_db(): # global client, database # if MONGODB_URL: # try: # logger.info("Initializing MongoDB for API logs...") # client = AsyncIOMotorClient(MONGODB_URL) # database = client.FaceSwap # logger.info("MongoDB initialized for API logs") # except Exception as e: # logger.warning(f"MongoDB connection failed (optional): {e}") # client = None # database = None # else: # logger.warning("MONGODB_URL not set, skipping MongoDB initialization") # @fastapi_app.on_event("shutdown") # async def shutdown_db(): # global client, admin_client, collage_maker_client # if client is not None: # client.close() # logger.info("MongoDB connection closed") # if admin_client is not None: # admin_client.close() # logger.info("Admin MongoDB connection closed") # if collage_maker_client is not None: # collage_maker_client.close() # logger.info("Collage Maker MongoDB connection closed") # # --------------------- Auth --------------------- # security = HTTPBearer() # def verify_token(credentials: HTTPAuthorizationCredentials = Security(security)): # if credentials.credentials != API_SECRET_TOKEN: # raise HTTPException(status_code=401, detail="Invalid or missing token") # return credentials.credentials # # --------------------- DB Selector --------------------- # # def get_media_clicks_collection(appname: Optional[str] = None): # # """ # # Returns the correct media_clicks collection based on appname. # # Defaults to the primary admin database when no appname is provided # # or when the requested database is unavailable. # # """ # # if appname: # # normalized = appname.strip().lower() # # if normalized == "collage-maker": # # if collage_media_clicks_col is not None: # # return collage_media_clicks_col # # logger.warning("COLLAGE_MAKER_DB_URL not configured; falling back to default media_clicks collection") # # return media_clicks_col # def get_app_db_collections(appname: Optional[str] = None): # """ # Returns (media_clicks_collection, subcategories_collection) # based on appname. # """ # if appname: # app = appname.strip().lower() # if app == "collage-maker": # if collage_media_clicks_col is not None and collage_subcategories_col is not None: # return collage_media_clicks_col, collage_subcategories_col # logger.warning("Collage-maker DB not configured, falling back to admin") # elif app == "ai-enhancer": # if ai_enhancer_media_clicks_col is not None and ai_enhancer_subcategories_col is not None: # return ai_enhancer_media_clicks_col, ai_enhancer_subcategories_col # logger.warning("AI-Enhancer DB not configured, falling back to admin") # # default fallback # return media_clicks_col, subcategories_col # # --------------------- Logging API Hits --------------------- # async def log_faceswap_hit(token: str, status: str = "success"): # global database # if database is None: # return # await database.api_logs.insert_one({ # "token": token, # "endpoint": "/faceswap", # "status": status, # "timestamp": datetime.utcnow() # }) # # --------------------- Face Swap Pipeline --------------------- # swap_lock = threading.Lock() # def enhance_image_with_codeformer(rgb_img, temp_dir=None): # if temp_dir is None: # temp_dir = os.path.join(tempfile.gettempdir(), f"enhance_{uuid.uuid4().hex[:8]}") # os.makedirs(temp_dir, exist_ok=True) # input_path = os.path.join(temp_dir, "input.jpg") # cv2.imwrite(input_path, cv2.cvtColor(rgb_img, cv2.COLOR_RGB2BGR)) # python_cmd = sys.executable if sys.executable else "python3" # cmd = ( # f"{python_cmd} {CODEFORMER_PATH} " # f"-w 0.7 " # f"--input_path {input_path} " # f"--output_path {temp_dir} " # f"--bg_upsampler realesrgan " # f"--face_upsample" # ) # result = subprocess.run(cmd, shell=True, capture_output=True, text=True) # if result.returncode != 0: # raise RuntimeError(result.stderr) # final_dir = os.path.join(temp_dir, "final_results") # files = [f for f in os.listdir(final_dir) if f.endswith(".png")] # if not files: # raise RuntimeError("No enhanced output") # final_path = os.path.join(final_dir, files[0]) # enhanced = cv2.imread(final_path) # return cv2.cvtColor(enhanced, cv2.COLOR_BGR2RGB) # def multi_face_swap(src_img, tgt_img): # src_bgr = cv2.cvtColor(src_img, cv2.COLOR_RGB2BGR) # tgt_bgr = cv2.cvtColor(tgt_img, cv2.COLOR_RGB2BGR) # src_faces = face_analysis_app.get(src_bgr) # tgt_faces = face_analysis_app.get(tgt_bgr) # if not src_faces or not tgt_faces: # raise ValueError("No faces detected") # def face_sort_key(face): # x1, y1, x2, y2 = face.bbox # area = (x2 - x1) * (y2 - y1) # cx = (x1 + x2) / 2 # return (-area, cx) # # Split by gender # src_male = [f for f in src_faces if f.gender == 1] # src_female = [f for f in src_faces if f.gender == 0] # tgt_male = [f for f in tgt_faces if f.gender == 1] # tgt_female = [f for f in tgt_faces if f.gender == 0] # # Sort inside gender groups # src_male = sorted(src_male, key=face_sort_key) # src_female = sorted(src_female, key=face_sort_key) # tgt_male = sorted(tgt_male, key=face_sort_key) # tgt_female = sorted(tgt_female, key=face_sort_key) # # Build final swap pairs # pairs = [] # for s, t in zip(src_male, tgt_male): # pairs.append((s, t)) # for s, t in zip(src_female, tgt_female): # pairs.append((s, t)) # # Fallback if gender mismatch # if not pairs: # src_faces = sorted(src_faces, key=face_sort_key) # tgt_faces = sorted(tgt_faces, key=face_sort_key) # pairs = list(zip(src_faces, tgt_faces)) # result_img = tgt_bgr.copy() # for src_face, _ in pairs: # # 🔁 re-detect current target faces # if face_analysis_app is None: # raise ValueError("Face analysis models not initialized. Please ensure models are downloaded.") # current_faces = face_analysis_app.get(result_img) # current_faces = sorted(current_faces, key=face_sort_key) # # choose best matching gender # candidates = [ # f for f in current_faces if f.gender == src_face.gender # ] or current_faces # target_face = candidates[0] # if swapper is None: # raise ValueError("Face swap models not initialized. Please ensure models are downloaded.") # result_img = swapper.get( # result_img, # target_face, # src_face, # paste_back=True # ) # return cv2.cvtColor(result_img, cv2.COLOR_BGR2RGB) # def face_swap_and_enhance(src_img, tgt_img, temp_dir=None): # try: # with swap_lock: # # Use a temp dir for intermediate files # if temp_dir is None: # temp_dir = os.path.join(tempfile.gettempdir(), f"faceswap_work_{uuid.uuid4().hex[:8]}") # if os.path.exists(temp_dir): # shutil.rmtree(temp_dir) # os.makedirs(temp_dir, exist_ok=True) # src_bgr = cv2.cvtColor(src_img, cv2.COLOR_RGB2BGR) # tgt_bgr = cv2.cvtColor(tgt_img, cv2.COLOR_RGB2BGR) # src_faces = face_analysis_app.get(src_bgr) # tgt_faces = face_analysis_app.get(tgt_bgr) # if face_analysis_app is None: # return None, None, "❌ Face analysis models not initialized. Please ensure models are downloaded." # if not src_faces or not tgt_faces: # return None, None, "❌ Face not detected in one of the images" # swapped_path = os.path.join(temp_dir, f"swapped_{uuid.uuid4().hex[:8]}.jpg") # if swapper is None: # return None, None, "❌ Face swap models not initialized. Please ensure models are downloaded." # swapped_bgr = swapper.get(tgt_bgr, tgt_faces[0], src_faces[0]) # if swapped_bgr is None: # return None, None, "❌ Face swap failed" # cv2.imwrite(swapped_path, swapped_bgr) # python_cmd = sys.executable if sys.executable else "python3" # cmd = f"{python_cmd} {CODEFORMER_PATH} -w 0.7 --input_path {swapped_path} --output_path {temp_dir} --bg_upsampler realesrgan --face_upsample" # result = subprocess.run(cmd, shell=True, capture_output=True, text=True) # if result.returncode != 0: # return None, None, f"❌ CodeFormer failed:\n{result.stderr}" # final_results_dir = os.path.join(temp_dir, "final_results") # final_files = [f for f in os.listdir(final_results_dir) if f.endswith(".png")] # if not final_files: # return None, None, "❌ No enhanced image found" # final_path = os.path.join(final_results_dir, final_files[0]) # final_img_bgr = cv2.imread(final_path) # if final_img_bgr is None: # return None, None, "❌ Failed to read enhanced image file" # final_img = cv2.cvtColor(final_img_bgr, cv2.COLOR_BGR2RGB) # return final_img, final_path, "" # except Exception as e: # return None, None, f"❌ Error: {str(e)}" # def compress_image( # image_bytes: bytes, # max_size=(1280, 1280), # max width/height # quality=75 # JPEG quality (60–80 is ideal) # ) -> bytes: # """ # Compress image by resizing and lowering quality. # Returns compressed image bytes. # """ # img = Image.open(io.BytesIO(image_bytes)).convert("RGB") # # Resize while maintaining aspect ratio # img.thumbnail(max_size, Image.LANCZOS) # output = io.BytesIO() # img.save( # output, # format="JPEG", # quality=quality, # optimize=True, # progressive=True # ) # return output.getvalue() # # --------------------- DigitalOcean Spaces Helper --------------------- # def get_spaces_client(): # session = boto3.session.Session() # client = session.client( # 's3', # region_name=DO_SPACES_REGION, # endpoint_url=DO_SPACES_ENDPOINT, # aws_access_key_id=DO_SPACES_KEY, # aws_secret_access_key=DO_SPACES_SECRET, # config=Config(signature_version='s3v4') # ) # return client # def upload_to_spaces(file_bytes, key, content_type="image/png"): # client = get_spaces_client() # client.put_object(Bucket=DO_SPACES_BUCKET, Key=key, Body=file_bytes, ContentType=content_type, ACL='public-read') # return f"{DO_SPACES_ENDPOINT}/{DO_SPACES_BUCKET}/{key}" # def download_from_spaces(key): # client = get_spaces_client() # obj = client.get_object(Bucket=DO_SPACES_BUCKET, Key=key) # return obj['Body'].read() # def build_multi_faceswap_gradio(): # with gr.Blocks() as demo: # gr.Markdown("## 👩‍❤️‍👨 Multi Face Swap (Couple → Couple)") # with gr.Row(): # src = gr.Image(type="numpy", label="Source Image (2 Faces)") # tgt = gr.Image(type="numpy", label="Target Image (2 Faces)") # out = gr.Image(type="numpy", label="Swapped Result") # error = gr.Textbox(label="Logs", interactive=False) # def process(src_img, tgt_img): # try: # swapped = multi_face_swap(src_img, tgt_img) # enhanced = enhance_image_with_codeformer(swapped) # return enhanced, "" # except Exception as e: # return None, str(e) # btn = gr.Button("Swap Faces") # btn.click(process, [src, tgt], [out, error]) # return demo # def mandatory_enhancement(rgb_img): # """ # Always runs CodeFormer on the final image. # Fail-safe: returns original if enhancement fails. # """ # try: # return enhance_image_with_codeformer(rgb_img) # except Exception as e: # logger.error(f"CodeFormer failed, returning original: {e}") # return rgb_img # # --------------------- API Endpoints --------------------- # @fastapi_app.get("/") # async def root(): # """Root endpoint""" # return { # "success": True, # "message": "FaceSwap API", # "data": { # "version": "1.0.0", # "Product Name":"Collage Maker , AI Enhancer App - GlowCam AI Studio", # "Released By" : "LogicGo Infotech" # } # } # @fastapi_app.get("/health") # async def health(): # return {"status": "healthy"} # from fastapi import Form # import requests # @fastapi_app.get("/test-admin-db") # async def test_admin_db(): # try: # doc = await admin_db.list_collection_names() # return {"ok": True, "collections": doc} # except Exception as e: # return {"ok": False, "error": str(e), "url": ADMIN_MONGO_URL} # @fastapi_app.post("/face-swap", dependencies=[Depends(verify_token)]) # async def face_swap_api( # source: UploadFile = File(...), # target_category_id: str = Form(None), # new_category_id: str = Form(None), # user_id: Optional[str] = Form(None), # appname: Optional[str] = Form(None), # credentials: HTTPAuthorizationCredentials = Security(security) # ): # start_time = datetime.utcnow() # try: # # ------------------------------------------------------------------ # # VALIDATION # # ------------------------------------------------------------------ # # -------------------------------------------------------------- # # BACKWARD COMPATIBILITY FOR OLD ANDROID VERSIONS # # -------------------------------------------------------------- # if target_category_id == "": # target_category_id = None # if new_category_id == "": # new_category_id = None # if user_id == "": # user_id = None # # media_clicks_collection = get_media_clicks_collection(appname) # media_clicks_collection, subcategories_collection = get_app_db_collections(appname) # logger.info(f"[FaceSwap] Incoming request → target_category_id={target_category_id}, new_category_id={new_category_id}, user_id={user_id}") # if target_category_id and new_category_id: # raise HTTPException(400, "Provide only one of new_category_id or target_category_id.") # if not target_category_id and not new_category_id: # raise HTTPException(400, "Either new_category_id or target_category_id is required.") # # ------------------------------------------------------------------ # # READ SOURCE IMAGE # # ------------------------------------------------------------------ # src_bytes = await source.read() # src_key = f"faceswap/source/{uuid.uuid4().hex}_{source.filename}" # upload_to_spaces(src_bytes, src_key, content_type=source.content_type) # # ------------------------------------------------------------------ # # CASE 1 : new_category_id → MongoDB lookup # # ------------------------------------------------------------------ # if new_category_id: # # doc = await subcategories_col.find_one({ # # "asset_images._id": ObjectId(new_category_id) # # }) # doc = await subcategories_collection.find_one({ # "asset_images._id": ObjectId(new_category_id) # }) # if not doc: # raise HTTPException(404, "Asset image not found in database") # # extract correct asset # asset = next( # (img for img in doc["asset_images"] if str(img["_id"]) == new_category_id), # None # ) # if not asset: # raise HTTPException(404, "Asset image URL not found") # # correct URL # target_url = asset["url"] # # correct categoryId (ObjectId) # #category_oid = doc["categoryId"] # <-- DO NOT CONVERT TO STRING # subcategory_oid = doc["_id"] # # ------------------------------------------------------------------# # # # MEDIA_CLICKS (ONLY IF user_id PRESENT) # # ------------------------------------------------------------------# # if user_id and media_clicks_collection is not None: # try: # user_id_clean = user_id.strip() # if not user_id_clean: # raise ValueError("user_id cannot be empty") # try: # user_oid = ObjectId(user_id_clean) # except (InvalidId, ValueError) as e: # logger.error(f"Invalid user_id format: {user_id_clean}") # raise ValueError(f"Invalid user_id format: {user_id_clean}") # now = datetime.utcnow() # # Normalize dates (UTC midnight) # today_date = datetime(now.year, now.month, now.day) # # ------------------------------------------------- # # STEP 1: Ensure root document exists # # ------------------------------------------------- # await media_clicks_collection.update_one( # {"userId": user_oid}, # { # "$setOnInsert": { # "userId": user_oid, # "createdAt": now, # "ai_edit_complete": 0, # "ai_edit_daily_count": [] # } # }, # upsert=True # ) # # ------------------------------------------------- # # STEP 2: Handle DAILY USAGE (BINARY, NO DUPLICATES) # # ------------------------------------------------- # doc = await media_clicks_collection.find_one( # {"userId": user_oid}, # {"ai_edit_daily_count": 1} # ) # daily_entries = doc.get("ai_edit_daily_count", []) if doc else [] # # Normalize today to UTC midnight # today_date = datetime(now.year, now.month, now.day) # # Build normalized date → count map (THIS ENFORCES UNIQUENESS) # daily_map = {} # for entry in daily_entries: # d = entry["date"] # if isinstance(d, datetime): # d = datetime(d.year, d.month, d.day) # daily_map[d] = entry["count"] # overwrite = no duplicates # # Determine last recorded date # last_date = max(daily_map.keys()) if daily_map else today_date # # Fill ALL missing days with count = 0 # next_day = last_date + timedelta(days=1) # while next_day < today_date: # daily_map.setdefault(next_day, 0) # next_day += timedelta(days=1) # # Mark today as used (binary) # daily_map[today_date] = 1 # # Rebuild list: OLDEST → NEWEST # final_daily_entries = [ # {"date": d, "count": daily_map[d]} # for d in sorted(daily_map.keys()) # ] # # Keep only last 32 days # final_daily_entries = final_daily_entries[-32:] # # Atomic replace # await media_clicks_collection.update_one( # {"userId": user_oid}, # { # "$set": { # "ai_edit_daily_count": final_daily_entries, # "updatedAt": now # } # } # ) # # ------------------------------------------------- # # STEP 3: Try updating existing subCategory # # ------------------------------------------------- # update_result = await media_clicks_collection.update_one( # { # "userId": user_oid, # "subCategories.subCategoryId": subcategory_oid # }, # { # "$inc": { # "subCategories.$.click_count": 1, # "ai_edit_complete": 1 # }, # "$set": { # "subCategories.$.lastClickedAt": now, # "ai_edit_last_date": now, # "updatedAt": now # } # } # ) # # ------------------------------------------------- # # STEP 4: Push subCategory if missing # # ------------------------------------------------- # if update_result.matched_count == 0: # await media_clicks_collection.update_one( # {"userId": user_oid}, # { # "$inc": { # "ai_edit_complete": 1 # }, # "$set": { # "ai_edit_last_date": now, # "updatedAt": now # }, # "$push": { # "subCategories": { # "subCategoryId": subcategory_oid, # "click_count": 1, # "lastClickedAt": now # } # } # } # ) # # ------------------------------------------------- # # STEP 5: Sort subCategories by lastClickedAt (ascending - oldest first) # # ------------------------------------------------- # user_doc = await media_clicks_collection.find_one({"userId": user_oid}) # if user_doc and "subCategories" in user_doc: # subcategories = user_doc["subCategories"] # # Sort by lastClickedAt in ascending order (oldest first) # # Handle missing or None dates by using datetime.min # subcategories_sorted = sorted( # subcategories, # key=lambda x: x.get("lastClickedAt") if x.get("lastClickedAt") is not None else datetime.min # ) # # Update with sorted array # await media_clicks_collection.update_one( # {"userId": user_oid}, # { # "$set": { # "subCategories": subcategories_sorted, # "updatedAt": now # } # } # ) # logger.info( # "[MEDIA_CLICK] user=%s subCategory=%s ai_edit_complete++ daily_tracked", # user_id, # str(subcategory_oid) # ) # except Exception as media_err: # logger.error(f"MEDIA_CLICK ERROR: {media_err}") # elif user_id and media_clicks_collection is None: # logger.warning("Media clicks collection unavailable; skipping media click tracking") # # # ------------------------------------------------------------------ # # # CASE 2 : target_category_id → DigitalOcean path (unchanged logic) # # # ------------------------------------------------------------------ # if target_category_id: # client = get_spaces_client() # base_prefix = "faceswap/target/" # resp = client.list_objects_v2( # Bucket=DO_SPACES_BUCKET, Prefix=base_prefix, Delimiter="/" # ) # # Extract categories from the CommonPrefixes # categories = [p["Prefix"].split("/")[2] for p in resp.get("CommonPrefixes", [])] # target_url = None # # --- FIX STARTS HERE --- # for category in categories: # original_prefix = f"faceswap/target/{category}/original/" # thumb_prefix = f"faceswap/target/{category}/thumb/" # Keep for file list check (optional but safe) # # List objects in original/ # original_objects = client.list_objects_v2( # Bucket=DO_SPACES_BUCKET, Prefix=original_prefix # ).get("Contents", []) # # List objects in thumb/ (optional: for the old code's extra check) # thumb_objects = client.list_objects_v2( # Bucket=DO_SPACES_BUCKET, Prefix=thumb_prefix # ).get("Contents", []) # # Extract only the filenames and filter for .png # original_filenames = sorted([ # obj["Key"].split("/")[-1] for obj in original_objects # if obj["Key"].split("/")[-1].endswith(".png") # ]) # thumb_filenames = [ # obj["Key"].split("/")[-1] for obj in thumb_objects # ] # # Replicate the old indexing logic based on sorted filenames # for idx, filename in enumerate(original_filenames, start=1): # cid = f"{category.lower()}image_{idx}" # # Optional: Replicate the thumb file check for 100% parity # # if filename in thumb_filenames and cid == target_category_id: # # Simpler check just on the ID, assuming thumb files are present # if cid == target_category_id: # # Construct the final target URL using the full prefix and the filename # target_url = f"{DO_SPACES_ENDPOINT}/{DO_SPACES_BUCKET}/{original_prefix}{filename}" # break # if target_url: # break # # --- FIX ENDS HERE --- # if not target_url: # raise HTTPException(404, "Target categoryId not found") # # # ------------------------------------------------------------------ # # # DOWNLOAD TARGET IMAGE # # # ------------------------------------------------------------------ # async with httpx.AsyncClient(timeout=30.0) as client: # response = await client.get(target_url) # response.raise_for_status() # tgt_bytes = response.content # src_bgr = cv2.imdecode(np.frombuffer(src_bytes, np.uint8), cv2.IMREAD_COLOR) # tgt_bgr = cv2.imdecode(np.frombuffer(tgt_bytes, np.uint8), cv2.IMREAD_COLOR) # if src_bgr is None or tgt_bgr is None: # raise HTTPException(400, "Invalid image data") # src_rgb = cv2.cvtColor(src_bgr, cv2.COLOR_BGR2RGB) # tgt_rgb = cv2.cvtColor(tgt_bgr, cv2.COLOR_BGR2RGB) # # ------------------------------------------------------------------ # # FACE SWAP EXECUTION # # ------------------------------------------------------------------ # final_img, final_path, err = face_swap_and_enhance(src_rgb, tgt_rgb) # # #--------------------Version 2.0 ----------------------------------------# # # final_img, final_path, err = enhanced_face_swap_and_enhance(src_rgb, tgt_rgb) # # #--------------------Version 2.0 ----------------------------------------# # if err: # raise HTTPException(500, err) # with open(final_path, "rb") as f: # result_bytes = f.read() # result_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced.png" # result_url = upload_to_spaces(result_bytes, result_key) # # ------------------------------------------------- # # COMPRESS IMAGE (2–3 MB target) # # ------------------------------------------------- # compressed_bytes = compress_image( # image_bytes=result_bytes, # max_size=(1280, 1280), # quality=72 # ) # compressed_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced_compressed.jpg" # compressed_url = upload_to_spaces( # compressed_bytes, # compressed_key, # content_type="image/jpeg" # ) # end_time = datetime.utcnow() # response_time_ms = (end_time - start_time).total_seconds() * 1000 # if database is not None: # log_entry = { # "endpoint": "/face-swap", # "status": "success", # "response_time_ms": response_time_ms, # "timestamp": end_time # } # if appname: # log_entry["appname"] = appname # await database.api_logs.insert_one(log_entry) # return { # "result_key": result_key, # "result_url": result_url, # "Compressed_Image_URL": compressed_url # } # except Exception as e: # end_time = datetime.utcnow() # response_time_ms = (end_time - start_time).total_seconds() * 1000 # if database is not None: # log_entry = { # "endpoint": "/face-swap", # "status": "fail", # "response_time_ms": response_time_ms, # "timestamp": end_time, # "error": str(e) # } # if appname: # log_entry["appname"] = appname # await database.api_logs.insert_one(log_entry) # raise HTTPException(500, f"Face swap failed: {str(e)}") # @fastapi_app.get("/preview/{result_key:path}") # async def preview_result(result_key: str): # try: # img_bytes = download_from_spaces(result_key) # except Exception: # raise HTTPException(status_code=404, detail="Result not found") # return Response( # content=img_bytes, # media_type="image/png", # headers={"Content-Disposition": "inline; filename=result.png"} # ) # @fastapi_app.post("/multi-face-swap", dependencies=[Depends(verify_token)]) # async def multi_face_swap_api( # source_image: UploadFile = File(...), # target_image: UploadFile = File(...) # ): # start_time = datetime.utcnow() # try: # # ----------------------------- # # Read images # # ----------------------------- # src_bytes = await source_image.read() # tgt_bytes = await target_image.read() # src_bgr = cv2.imdecode(np.frombuffer(src_bytes, np.uint8), cv2.IMREAD_COLOR) # tgt_bgr = cv2.imdecode(np.frombuffer(tgt_bytes, np.uint8), cv2.IMREAD_COLOR) # if src_bgr is None or tgt_bgr is None: # raise HTTPException(400, "Invalid image data") # src_rgb = cv2.cvtColor(src_bgr, cv2.COLOR_BGR2RGB) # tgt_rgb = cv2.cvtColor(tgt_bgr, cv2.COLOR_BGR2RGB) # # ----------------------------- # # Multi-face swap # # ----------------------------- # swapped_rgb = multi_face_swap(src_rgb, tgt_rgb) # # ----------------------------- # # 🔥 MANDATORY ENHANCEMENT # # ----------------------------- # final_rgb = mandatory_enhancement(swapped_rgb) # final_bgr = cv2.cvtColor(final_rgb, cv2.COLOR_RGB2BGR) # # ----------------------------- # # Save temp result # # ----------------------------- # temp_dir = tempfile.mkdtemp(prefix="multi_faceswap_") # result_path = os.path.join(temp_dir, "result.png") # cv2.imwrite(result_path, final_bgr) # with open(result_path, "rb") as f: # result_bytes = f.read() # # ----------------------------- # # Upload # # ----------------------------- # result_key = f"faceswap/multi/{uuid.uuid4().hex}.png" # result_url = upload_to_spaces( # result_bytes, # result_key, # content_type="image/png" # ) # return { # "result_key": result_key, # "result_url": result_url # } # except Exception as e: # raise HTTPException(status_code=500, detail=str(e)) # @fastapi_app.post("/face-swap-couple", dependencies=[Depends(verify_token)]) # async def face_swap_api( # image1: UploadFile = File(...), # image2: Optional[UploadFile] = File(None), # target_category_id: str = Form(None), # new_category_id: str = Form(None), # user_id: Optional[str] = Form(None), # appname: Optional[str] = Form(None), # credentials: HTTPAuthorizationCredentials = Security(security) # ): # """ # Production-ready face swap endpoint supporting: # - Multiple source images (image1 + optional image2) # - Gender-based pairing # - Merged faces from multiple sources # - Mandatory CodeFormer enhancement # """ # start_time = datetime.utcnow() # try: # # ----------------------------- # # Validate input # # ----------------------------- # if target_category_id == "": # target_category_id = None # if new_category_id == "": # new_category_id = None # if user_id == "": # user_id = None # media_clicks_collection = get_media_clicks_collection(appname) # if target_category_id and new_category_id: # raise HTTPException(400, "Provide only one of new_category_id or target_category_id.") # if not target_category_id and not new_category_id: # raise HTTPException(400, "Either new_category_id or target_category_id is required.") # logger.info(f"[FaceSwap] Incoming request → target_category_id={target_category_id}, new_category_id={new_category_id}, user_id={user_id}") # # ----------------------------- # # Read source images # # ----------------------------- # src_images = [] # img1_bytes = await image1.read() # src1 = cv2.imdecode(np.frombuffer(img1_bytes, np.uint8), cv2.IMREAD_COLOR) # if src1 is None: # raise HTTPException(400, "Invalid image1 data") # src_images.append(cv2.cvtColor(src1, cv2.COLOR_BGR2RGB)) # if image2: # img2_bytes = await image2.read() # src2 = cv2.imdecode(np.frombuffer(img2_bytes, np.uint8), cv2.IMREAD_COLOR) # if src2 is not None: # src_images.append(cv2.cvtColor(src2, cv2.COLOR_BGR2RGB)) # # ----------------------------- # # Resolve target image # # ----------------------------- # target_url = None # if new_category_id: # doc = await subcategories_col.find_one({ # "asset_images._id": ObjectId(new_category_id) # }) # if not doc: # raise HTTPException(404, "Asset image not found in database") # asset = next( # (img for img in doc["asset_images"] if str(img["_id"]) == new_category_id), # None # ) # if not asset: # raise HTTPException(404, "Asset image URL not found") # target_url = asset["url"] # subcategory_oid = doc["_id"] # if user_id and media_clicks_collection is not None: # try: # user_id_clean = user_id.strip() # if not user_id_clean: # raise ValueError("user_id cannot be empty") # try: # user_oid = ObjectId(user_id_clean) # except (InvalidId, ValueError): # logger.error(f"Invalid user_id format: {user_id_clean}") # raise ValueError(f"Invalid user_id format: {user_id_clean}") # now = datetime.utcnow() # # Step 1: ensure root document exists # await media_clicks_collection.update_one( # {"userId": user_oid}, # { # "$setOnInsert": { # "userId": user_oid, # "createdAt": now, # "ai_edit_complete": 0, # "ai_edit_daily_count": [] # } # }, # upsert=True # ) # # Step 2: handle daily usage (binary, no duplicates) # doc = await media_clicks_collection.find_one( # {"userId": user_oid}, # {"ai_edit_daily_count": 1} # ) # daily_entries = doc.get("ai_edit_daily_count", []) if doc else [] # today_date = datetime(now.year, now.month, now.day) # daily_map = {} # for entry in daily_entries: # d = entry["date"] # if isinstance(d, datetime): # d = datetime(d.year, d.month, d.day) # daily_map[d] = entry["count"] # last_date = max(daily_map.keys()) if daily_map else None # if last_date != today_date: # daily_map[today_date] = 1 # final_daily_entries = [ # {"date": d, "count": daily_map[d]} # for d in sorted(daily_map.keys()) # ] # final_daily_entries = final_daily_entries[-32:] # await media_clicks_collection.update_one( # {"userId": user_oid}, # { # "$set": { # "ai_edit_daily_count": final_daily_entries, # "updatedAt": now # } # } # ) # # Step 3: try updating existing subCategory # update_result = await media_clicks_collection.update_one( # { # "userId": user_oid, # "subCategories.subCategoryId": subcategory_oid # }, # { # "$inc": { # "subCategories.$.click_count": 1, # "ai_edit_complete": 1 # }, # "$set": { # "subCategories.$.lastClickedAt": now, # "ai_edit_last_date": now, # "updatedAt": now # } # } # ) # # Step 4: push subCategory if missing # if update_result.matched_count == 0: # await media_clicks_collection.update_one( # {"userId": user_oid}, # { # "$inc": { # "ai_edit_complete": 1 # }, # "$set": { # "ai_edit_last_date": now, # "updatedAt": now # }, # "$push": { # "subCategories": { # "subCategoryId": subcategory_oid, # "click_count": 1, # "lastClickedAt": now # } # } # } # ) # # Step 5: sort subCategories by lastClickedAt (ascending) # user_doc = await media_clicks_collection.find_one({"userId": user_oid}) # if user_doc and "subCategories" in user_doc: # subcategories = user_doc["subCategories"] # subcategories_sorted = sorted( # subcategories, # key=lambda x: x.get("lastClickedAt") if x.get("lastClickedAt") is not None else datetime.min # ) # await media_clicks_collection.update_one( # {"userId": user_oid}, # { # "$set": { # "subCategories": subcategories_sorted, # "updatedAt": now # } # } # ) # logger.info( # "[MEDIA_CLICK] user=%s subCategory=%s ai_edit_complete++ daily_tracked", # user_id, # str(subcategory_oid) # ) # except Exception as media_err: # logger.error(f"MEDIA_CLICK ERROR: {media_err}") # elif user_id and media_clicks_collection is None: # logger.warning("Media clicks collection unavailable; skipping media click tracking") # if target_category_id: # client = get_spaces_client() # base_prefix = "faceswap/target/" # resp = client.list_objects_v2( # Bucket=DO_SPACES_BUCKET, Prefix=base_prefix, Delimiter="/" # ) # categories = [p["Prefix"].split("/")[2] for p in resp.get("CommonPrefixes", [])] # for category in categories: # original_prefix = f"faceswap/target/{category}/original/" # thumb_prefix = f"faceswap/target/{category}/thumb/" # original_objects = client.list_objects_v2( # Bucket=DO_SPACES_BUCKET, Prefix=original_prefix # ).get("Contents", []) # thumb_objects = client.list_objects_v2( # Bucket=DO_SPACES_BUCKET, Prefix=thumb_prefix # ).get("Contents", []) # original_filenames = sorted([ # obj["Key"].split("/")[-1] for obj in original_objects # if obj["Key"].split("/")[-1].endswith(".png") # ]) # for idx, filename in enumerate(original_filenames, start=1): # cid = f"{category.lower()}image_{idx}" # if cid == target_category_id: # target_url = f"{DO_SPACES_ENDPOINT}/{DO_SPACES_BUCKET}/{original_prefix}{filename}" # break # if target_url: # break # if not target_url: # raise HTTPException(404, "Target categoryId not found") # async with httpx.AsyncClient(timeout=30.0) as client: # response = await client.get(target_url) # response.raise_for_status() # tgt_bytes = response.content # tgt_bgr = cv2.imdecode(np.frombuffer(tgt_bytes, np.uint8), cv2.IMREAD_COLOR) # if tgt_bgr is None: # raise HTTPException(400, "Invalid target image data") # # ----------------------------- # # Merge all source faces # # ----------------------------- # all_src_faces = [] # for img in src_images: # faces = face_analysis_app.get(cv2.cvtColor(img, cv2.COLOR_RGB2BGR)) # all_src_faces.extend(faces) # if not all_src_faces: # raise HTTPException(400, "No faces detected in source images") # tgt_faces = face_analysis_app.get(tgt_bgr) # if not tgt_faces: # raise HTTPException(400, "No faces detected in target image") # # ----------------------------- # # Gender-based pairing # # ----------------------------- # def face_sort_key(face): # x1, y1, x2, y2 = face.bbox # area = (x2 - x1) * (y2 - y1) # cx = (x1 + x2) / 2 # return (-area, cx) # # Separate by gender # src_male = sorted([f for f in all_src_faces if f.gender == 1], key=face_sort_key) # src_female = sorted([f for f in all_src_faces if f.gender == 0], key=face_sort_key) # tgt_male = sorted([f for f in tgt_faces if f.gender == 1], key=face_sort_key) # tgt_female = sorted([f for f in tgt_faces if f.gender == 0], key=face_sort_key) # pairs = [] # for s, t in zip(src_male, tgt_male): # pairs.append((s, t)) # for s, t in zip(src_female, tgt_female): # pairs.append((s, t)) # # fallback if gender mismatch # if not pairs: # src_all = sorted(all_src_faces, key=face_sort_key) # tgt_all = sorted(tgt_faces, key=face_sort_key) # pairs = list(zip(src_all, tgt_all)) # # ----------------------------- # # Perform face swap # # ----------------------------- # with swap_lock: # result_img = tgt_bgr.copy() # for src_face, _ in pairs: # if face_analysis_app is None: # raise HTTPException(status_code=500, detail="Face analysis models not initialized. Please ensure models are downloaded.") # current_faces = sorted(face_analysis_app.get(result_img), key=face_sort_key) # candidates = [f for f in current_faces if f.gender == src_face.gender] or current_faces # target_face = candidates[0] # if swapper is None: # raise HTTPException(status_code=500, detail="Face swap models not initialized. Please ensure models are downloaded.") # result_img = swapper.get(result_img, target_face, src_face, paste_back=True) # result_rgb = cv2.cvtColor(result_img, cv2.COLOR_BGR2RGB) # # ----------------------------- # # Mandatory enhancement # # ----------------------------- # enhanced_rgb = mandatory_enhancement(result_rgb) # enhanced_bgr = cv2.cvtColor(enhanced_rgb, cv2.COLOR_RGB2BGR) # # ----------------------------- # # Save, upload, compress # # ----------------------------- # temp_dir = tempfile.mkdtemp(prefix="faceswap_") # final_path = os.path.join(temp_dir, "result.png") # cv2.imwrite(final_path, enhanced_bgr) # with open(final_path, "rb") as f: # result_bytes = f.read() # result_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced.png" # result_url = upload_to_spaces(result_bytes, result_key) # compressed_bytes = compress_image(result_bytes, max_size=(1280, 1280), quality=72) # compressed_key = f"faceswap/result/{uuid.uuid4().hex}_enhanced_compressed.jpg" # compressed_url = upload_to_spaces(compressed_bytes, compressed_key, content_type="image/jpeg") # # ----------------------------- # # Log API usage # # ----------------------------- # end_time = datetime.utcnow() # response_time_ms = (end_time - start_time).total_seconds() * 1000 # if database is not None: # log_entry = { # "endpoint": "/face-swap-couple", # "status": "success", # "response_time_ms": response_time_ms, # "timestamp": end_time # } # if appname: # log_entry["appname"] = appname # await database.api_logs.insert_one(log_entry) # return { # "result_key": result_key, # "result_url": result_url, # "compressed_url": compressed_url # } # except Exception as e: # end_time = datetime.utcnow() # response_time_ms = (end_time - start_time).total_seconds() * 1000 # if database is not None: # log_entry = { # "endpoint": "/face-swap-couple", # "status": "fail", # "response_time_ms": response_time_ms, # "timestamp": end_time, # "error": str(e) # } # if appname: # log_entry["appname"] = appname # await database.api_logs.insert_one(log_entry) # raise HTTPException(500, f"Face swap failed: {str(e)}") # # --------------------- Mount Gradio --------------------- # multi_faceswap_app = build_multi_faceswap_gradio() # fastapi_app = mount_gradio_app( # fastapi_app, # multi_faceswap_app, # path="/gradio-couple-faceswap" # ) # if __name__ == "__main__": # uvicorn.run(fastapi_app, host="0.0.0.0", port=7860)