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import os
import tempfile
from flask import Flask, jsonify, request
from flask_cors import CORS
from pymongo import MongoClient
from pymongo.errors import PyMongoError
from werkzeug.security import check_password_hash, generate_password_hash
from detector_config import (
ALLOW_LOCAL_MODEL_FALLBACK,
DEVICE,
IMAGE_DETECTOR_BACKEND,
IMAGE_FAKE_THRESHOLD,
IMAGE_HF_MODEL_IDS,
IMAGE_UNCERTAIN_MARGIN,
VIDEO_DETECTOR_BACKEND,
VIDEO_FAKE_THRESHOLD,
VIDEO_HF_MODEL_ID,
VIDEO_NUM_FRAMES,
VIDEO_UNCERTAIN_MARGIN,
)
from detection import detect_deepfake
from model_loader import IMAGE_MODEL_PATH, VIDEO_MODEL_PATH
from video_detection import predict_video
app = Flask(__name__)
CORS(app)
MONGO_URI = os.environ.get("MONGO_URI", "mongodb://localhost:27017/")
MONGO_DB_NAME = os.environ.get("MONGO_DB_NAME", "deepfake_detection")
mongo_client = MongoClient(MONGO_URI, serverSelectionTimeoutMS=5000)
db = mongo_client[MONGO_DB_NAME]
users_collection = db["users"]
try:
users_collection.create_index("email", unique=True)
except PyMongoError:
pass
def get_db_error_message(error):
return {
"error": "MongoDB connection failed. Make sure MongoDB is running and MONGO_URI is correct.",
"details": str(error),
}
def serialize_user(user):
return {
"id": str(user["_id"]),
"name": user["name"],
"email": user["email"],
"created_at": user.get("created_at"),
}
def get_model_file_status(model_path):
if not model_path.exists():
return {
"status": "missing",
"path": str(model_path),
}
with model_path.open("rb") as model_file:
header = model_file.read(64)
if header.startswith(b"version https://git-lfs.github.com/spec"):
return {
"status": "git_lfs_pointer",
"path": str(model_path),
"size_bytes": model_path.stat().st_size,
}
return {
"status": "available",
"path": str(model_path),
"size_bytes": model_path.stat().st_size,
}
def normalize_prediction_response(result):
response = dict(result)
response["result"] = str(response["result"]).upper()
fake_score = response.get("fake_score")
real_score = response.get("real_score")
raw_probability = response.get("raw_probability")
if fake_score is None or real_score is None:
if raw_probability is not None:
raw_score = float(raw_probability) * 100
if response["result"] == "REAL":
real_score = raw_score
fake_score = 100 - raw_score
else:
fake_score = raw_score
real_score = 100 - raw_score
else:
confidence = float(response.get("confidence", 0))
if response["result"] == "REAL":
real_score = confidence
fake_score = 100 - confidence
else:
fake_score = confidence
real_score = 100 - confidence
response["fake_score"] = round(float(fake_score), 2)
response["real_score"] = round(float(real_score), 2)
response["confidence"] = round(max(response["fake_score"], response["real_score"]), 2)
return response
@app.get("/health")
def health():
try:
mongo_client.admin.command("ping")
db_status = "connected"
except PyMongoError:
db_status = "disconnected"
return jsonify({"status": "ok", "database": db_status})
@app.get("/health/models")
def model_health():
return jsonify({
"image_model": get_model_file_status(IMAGE_MODEL_PATH),
"video_model": get_model_file_status(VIDEO_MODEL_PATH),
"active_config": {
"device": DEVICE,
"allow_local_model_fallback": ALLOW_LOCAL_MODEL_FALLBACK,
"image_backend": IMAGE_DETECTOR_BACKEND,
"image_hf_model_ids": IMAGE_HF_MODEL_IDS,
"image_fake_threshold": IMAGE_FAKE_THRESHOLD,
"image_uncertain_margin": IMAGE_UNCERTAIN_MARGIN,
"video_backend": VIDEO_DETECTOR_BACKEND,
"video_hf_model_id": VIDEO_HF_MODEL_ID,
"video_num_frames": VIDEO_NUM_FRAMES,
"video_fake_threshold": VIDEO_FAKE_THRESHOLD,
"video_uncertain_margin": VIDEO_UNCERTAIN_MARGIN,
},
})
@app.post("/auth/signup")
def signup():
payload = request.get_json(silent=True) or {}
name = (payload.get("name") or "").strip()
email = (payload.get("email") or "").strip().lower()
password = payload.get("password") or ""
if not name or not email or not password:
return jsonify({"error": "Name, email, and password are required."}), 400
if len(password) < 6:
return jsonify({"error": "Password must be at least 6 characters long."}), 400
try:
existing_user = users_collection.find_one({"email": email})
if existing_user:
return jsonify({"error": "An account with this email already exists."}), 409
user = {
"name": name,
"email": email,
"password_hash": generate_password_hash(password),
"created_at": datetime.utcnow().isoformat(),
}
insert_result = users_collection.insert_one(user)
user["_id"] = insert_result.inserted_id
return jsonify({
"message": "Account created successfully.",
"user": serialize_user(user),
}), 201
except PyMongoError as error:
return jsonify(get_db_error_message(error)), 500
@app.post("/auth/signin")
def signin():
payload = request.get_json(silent=True) or {}
email = (payload.get("email") or "").strip().lower()
password = payload.get("password") or ""
if not email or not password:
return jsonify({"error": "Email and password are required."}), 400
try:
user = users_collection.find_one({"email": email})
except PyMongoError as error:
return jsonify(get_db_error_message(error)), 500
if not user or not check_password_hash(user["password_hash"], password):
return jsonify({"error": "Invalid email or password."}), 401
return jsonify({
"message": "Signed in successfully.",
"user": serialize_user(user),
})
@app.route("/predict", methods=["POST"])
def predict_image():
file = request.files.get("file")
if not file:
return jsonify({"error": "No file uploaded"}), 400
try:
result = detect_deepfake(file)
if "error" in result:
return jsonify(result), 500
return jsonify(normalize_prediction_response(result))
except Exception as error:
return jsonify({"error": str(error)}), 500
@app.route("/predict-video", methods=["POST"])
def predict_video_route():
file = request.files.get("file")
if not file:
return jsonify({"error": "No video uploaded"}), 400
video_path = None
try:
with tempfile.NamedTemporaryFile(delete=False, suffix=".mp4") as temp:
file.save(temp.name)
video_path = temp.name
result = predict_video(video_path)
if "error" in result:
return jsonify(result), 500
response = normalize_prediction_response(result)
response["frames_processed"] = response.get("frames_analyzed", 0)
return jsonify(response)
except Exception as error:
return jsonify({"error": str(error)}), 500
finally:
if video_path and os.path.exists(video_path):
os.remove(video_path)
if __name__ == "__main__":
app.run(debug=True, use_reloader=False)
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