import sys import os import json import re import gc import time import psutil from contextlib import nullcontext # import ffmpeg import imageio from PIL import Image import cv2 import torch import torch.nn.functional as F import numpy as np import gradio as gr from datetime import datetime from .tools.painter import mask_painter, point_painter from .tools.interact_tools import SamControler from .tools.misc import get_device from .tools.base_segmenter import set_image_encoder_patch from .utils.model_assets import MATANYONE_SAM3, ensure_selected_matanyone_assets, get_matanyone_title_html, get_selected_matanyone_version, load_selected_matanyone_model from .matanyone.inference.inference_core import InferenceCore from .matanyone_wrapper import matanyone from shared.utils.audio_video import save_video, save_image from mmgp import offload from shared.utils import files_locator as fl from shared.utils.utils import truncate_for_filesystem, sanitize_file_name, process_images_multithread, calculate_new_dimensions, get_default_workers from shared.utils.process_locks import acquire_GPU_ressources, release_GPU_ressources, any_GPU_process_running from preprocessing.sam3.logger import get_logger logger = get_logger(__name__) arg_device = str(get_device()) arg_sam_model_type="vit_h" arg_mask_save = False model_loaded = False model = None matanyone_model = None model_in_GPU = False matanyone_in_GPU = False bfloat16_supported = False PlugIn = None server_config_ref = None loaded_matanyone_version = None sam3_predictor = None sam3_click_session = None SAM3_MATANYONE_FILL_HOLE_AREA = 2 MATANYONE_MASK_TYPE_CHOICES = [ ("Grey with Alpha (used by WanGP)", "wangp"), ("Green Screen", "greenscreen"), ("RGB With Alpha Channel (local Zip file)", "alpha"), ] SAM3_MASK_TYPE_CHOICES = [ ("B & W (used by WanGP)", "wangp"), ("Green Screen", "greenscreen"), ] # SAM generator import copy GPU_process_was_running = False def acquire_GPU(state): global GPU_process_was_running GPU_process_was_running = any_GPU_process_running(state, "matanyone") acquire_GPU_ressources(state, "matanyone", "MatAnyone", gr= gr) def release_GPU(state): release_GPU_ressources(state, "matanyone") if GPU_process_was_running: global matanyone_in_GPU, model_in_GPU if model_in_GPU: model.samcontroler.sam_controler.model.to("cpu") model_in_GPU = False if matanyone_in_GPU: matanyone_model.to("cpu") matanyone_in_GPU = False def perform_spatial_upsampling(frames, new_dim): if new_dim =="": return frames h, w = frames[0].shape[:2] from shared.utils.utils import resize_lanczos pos = new_dim.find(" ") fit_into_canvas = "Outer" in new_dim new_dim = new_dim[:pos] if new_dim == "1080p": canvas_w, canvas_h = 1920, 1088 elif new_dim == "720p": canvas_w, canvas_h = 1280, 720 else: canvas_w, canvas_h = 832, 480 h, w = calculate_new_dimensions(canvas_h, canvas_w, h, w, fit_into_canvas=fit_into_canvas, block_size= 16 ) def upsample_frames(frame): return np.array(Image.fromarray(frame).resize((w,h), resample=Image.Resampling.LANCZOS)) output_frames = process_images_multithread(upsample_frames, frames, "upsample", wrap_in_list = False, max_workers=get_default_workers(), in_place=True) return output_frames class MaskGenerator(): def __init__(self, sam_checkpoint, device): global args_device args_device = device self.samcontroler = SamControler(sam_checkpoint, arg_sam_model_type, arg_device) def first_frame_click(self, image: np.ndarray, points:np.ndarray, labels: np.ndarray, multimask=True): mask, logit, painted_image = self.samcontroler.first_frame_click(image, points, labels, multimask) return mask, logit, painted_image # convert points input to prompt state def get_prompt(click_state, click_input): inputs = json.loads(click_input) points = click_state[0] labels = click_state[1] for input in inputs: points.append(input[:2]) labels.append(input[2]) click_state[0] = points click_state[1] = labels prompt = { "prompt_type":["click"], "input_point":click_state[0], "input_label":click_state[1], "multimask_output":"True", } return prompt def is_sam3_selected(): return get_selected_matanyone_version(server_config_ref) == MATANYONE_SAM3 def _matanyone_morphology_visibility(): return gr.update(visible=not is_sam3_selected()) def _matanyone_mask_type_choices(): return SAM3_MASK_TYPE_CHOICES if is_sam3_selected() else MATANYONE_MASK_TYPE_CHOICES def _matanyone_mask_type_update(mask_type): choices = _matanyone_mask_type_choices() values = [value for _, value in choices] return gr.update(choices=choices, value=mask_type if mask_type in values else "wangp") def _matanyone_mask_output_button_label(): return "B & W Mask Output" if is_sam3_selected() else "Alpha Mask Output" def _matanyone_mask_output_button_update(): return gr.update(value=_matanyone_mask_output_button_label()) def _ensure_sam3_predictor(): global sam3_predictor, loaded_matanyone_version, model_loaded if sam3_predictor is None: ensure_selected_matanyone_assets(server_config_ref) from preprocessing.sam3.preprocessor import load_sam3_mask_predictor sam3_predictor = load_sam3_mask_predictor(include_text_encoder=False, postprocess_batch_size=1, use_batched_grounding=True, manual_model_loading=True) sam3_predictor.load_model_to_gpu() loaded_matanyone_version = MATANYONE_SAM3 model_loaded = True return sam3_predictor def _sam3_load_model_to_gpu(): if sam3_predictor is not None and hasattr(sam3_predictor, "load_model_to_gpu"): sam3_predictor.load_model_to_gpu() def _sam3_start_session(video_state, start_frame=0, end_frame=None, cache_frame_outputs=True): predictor = _ensure_sam3_predictor() _sam3_load_model_to_gpu() frames = [Image.fromarray(frame) for frame in video_state["origin_images"][start_frame:end_frame]] response = predictor.handle_request({"type": "start_session", "resource_path": frames, "offload_video_to_cpu": False, "cache_frame_outputs": cache_frame_outputs}) return response["session_id"] def _sam3_start_frame_session(frame): predictor = _ensure_sam3_predictor() _sam3_load_model_to_gpu() response = predictor.handle_request({"type": "start_session", "resource_path": [Image.fromarray(frame)], "offload_video_to_cpu": False}) return response["session_id"] def _sam3_close_session(session_id): if sam3_predictor is not None and session_id is not None: sam3_predictor.handle_request({"type": "close_session", "session_id": session_id}) gc.collect() if torch.cuda.is_available(): torch.cuda.empty_cache() def _sam3_close_click_session(): global sam3_click_session if sam3_click_session is not None: _sam3_close_session(sam3_click_session["session_id"]) sam3_click_session = None def _sam3_get_click_session(video_state, frame_idx): global sam3_click_session frame = video_state["origin_images"][frame_idx] frame_identity = id(frame) if sam3_click_session is None or sam3_click_session["frame_idx"] != frame_idx or sam3_click_session["frame_identity"] != frame_identity: _sam3_close_click_session() sam3_click_session = { "frame_idx": frame_idx, "frame_identity": frame_identity, "session_id": _sam3_start_frame_session(frame), } return sam3_click_session["session_id"] def _to_numpy(value): if torch.is_tensor(value): return value.detach().cpu().numpy() return np.asarray(value) def _sam3_autocast_context(): if torch.cuda.is_available(): return torch.autocast(device_type="cuda", dtype=torch.bfloat16) return nullcontext() def _sam3_bf16_prompt_payload(value): if torch.is_tensor(value): return value.to(dtype=torch.bfloat16) if value.is_floating_point() else value if isinstance(value, dict): return {key: _sam3_bf16_prompt_payload(item) for key, item in value.items()} if isinstance(value, list): return [_sam3_bf16_prompt_payload(item) for item in value] if isinstance(value, tuple): return tuple(_sam3_bf16_prompt_payload(item) for item in value) return value def _sam3_points_payload(points): dtype = torch.bfloat16 if torch.cuda.is_available() else torch.float32 return torch.as_tensor(points, dtype=dtype) def _sam3_labels_payload(labels): return torch.as_tensor(labels, dtype=torch.int32) def _sam3_outputs_to_mask(outputs, height, width, obj_ids=None, fill_hole_area=0): if outputs is None or "out_binary_masks" not in outputs: return np.zeros((height, width), dtype=np.uint8) masks = _to_numpy(outputs["out_binary_masks"]) if masks.size == 0: return np.zeros((height, width), dtype=np.uint8) if masks.ndim == 2: masks = masks[None, :, :] elif masks.ndim == 4 and masks.shape[1] == 1: masks = masks[:, 0] elif masks.ndim > 3: masks = masks.reshape((-1, *masks.shape[-2:])) if obj_ids is not None: out_obj_ids = _to_numpy(outputs.get("out_obj_ids", np.arange(masks.shape[0]))) keep = np.isin(out_obj_ids, np.asarray(list(obj_ids))) masks = masks[keep] if masks.size == 0: return np.zeros((height, width), dtype=np.uint8) if masks.shape[-2:] != (height, width): masks = np.stack([cv2.resize(mask.astype(np.uint8), (width, height), interpolation=cv2.INTER_NEAREST) for mask in masks], axis=0) mask = masks.astype(bool).any(axis=0) if fill_hole_area > 0: from preprocessing.sam3.preprocessor import fill_sam3_binary_mask_holes mask = fill_sam3_binary_mask_holes(mask, fill_hole_area) return mask.astype(np.uint8) def _paint_sam3_mask(image, mask, points=None, labels=None, mask_color=3): painted = mask_painter(image, mask.astype("uint8"), mask_color=mask_color) if np.any(mask) else image.copy() if points is not None and labels is not None: height, width = image.shape[:2] points = np.asarray(points, dtype=np.int32) if points.size > 0: points[:, 0] = np.clip(points[:, 0], 0, width - 1) points[:, 1] = np.clip(points[:, 1], 0, height - 1) labels = np.asarray(labels) if np.any(labels > 0): painted = point_painter(painted, points[labels > 0], 8, 0.9, 15, 2, 5) if np.any(labels < 1): painted = point_painter(painted, points[labels < 1], 50, 0.9, 15, 2, 5) return Image.fromarray(painted) def _parse_sam3_keywords(keyword_text): return [keyword.strip() for keyword in re.split(r"[\n,;]+", keyword_text or "") if keyword.strip()] def _sam3_relative_points(points, width, height): points = np.asarray(points, dtype=np.float32).copy() if points.size == 0: return points.reshape(0, 2).tolist() points[:, 0] = np.clip(points[:, 0], 0, width - 1) / max(width - 1, 1) points[:, 1] = np.clip(points[:, 1], 0, height - 1) / max(height - 1, 1) return points.tolist() def _sam3_preview_point_mask(video_state, frame_idx, points, labels): frame = video_state["origin_images"][frame_idx] height, width = frame.shape[:2] session_id = _sam3_get_click_session(video_state, frame_idx) from preprocessing.sam3.preprocessor import encode_sam3_keyword_prompts preencoded = _sam3_bf16_prompt_payload(encode_sam3_keyword_prompts([""], keep_text_encoder_loaded=True)[""]) with _sam3_autocast_context(): result = sam3_predictor.handle_request({ "type": "add_prompt", "session_id": session_id, # This preview session contains only the selected source frame, so its local index is 0. "frame_index": 0, "points": _sam3_points_payload(_sam3_relative_points(points, width, height)), "point_labels": _sam3_labels_payload(labels), "obj_id": 1, "rel_coordinates": True, "clear_old_points": True, "preencoded_text_outputs": preencoded, }) return _sam3_outputs_to_mask(result["outputs"], height, width, fill_hole_area=SAM3_MATANYONE_FILL_HOLE_AREA) def _sam3_preview_keyword_mask(video_state, frame_idx, keyword): frame = video_state["origin_images"][frame_idx] height, width = frame.shape[:2] session_id = _sam3_start_frame_session(frame) try: from preprocessing.sam3.preprocessor import encode_sam3_keyword_prompts preencoded = _sam3_bf16_prompt_payload(encode_sam3_keyword_prompts([keyword], keep_text_encoder_loaded=True)[keyword]) # This preview session contains only the selected source frame, so its local index is 0. with _sam3_autocast_context(): result = sam3_predictor.handle_request({"type": "add_prompt", "session_id": session_id, "frame_index": 0, "text": keyword, "preencoded_text_outputs": preencoded}) return _sam3_outputs_to_mask(result["outputs"], height, width, fill_hole_area=SAM3_MATANYONE_FILL_HOLE_AREA) finally: _sam3_close_session(session_id) def _selected_sam3_prompts(interactive_state, mask_dropdown): multi_mask = interactive_state.get("multi_mask", {}) prompts = multi_mask.get("sam3_prompts", []) if len(prompts) == 0: current_prompt = interactive_state.get("sam3_current_prompt") return [current_prompt] if current_prompt is not None else [] if len(mask_dropdown) == 0: mask_dropdown = ["mask_001"] selected = [] for mask_name in sorted(mask_dropdown): try: mask_number = int(mask_name.split("_")[1]) - 1 except (IndexError, ValueError): continue if 0 <= mask_number < len(prompts) and prompts[mask_number] is not None: selected.append(prompts[mask_number]) return selected def _sam3_propagate_keywords(video_state, keyword_prompts, start_frame, end_frame): frames = video_state["origin_images"][start_frame:end_frame] if len(keyword_prompts) == 0 or len(frames) == 0: return [] _sam3_close_click_session() from preprocessing.sam3.preprocessor import encode_sam3_keyword_prompts alpha = [np.zeros((*frames[0].shape[:2], 1), dtype=np.uint8) for _ in frames] video_pil = [Image.fromarray(frame) for frame in frames] keywords = sorted({prompt["keyword"] for prompt in keyword_prompts}) logger.info("SAM3 encoding keywords before propagation: %s", ", ".join(f"'{keyword}'" for keyword in keywords)) preencoded_prompts = encode_sam3_keyword_prompts(keywords, keep_text_encoder_loaded=True) for prompt in keyword_prompts: local_frame_idx = prompt["frame_idx"] - start_frame if local_frame_idx < 0 or local_frame_idx >= len(frames): continue session_id = None try: logger.info("SAM3 keyword currently being processed: '%s'", prompt["keyword"]) preencoded = _sam3_bf16_prompt_payload(preencoded_prompts[prompt["keyword"]]) _sam3_load_model_to_gpu() response = _ensure_sam3_predictor().handle_request({"type": "start_session", "resource_path": video_pil, "offload_video_to_cpu": False, "cache_frame_outputs": False}) session_id = response["session_id"] with _sam3_autocast_context(): sam3_predictor.handle_request({"type": "add_prompt", "session_id": session_id, "frame_index": local_frame_idx, "text": prompt["keyword"], "preencoded_text_outputs": preencoded}) for result in sam3_predictor.handle_stream_request({ "type": "propagate_in_video", "session_id": session_id, "propagation_direction": "forward", "start_frame_index": local_frame_idx, "max_frame_num_to_track": len(frames) - local_frame_idx, }): frame_idx = result["frame_index"] if local_frame_idx <= frame_idx < len(frames): alpha[frame_idx][:, :, 0] |= _sam3_outputs_to_mask(result["outputs"], *frames[frame_idx].shape[:2], fill_hole_area=SAM3_MATANYONE_FILL_HOLE_AREA) * 255 finally: _sam3_close_session(session_id) return alpha def _sam3_propagate_prompts(video_state, prompts, start_frame, end_frame): frames = video_state["origin_images"][start_frame:end_frame] height, width = frames[0].shape[:2] alpha = [np.zeros((height, width, 1), dtype=np.uint8) for _ in range(end_frame - start_frame)] point_prompts = [prompt for prompt in prompts if prompt.get("type") == "points"] keyword_prompts = [prompt for prompt in prompts if prompt.get("type") == "keyword"] _sam3_close_click_session() if point_prompts: session_id = _sam3_start_session(video_state, start_frame, end_frame, cache_frame_outputs=False) try: from preprocessing.sam3.preprocessor import encode_sam3_keyword_prompts point_preencoded = _sam3_bf16_prompt_payload(encode_sam3_keyword_prompts([""], keep_text_encoder_loaded=True)[""]) has_point_prompt = False for obj_id, prompt in enumerate(point_prompts, start=1): prompt_frame = video_state["origin_images"][prompt["frame_idx"]] prompt_height, prompt_width = prompt_frame.shape[:2] local_frame_idx = prompt["frame_idx"] - start_frame if local_frame_idx < 0 or local_frame_idx >= len(frames): continue has_point_prompt = True with _sam3_autocast_context(): sam3_predictor.handle_request({ "type": "add_prompt", "session_id": session_id, "frame_index": local_frame_idx, "points": _sam3_points_payload(prompt.get("relative_points", _sam3_relative_points(prompt["points"], prompt_width, prompt_height))), "point_labels": _sam3_labels_payload(prompt["labels"]), "obj_id": obj_id, "rel_coordinates": True, "clear_old_points": True, "preencoded_text_outputs": point_preencoded, }) if has_point_prompt: with _sam3_autocast_context(): for result in sam3_predictor.handle_stream_request({ "type": "propagate_in_video", "session_id": session_id, "propagation_direction": "forward", "start_frame_index": 0, "max_frame_num_to_track": end_frame - start_frame, }): frame_idx = result["frame_index"] if 0 <= frame_idx < len(frames): alpha[frame_idx][:, :, 0] |= _sam3_outputs_to_mask(result["outputs"], height, width, fill_hole_area=SAM3_MATANYONE_FILL_HOLE_AREA) * 255 finally: _sam3_close_session(session_id) for index, mask in enumerate(_sam3_propagate_keywords(video_state, keyword_prompts, start_frame, end_frame)): alpha[index] |= mask return alpha def get_frames_from_image(state, image_input, image_state, new_dim): """ Args: video_path:str timestamp:float64 Return [[0:nearest_frame], [nearest_frame:], nearest_frame] """ if image_input is None: gr.Info("Please select an Image file") return [gr.update()] * 20 if len(new_dim) > 0: image_input = perform_spatial_upsampling([image_input], new_dim)[0] user_name = time.time() frames = [image_input] * 2 # hardcode: mimic a video with 2 frames image_size = (frames[0].shape[0],frames[0].shape[1]) # initialize video_state image_state = { "user_name": user_name, "image_name": "output.png", "origin_images": frames, "painted_images": frames.copy(), "masks": [np.zeros((frames[0].shape[0],frames[0].shape[1]), np.uint8)]*len(frames), "logits": [None]*len(frames), "select_frame_number": 0, "last_frame_numer": 0, "fps": None, "new_dim": new_dim, } image_info = "Image Name: N/A,\nFPS: N/A,\nTotal Frames: {},\nImage Size:{}".format(len(frames), image_size) acquire_GPU(state) if is_sam3_selected(): _sam3_close_click_session() _ensure_sam3_predictor() else: set_image_encoder_patch() select_SAM(state) model.samcontroler.sam_controler.reset_image() model.samcontroler.sam_controler.set_image(image_state["origin_images"][0]) torch.cuda.empty_cache() release_GPU(state) return image_state, gr.update(interactive=False), image_info, image_state["origin_images"][0], \ gr.update(visible=True, maximum=10, value=10), gr.update(visible=False, maximum=len(frames), value=len(frames)), \ gr.update(visible=True), gr.update(visible=True), \ gr.update(visible=True), gr.update(visible=True),\ gr.update(visible=True), gr.update(visible=False), \ gr.update(visible=False), gr.update(), \ gr.update(visible=False), gr.update(value="", visible=False), gr.update(visible=False), \ gr.update(visible=False), gr.update(visible=True), \ gr.update(visible=True) # extract frames from upload video def get_frames_from_video(state, video_input, video_state, new_dim): """ Args: video_path:str timestamp:float64 Return [[0:nearest_frame], [nearest_frame:], nearest_frame] """ if video_input is None: gr.Info("Please select a Video file") return [gr.update()] * 19 video_path = video_input frames = [] user_name = time.time() # extract Audio # try: # audio_path = video_input.replace(".mp4", "_audio.wav") # ffmpeg.input(video_path).output(audio_path, format='wav', acodec='pcm_s16le', ac=2, ar='44100').run(overwrite_output=True, quiet=True) # except Exception as e: # print(f"Audio extraction error: {str(e)}") # audio_path = "" # Set to "" if extraction fails # print(f'audio_path: {audio_path}') audio_path = "" # extract frames try: cap = cv2.VideoCapture(video_path) fps = cap.get(cv2.CAP_PROP_FPS) while cap.isOpened(): ret, frame = cap.read() if ret == True: current_memory_usage = psutil.virtual_memory().percent frames.append(cv2.cvtColor(frame, cv2.COLOR_BGR2RGB)) if current_memory_usage > 90: break else: break except (OSError, TypeError, ValueError, KeyError, SyntaxError) as e: print("read_frame_source:{} error. {}\n".format(video_path, str(e))) image_size = (frames[0].shape[0],frames[0].shape[1]) if len(new_dim) > 0: frames = perform_spatial_upsampling(frames, new_dim) image_size = (frames[0].shape[0],frames[0].shape[1]) # resize if resolution too big if image_size[0] >= 1280 and image_size[1] >= 1280: scale = 1080 / min(image_size) new_w = int(image_size[1] * scale) new_h = int(image_size[0] * scale) # update frames frames = [cv2.resize(f, (new_w, new_h), interpolation=cv2.INTER_AREA) for f in frames] # update image_size image_size = (frames[0].shape[0],frames[0].shape[1]) # initialize video_state video_state = { "user_name": user_name, "video_name": os.path.split(video_path)[-1], "origin_images": frames, "painted_images": frames.copy(), "masks": [np.zeros((frames[0].shape[0],frames[0].shape[1]), np.uint8)]*len(frames), "logits": [None]*len(frames), "select_frame_number": 0, "last_frame_number": 0, "fps": fps, "audio": audio_path, "new_dim": new_dim, } video_info = "Video Name: {},\nFPS: {},\nTotal Frames: {},\nImage Size:{}".format(video_state["video_name"], round(video_state["fps"], 0), len(frames), image_size) acquire_GPU(state) if is_sam3_selected(): _sam3_close_click_session() _ensure_sam3_predictor() else: set_image_encoder_patch() select_SAM(state) model.samcontroler.sam_controler.reset_image() model.samcontroler.sam_controler.set_image(video_state["origin_images"][0]) torch.cuda.empty_cache() release_GPU(state) return video_state, gr.update(interactive=False), video_info, video_state["origin_images"][0], \ gr.update(visible=True, maximum=len(frames), value=1), gr.update(visible=True, maximum=len(frames), value=len(frames)), gr.update(visible=False, maximum=len(frames), value=len(frames)), \ gr.update(visible=True), gr.update(visible=True), gr.update(visible=True), \ gr.update(visible=True), gr.update(visible=True),\ gr.update(visible=True), gr.update(visible=False), \ gr.update(visible=False), gr.update(visible=False), \ gr.update(visible=False), gr.update(visible=True), \ gr.update(visible=True) # get the select frame from gradio slider def select_video_template(image_selection_slider, video_state, interactive_state): image_selection_slider -= 1 video_state["select_frame_number"] = image_selection_slider # once select a new template frame, set the image in sam if not is_sam3_selected(): model.samcontroler.sam_controler.reset_image() model.samcontroler.sam_controler.set_image(video_state["origin_images"][image_selection_slider]) else: _sam3_close_click_session() return video_state["painted_images"][image_selection_slider], video_state, interactive_state def select_image_template(image_selection_slider, video_state, interactive_state): image_selection_slider = 0 # fixed for image video_state["select_frame_number"] = image_selection_slider # once select a new template frame, set the image in sam if not is_sam3_selected(): model.samcontroler.sam_controler.reset_image() model.samcontroler.sam_controler.set_image(video_state["origin_images"][image_selection_slider]) else: _sam3_close_click_session() return video_state["painted_images"][image_selection_slider], video_state, interactive_state # set the tracking end frame def get_end_number(track_pause_number_slider, video_state, interactive_state): interactive_state["track_end_number"] = track_pause_number_slider return video_state["painted_images"][track_pause_number_slider],interactive_state # use sam to get the mask def sam_refine(state, video_state, point_prompt, click_state, interactive_state, evt:gr.SelectData ): # """ Args: template_frame: PIL.Image point_prompt: flag for positive or negative button click click_state: [[points], [labels]] """ if point_prompt == "Positive": coordinate = "[[{},{},1]]".format(evt.index[0], evt.index[1]) interactive_state["positive_click_times"] += 1 else: coordinate = "[[{},{},0]]".format(evt.index[0], evt.index[1]) interactive_state["negative_click_times"] += 1 prompt = get_prompt(click_state=click_state, click_input=coordinate) if is_sam3_selected(): frame_idx = video_state["select_frame_number"] image = video_state["origin_images"][frame_idx] acquire_GPU(state) try: mask = _sam3_preview_point_mask(video_state, frame_idx, prompt["input_point"], prompt["input_label"]) finally: release_GPU(state) painted_image = _paint_sam3_mask(image, mask, prompt["input_point"], prompt["input_label"]) video_state["masks"][frame_idx] = mask video_state["logits"][frame_idx] = None video_state["painted_images"][frame_idx] = painted_image interactive_state["sam3_current_prompt"] = { "type": "points", "frame_idx": frame_idx, "points": copy.deepcopy(prompt["input_point"]), "relative_points": _sam3_relative_points(prompt["input_point"], image.shape[1], image.shape[0]), "labels": copy.deepcopy(prompt["input_label"]), } return painted_image, video_state, interactive_state acquire_GPU(state) select_SAM(state) # prompt for sam model set_image_encoder_patch() model.samcontroler.sam_controler.reset_image() model.samcontroler.sam_controler.set_image(video_state["origin_images"][video_state["select_frame_number"]]) torch.cuda.empty_cache() mask, logit, painted_image = model.first_frame_click( image=video_state["origin_images"][video_state["select_frame_number"]], points=np.array(prompt["input_point"]), labels=np.array(prompt["input_label"]), multimask=prompt["multimask_output"], ) video_state["masks"][video_state["select_frame_number"]] = mask video_state["logits"][video_state["select_frame_number"]] = logit video_state["painted_images"][video_state["select_frame_number"]] = painted_image torch.cuda.empty_cache() release_GPU(state) return painted_image, video_state, interactive_state def add_multi_mask(video_state, interactive_state, mask_dropdown): masks = video_state["masks"] if video_state["masks"] is None: gr.Info("Matanyone Session Lost. Please reload a Video") return [gr.update()]*4 if is_sam3_selected() and interactive_state.get("sam3_current_prompt") is None: gr.Info("Please click the reference frame or add keywords before adding a SAM3 mask.") return interactive_state, gr.update(choices=interactive_state["multi_mask"]["mask_names"], value=mask_dropdown), video_state["origin_images"][video_state["select_frame_number"]], [[],[]] mask = masks[video_state["select_frame_number"]] interactive_state["multi_mask"]["masks"].append(mask) interactive_state["multi_mask"]["mask_names"].append("mask_{:03d}".format(len(interactive_state["multi_mask"]["masks"]))) if is_sam3_selected(): interactive_state["multi_mask"].setdefault("sam3_prompts", []).append(copy.deepcopy(interactive_state["sam3_current_prompt"])) interactive_state["sam3_current_prompt"] = None _sam3_close_click_session() mask_dropdown.append("mask_{:03d}".format(len(interactive_state["multi_mask"]["masks"]))) select_frame = show_mask(video_state, interactive_state, mask_dropdown) return interactive_state, gr.update(choices=interactive_state["multi_mask"]["mask_names"], value=mask_dropdown), select_frame, [[],[]] def clear_click(video_state, click_state): masks = video_state["masks"] if video_state["masks"] is None: gr.Info("Matanyone Session Lost. Please reload a Video") return [gr.update()]*2 if is_sam3_selected(): _sam3_close_click_session() click_state = [[],[]] template_frame = video_state["origin_images"][video_state["select_frame_number"]] return template_frame, click_state def remove_multi_mask(interactive_state, mask_dropdown): if is_sam3_selected(): _sam3_close_click_session() interactive_state["multi_mask"]["mask_names"]= [] interactive_state["multi_mask"]["masks"] = [] interactive_state["multi_mask"]["sam3_prompts"] = [] interactive_state["sam3_current_prompt"] = None return interactive_state, gr.update(choices=[],value=[]) def add_sam3_keyword_masks(state, video_state, interactive_state, keyword_text, mask_dropdown): if video_state["masks"] is None: gr.Info("SAM3 session lost. Please reload the media") return [gr.update()] * 3 if not is_sam3_selected(): return interactive_state, gr.update(choices=interactive_state["multi_mask"]["mask_names"], value=mask_dropdown), show_mask(video_state, interactive_state, mask_dropdown) keywords = _parse_sam3_keywords(keyword_text) if len(keywords) == 0: gr.Info("Please enter at least one keyword.") return interactive_state, gr.update(choices=interactive_state["multi_mask"]["mask_names"], value=mask_dropdown), show_mask(video_state, interactive_state, mask_dropdown) frame_idx = video_state["select_frame_number"] acquire_GPU(state) try: for keyword in keywords: mask = _sam3_preview_keyword_mask(video_state, frame_idx, keyword) interactive_state["multi_mask"]["masks"].append(mask) interactive_state["multi_mask"]["mask_names"].append("mask_{:03d}".format(len(interactive_state["multi_mask"]["masks"]))) interactive_state["multi_mask"].setdefault("sam3_prompts", []).append({"type": "keyword", "frame_idx": frame_idx, "keyword": keyword}) mask_dropdown.append("mask_{:03d}".format(len(interactive_state["multi_mask"]["masks"]))) finally: release_GPU(state) select_frame = show_mask(video_state, interactive_state, mask_dropdown) return interactive_state, gr.update(choices=interactive_state["multi_mask"]["mask_names"], value=mask_dropdown), select_frame def show_mask(video_state, interactive_state, mask_dropdown): mask_dropdown.sort() if video_state["origin_images"]: select_frame = video_state["origin_images"][video_state["select_frame_number"]] for i in range(len(mask_dropdown)): mask_number = int(mask_dropdown[i].split("_")[1]) - 1 mask = interactive_state["multi_mask"]["masks"][mask_number] if np.any(mask): select_frame = mask_painter(select_frame, mask.astype('uint8'), mask_color=mask_number+2) return select_frame # def save_video(frames, output_path, fps): # writer = imageio.get_writer( output_path, fps=fps, codec='libx264', quality=8) # for frame in frames: # writer.append_data(frame) # writer.close() # return output_path def mask_to_xyxy_box(mask): rows, cols = np.where(mask == 255) if len(rows) == 0 or len(cols) == 0: return [] xmin = min(cols) xmax = max(cols) + 1 ymin = min(rows) ymax = max(rows) + 1 xmin = max(xmin, 0) ymin = max(ymin, 0) xmax = min(xmax, mask.shape[1]) ymax = min(ymax, mask.shape[0]) box = [xmin, ymin, xmax, ymax] box = [int(x) for x in box] return box def get_dim_file_suffix(new_dim): if not " " in new_dim: return "" pos = new_dim.find(" ") return new_dim[:pos] # image matting def image_matting(state, video_state, interactive_state, mask_type, matting_type, new_new_dim, mask_dropdown, erode_kernel_size, dilate_kernel_size, refine_iter): if video_state["masks"] is None: gr.Info("Matanyone Session Lost. Please reload an Image") return [gr.update(visible=False)]*12 if is_sam3_selected() and mask_type == "alpha": mask_type = "wangp" new_dim = video_state.get("new_dim", "") if new_new_dim != new_dim: gr.Info(f"You have changed the Input / Output Dimensions after loading the Video into Matanyone. The output dimension will be the ones when loading the image ({'original' if len(new_dim) == 0 else new_dim})") if interactive_state["track_end_number"]: following_frames = video_state["origin_images"][video_state["select_frame_number"]:interactive_state["track_end_number"]] else: following_frames = video_state["origin_images"][video_state["select_frame_number"]:] if interactive_state["multi_mask"]["masks"]: if len(mask_dropdown) == 0: mask_dropdown = ["mask_001"] mask_dropdown.sort() template_mask = interactive_state["multi_mask"]["masks"][int(mask_dropdown[0].split("_")[1]) - 1] * (int(mask_dropdown[0].split("_")[1])) for i in range(1,len(mask_dropdown)): mask_number = int(mask_dropdown[i].split("_")[1]) - 1 template_mask = np.clip(template_mask+interactive_state["multi_mask"]["masks"][mask_number]*(mask_number+1), 0, mask_number+1) video_state["masks"][video_state["select_frame_number"]]= template_mask else: template_mask = video_state["masks"][video_state["select_frame_number"]] if is_sam3_selected(): alpha = [((template_mask > 0).astype(np.uint8) * 255)[:, :, None] for _ in following_frames] else: # operation error if len(np.unique(template_mask))==1: template_mask[0][0]=1 acquire_GPU(state) select_matanyone(state) matanyone_processor = InferenceCore(matanyone_model, cfg=matanyone_model.cfg) foreground, alpha = matanyone(matanyone_processor, following_frames, template_mask*255, r_erode=erode_kernel_size, r_dilate=dilate_kernel_size, n_warmup=refine_iter) torch.cuda.empty_cache() release_GPU(state) foreground_mat = matting_type == "Foreground" foreground_output = None foreground_title = "Image with Background" alpha_title = "B & W Mask Image Output" if is_sam3_selected() else "Alpha Mask Image Output" if mask_type == "wangp": white_image = np.full_like(following_frames[-1], 255, dtype=np.uint8) alpha_output = alpha[-1] if foreground_mat else 255 - alpha[-1] output_frame = (white_image.astype(np.uint16) * (255 - alpha_output.astype(np.uint16)) + following_frames[-1].astype(np.uint16) * alpha_output.astype(np.uint16)) output_frame = output_frame // 255 output_frame = output_frame.astype(np.uint8) foreground_output = output_frame control_output = following_frames[-1] alpha_output = alpha_output[:,:,0] foreground_title = "Image without Background" if foreground_mat else "Image with Background" control_title = "Control Image" allow_export = True control_output = following_frames[-1] tab_label = "Control Image & Mask" elif mask_type == "greenscreen": green_image = np.zeros_like(following_frames[-1], dtype=np.uint8) green_image[:, :, 1] = 255 alpha_output = alpha[-1] if foreground_mat else 255 - alpha[-1] output_frame = (following_frames[-1].astype(np.uint16) * (255 - alpha_output.astype(np.uint16)) + green_image.astype(np.uint16) * alpha_output.astype(np.uint16)) output_frame = output_frame // 255 output_frame = output_frame.astype(np.uint8) control_output = output_frame alpha_output = alpha_output[:,:,0] control_title = "Green Screen Output" tab_label = "Green Screen" allow_export = False elif mask_type == "alpha": alpha_output = alpha[-1] if foreground_mat else 255 - alpha[-1] from models.wan.alpha.utils import render_video, from_BRGA_numpy_to_RGBA_torch from shared.utils.utils import convert_tensor_to_image _, BGRA_frames = render_video(following_frames[-1:], [alpha_output]) RGBA_image = from_BRGA_numpy_to_RGBA_torch(BGRA_frames).squeeze(1) control_output = convert_tensor_to_image(RGBA_image) alpha_output = alpha_output[:,:,0] control_title = "RGBA Output" tab_label = "RGBA" allow_export = False bbox_info = mask_to_xyxy_box(alpha_output) h = alpha_output.shape[0] w = alpha_output.shape[1] if len(bbox_info) == 0: bbox_info = "" else: bbox_info = [str(int(bbox_info[0]/ w * 100 )), str(int(bbox_info[1]/ h * 100 )), str(int(bbox_info[2]/ w * 100 )), str(int(bbox_info[3]/ h * 100 )) ] bbox_info = ":".join(bbox_info) alpha_output = Image.fromarray(alpha_output) return gr.update(visible=True, selected =0), gr.update(label=tab_label, visible=True), gr.update(visible = foreground_output is not None), foreground_output, control_output, alpha_output, gr.update(visible=foreground_output is not None, label=foreground_title),gr.update(visible=True, label=control_title), gr.update(visible=True, label=alpha_title), gr.update(value=bbox_info, visible= True), gr.update(visible=allow_export), gr.update(visible=allow_export) # video matting def video_matting(state, video_state, mask_type, video_input, end_slider, matting_type, new_new_dim, interactive_state, mask_dropdown, erode_kernel_size, dilate_kernel_size): if video_state["masks"] is None: gr.Info("Matanyone Session Lost. Please reload a Video") return [gr.update(visible=False)]*6 if is_sam3_selected() and mask_type == "alpha": mask_type = "wangp" # if interactive_state["track_end_number"]: # following_frames = video_state["origin_images"][video_state["select_frame_number"]:interactive_state["track_end_number"]] # else: end_slider = max(video_state["select_frame_number"] +1, end_slider) following_frames = video_state["origin_images"][video_state["select_frame_number"]: end_slider] if interactive_state["multi_mask"]["masks"]: if len(mask_dropdown) == 0: mask_dropdown = ["mask_001"] mask_dropdown.sort() template_mask = interactive_state["multi_mask"]["masks"][int(mask_dropdown[0].split("_")[1]) - 1] * (int(mask_dropdown[0].split("_")[1])) for i in range(1,len(mask_dropdown)): mask_number = int(mask_dropdown[i].split("_")[1]) - 1 template_mask = np.clip(template_mask+interactive_state["multi_mask"]["masks"][mask_number]*(mask_number+1), 0, mask_number+1) video_state["masks"][video_state["select_frame_number"]]= template_mask else: template_mask = video_state["masks"][video_state["select_frame_number"]] fps = video_state["fps"] new_dim = video_state.get("new_dim", "") if new_new_dim != new_dim: gr.Info(f"You have changed the Input / Output Dimensions after loading the Video into Matanyone. The output dimension will be the ones when loading the video ({'original' if len(new_dim) == 0 else new_dim})") audio_path = video_state["audio"] if is_sam3_selected(): prompts = _selected_sam3_prompts(interactive_state, mask_dropdown) if len(prompts) == 0: gr.Info("Please add at least one SAM3 mask before generating video matting.") return [gr.update(visible=False)]*6 acquire_GPU(state) try: alpha = _sam3_propagate_prompts(video_state, prompts, video_state["select_frame_number"], end_slider) finally: release_GPU(state) else: # operation error if len(np.unique(template_mask))==1: template_mask[0][0]=1 acquire_GPU(state) select_matanyone(state) matanyone_processor = InferenceCore(matanyone_model, cfg=matanyone_model.cfg) foreground, alpha = matanyone(matanyone_processor, following_frames, template_mask*255, r_erode=erode_kernel_size, r_dilate=dilate_kernel_size) torch.cuda.empty_cache() release_GPU(state) foreground_mat = matting_type == "Foreground" alpha_title = "B & W Mask Video Output" if is_sam3_selected() else "Alpha Mask Video Output" alpha_suffix = "_bw_mask" if is_sam3_selected() else "_alpha" output_frames = [] new_alpha = [] BGRA_frames = None if mask_type == "" or mask_type == "wangp": if not foreground_mat: alpha = [255 - frame_alpha for frame_alpha in alpha ] output_frames = following_frames foreground_title = "Original Video Input" foreground_suffix = "" allow_export = True elif mask_type == "greenscreen": green_image = np.zeros_like(following_frames[0], dtype=np.uint8) green_image[:, :, 1] = 255 for frame_origin, frame_alpha in zip(following_frames, alpha): if not foreground_mat: frame_alpha = 255 - frame_alpha output_frame = (frame_origin.astype(np.uint16) * (255 - frame_alpha.astype(np.uint16)) + green_image.astype(np.uint16) * frame_alpha.astype(np.uint16)) output_frame = output_frame // 255 output_frame = output_frame.astype(np.uint8) output_frames.append(output_frame) new_alpha.append(frame_alpha) alpha = new_alpha foreground_title = "Green Screen Output" foreground_suffix = "_greenscreen" allow_export = False elif mask_type == "alpha": if not foreground_mat: alpha = [255 - frame_alpha for frame_alpha in alpha ] from models.wan.alpha.utils import render_video output_frames, BGRA_frames = render_video(following_frames, alpha) foreground_title = "Checkboard Output" foreground_suffix = "_RGBA" allow_export = False if not os.path.exists("mask_outputs"): os.makedirs("mask_outputs") file_name= video_state["video_name"] file_name = ".".join(file_name.split(".")[:-1]) time_flag = datetime.fromtimestamp(time.time()).strftime("%Y-%m-%d-%Hh%Mm%Ss") file_name = f"{file_name}_{time_flag}" if len(new_dim) > 0: file_name += "_" + get_dim_file_suffix(new_dim) from shared.utils.audio_video import extract_audio_tracks, combine_video_with_audio_tracks, cleanup_temp_audio_files source_audio_tracks, audio_metadata = extract_audio_tracks(video_input, verbose= offload.default_verboseLevel ) output_fg_path = f"./mask_outputs/{file_name}{foreground_suffix}.mp4" output_fg_temp_path = f"./mask_outputs/{file_name}{foreground_suffix}_tmp.mp4" if len(source_audio_tracks) == 0: foreground_output = save_video(output_frames, output_fg_path , fps=fps, codec_type= video_output_codec) else: foreground_output_tmp = save_video(output_frames, output_fg_temp_path , fps=fps, codec_type= video_output_codec) combine_video_with_audio_tracks(output_fg_temp_path, source_audio_tracks, output_fg_path, audio_metadata=audio_metadata) cleanup_temp_audio_files(source_audio_tracks) os.remove(foreground_output_tmp) foreground_output = output_fg_path alpha_output = save_video(alpha, f"./mask_outputs/{file_name}{alpha_suffix}.mp4", fps=fps, codec_type= video_output_codec) if BGRA_frames is not None: from models.wan.alpha.utils import write_zip_file write_zip_file(f"./mask_outputs/{file_name}{foreground_suffix}.zip", BGRA_frames) return foreground_output, alpha_output, gr.update(visible=True, label=foreground_title), gr.update(visible=True, label=alpha_title), gr.update(visible=allow_export), gr.update(visible=allow_export) def show_outputs(): return gr.update(visible=True), gr.update(visible=True) def add_audio_to_video(video_path, audio_path, output_path): pass # try: # video_input = ffmpeg.input(video_path) # audio_input = ffmpeg.input(audio_path) # _ = ( # ffmpeg # .output(video_input, audio_input, output_path, vcodec="copy", acodec="aac") # .run(overwrite_output=True, capture_stdout=True, capture_stderr=True) # ) # return output_path # except ffmpeg.Error as e: # print(f"FFmpeg error:\n{e.stderr.decode()}") # return None def generate_video_from_frames(frames, output_path, fps=30, gray2rgb=False, audio_path=""): """ Generates a video from a list of frames. Args: frames (list of numpy arrays): The frames to include in the video. output_path (str): The path to save the generated video. fps (int, optional): The frame rate of the output video. Defaults to 30. """ frames = torch.from_numpy(np.asarray(frames)) _, h, w, _ = frames.shape if gray2rgb: frames = np.repeat(frames, 3, axis=3) if not os.path.exists(os.path.dirname(output_path)): os.makedirs(os.path.dirname(output_path)) video_temp_path = output_path.replace(".mp4", "_temp.mp4") # resize back to ensure input resolution imageio.mimwrite(video_temp_path, frames, fps=fps, quality=7, codec='libx264', ffmpeg_params=["-vf", f"scale={w}:{h}"]) # add audio to video if audio path exists if audio_path != "" and os.path.exists(audio_path): output_path = add_audio_to_video(video_temp_path, audio_path, output_path) os.remove(video_temp_path) return output_path else: return video_temp_path # reset all states for a new input def get_default_states(): return { "user_name": "", "video_name": "", "origin_images": None, "painted_images": None, "masks": None, "inpaint_masks": None, "logits": None, "select_frame_number": 0, "fps": 30 }, { "inference_times": 0, "negative_click_times" : 0, "positive_click_times": 0, "mask_save": False, "multi_mask": { "mask_names": [], "masks": [], "sam3_prompts": [], }, "sam3_current_prompt": None, "track_end_number": None, }, [[],[]] def restart(): return *(get_default_states()), gr.update(interactive=True), gr.update(visible=False), None, None, None, \ gr.update(visible=False), gr.update(visible=False), gr.update(visible=False), gr.update(visible=False), gr.update(visible=False), gr.update(visible=False),\ gr.update(visible=False), gr.update(visible=False), gr.update(visible=False), gr.update(visible=False), gr.update(visible=False), gr.update(visible=False), \ gr.update(visible=False), gr.update(visible=False), gr.update(visible=False), gr.update(visible=False), \ gr.update(visible=False), gr.update(visible=False, choices=[], value=[]), "", gr.update(visible=False) # def load_sam(): # global model_loaded # global model # model.samcontroler.sam_controler.model.to(arg_device) # global matanyone_model # matanyone_model.to(arg_device) def select_matanyone(state): global matanyone_in_GPU, model_in_GPU if is_sam3_selected(): _ensure_sam3_predictor() return if matanyone_model is None or loaded_matanyone_version != get_selected_matanyone_version(server_config_ref): load_unload_models(state, True, True) if matanyone_in_GPU: return model.samcontroler.sam_controler.model.to("cpu") model_in_GPU = False torch.cuda.empty_cache() matanyone_model.to(arg_device) matanyone_in_GPU = True def select_SAM(state): global matanyone_in_GPU, model_in_GPU if is_sam3_selected(): _ensure_sam3_predictor() return if matanyone_model is None or loaded_matanyone_version != get_selected_matanyone_version(server_config_ref): load_unload_models(state, True, True) if model_in_GPU: return matanyone_model.to("cpu") matanyone_in_GPU = False torch.cuda.empty_cache() model.samcontroler.sam_controler.model.to(arg_device) model_in_GPU = True load_in_progress = False def load_unload_models(state = None, selected = True, force = False): global model_loaded, load_in_progress global model global matanyone_model, matanyone_processor, matanyone_in_GPU , model_in_GPU, bfloat16_supported, loaded_matanyone_version, sam3_predictor, sam3_click_session if selected: selected_version = get_selected_matanyone_version(server_config_ref) if model_loaded and loaded_matanyone_version != selected_version: load_unload_models(state, False, True) if (not force) and any_GPU_process_running(state, "matanyone"): return if load_in_progress: while load_in_progress: time.sleep(1) return # print("Matanyone Tab Selected") if model_loaded or load_in_progress: return else: load_in_progress = True if selected_version == MATANYONE_SAM3: ensure_selected_matanyone_assets(server_config_ref) _ensure_sam3_predictor() model_loaded = True loaded_matanyone_version = selected_version matanyone_in_GPU = model_in_GPU = False load_in_progress = False return # args, defined in track_anything.py sam_checkpoint_url_dict = { 'vit_h': "https://dl.fbaipublicfiles.com/segment_anything/sam_vit_h_4b8939.pth", 'vit_l': "https://dl.fbaipublicfiles.com/segment_anything/sam_vit_l_0b3195.pth", 'vit_b': "https://dl.fbaipublicfiles.com/segment_anything/sam_vit_b_01ec64.pth" } # os.path.join('.') # sam_checkpoint = load_file_from_url(sam_checkpoint_url_dict[arg_sam_model_type], ".") sam_checkpoint = None ensure_selected_matanyone_assets(server_config_ref) transfer_stream = torch.cuda.Stream() with torch.cuda.stream(transfer_stream): # initialize sams major, minor = torch.cuda.get_device_capability(arg_device) if major < 8: bfloat16_supported = False else: bfloat16_supported = True model = MaskGenerator(sam_checkpoint, "cpu") model.samcontroler.sam_controler.model.to("cpu").to(torch.bfloat16).to(arg_device) model_in_GPU = True matanyone_model, loaded_matanyone_version, _ = load_selected_matanyone_model(server_config_ref) # pipe ={"mat" : matanyone_model, "sam" :model.samcontroler.sam_controler.model } # offload.profile(pipe) matanyone_model = matanyone_model.to("cpu").eval() matanyone_in_GPU = False matanyone_processor = InferenceCore(matanyone_model, cfg=matanyone_model.cfg) model_loaded = True load_in_progress = False else: # print("Matanyone Tab UnSelected") import gc # model.samcontroler.sam_controler.model.to("cpu") # matanyone_model.to("cpu") model = matanyone_model = matanyone_processor = None _sam3_close_click_session() if sam3_predictor is not None: sam3_predictor.shutdown() sam3_predictor = None from preprocessing.sam3.preprocessor import clear_sam3_text_encoder_cache clear_sam3_text_encoder_cache() sam3_click_session = None loaded_matanyone_version = None matanyone_in_GPU = model_in_GPU = False gc.collect() torch.cuda.empty_cache() model_loaded = False def get_vmc_event_handler(): return load_unload_models def ensure_selected_assets(server_config=None): return ensure_selected_matanyone_assets(server_config if server_config is not None else server_config_ref) def get_title_markdown(): return get_matanyone_title_html(server_config_ref) def export_image(state, image_output): ui_settings = get_current_model_settings(state) image_refs = ui_settings.get("image_refs", None) if image_refs == None: image_refs =[] image_refs.append( image_output) ui_settings["image_refs"] = image_refs gr.Info("Masked Image transferred to Current Image Generator") return time.time() def export_image_mask(state, image_input, image_mask): ui_settings = get_current_model_settings(state) ui_settings["image_guide"] = image_input ui_settings["image_mask"] = image_mask gr.Info("Input Image & Mask transferred to Current Image Generator") return time.time() def export_to_current_video_engine(state, foreground_video_output, alpha_video_output): ui_settings = get_current_model_settings(state) ui_settings["video_guide"] = foreground_video_output ui_settings["video_mask"] = alpha_video_output gr.Info("Original Video and Full Mask have been transferred") return time.time() def teleport_to_video_tab(tab_state, state): return PlugIn.goto_video_tab(state) def display(tabs, tab_state, state, refresh_form_trigger, server_config, get_current_model_settings_fn): #, vace_video_input, vace_image_input, vace_video_mask, vace_image_mask, vace_image_refs): # my_tab.select(fn=load_unload_models, inputs=[], outputs=[]) global image_output_codec, video_output_codec, get_current_model_settings, server_config_ref get_current_model_settings = get_current_model_settings_fn server_config_ref = server_config image_output_codec = server_config.get("image_output_codec", None) video_output_codec = server_config.get("video_output_codec", None) media_url = "https://github.com/pq-yang/MatAnyone/releases/download/media/" click_brush_js = """ () => { setTimeout(() => { const brushButton = document.querySelector('button[aria-label="Brush"]'); if (brushButton) { brushButton.click(); console.log('Brush button clicked'); } else { console.log('Brush button not found'); } }, 1000); } """ # download assets matanyone_title_md = gr.Markdown(get_title_markdown()) refresh_form_trigger.change(fn=get_title_markdown, inputs=[], outputs=[matanyone_title_md], show_progress="hidden") gr.Markdown("If you have some trouble creating the perfect mask, be aware of these tips:") gr.Markdown("- Using the Matanyone Settings you can also define Negative Point Prompts to remove parts of the current selection.") gr.Markdown("- Sometime it is very hard to fit everything you want in a single mask, it may be much easier to combine multiple independent sub Masks before producing the Matting : each sub Mask is created by selecting an area of an image and by clicking the Add Mask button. Sub masks can then be enabled / disabled in the Matanyone settings.") gr.Markdown("The Mask Generation time and the VRAM consumed are proportional to the number of frames and the resolution. So if relevant, you may reduce the number of frames in the Matanyone Settings. You will need for the moment to resize yourself the video if needed.") with gr.Column( visible=True): with gr.Row(): with gr.Accordion("Video Tutorial (click to expand)", open=False, elem_classes="custom-bg"): with gr.Row(): with gr.Column(): gr.Markdown("### Case 1: Single Target") gr.Video(value="preprocessing/matanyone/tutorial_single_target.mp4", elem_classes="video") with gr.Column(): gr.Markdown("### Case 2: Multiple Targets") gr.Video(value="preprocessing/matanyone/tutorial_multi_targets.mp4", elem_classes="video") with gr.Row(): new_dim= gr.Dropdown( choices=[ ("Original Dimensions", ""), ("1080p - Pixels Budgets", "1080p - Pixels Budget"), ("720p - Pixels Budgets", "720p - Pixels Budget"), ("480p - Pixels Budgets", "480p - Pixels Budget"), ("1080p - Outer Frame", "1080p - Outer Frame"), ("720p - Outer Frame", "720p - Outer Frame"), ("480p - Outer Frame", "480p - Outer Frame"), ], label = "Resize Input / Output", value = "" ) mask_type= gr.Dropdown( choices=_matanyone_mask_type_choices(), label = "Mask Type", value = "wangp" ) refresh_form_trigger.change(fn=_matanyone_mask_type_update, inputs=[mask_type], outputs=[mask_type], show_progress="hidden") matting_type = gr.Radio( choices=["Foreground", "Background"], value="Foreground", label="Type of Video Matting to Generate", scale=1) with gr.Row(visible=False): dummy = gr.Text() with gr.Tabs(): with gr.TabItem("Video"): click_state = gr.State([[],[]]) interactive_state = gr.State({ "inference_times": 0, "negative_click_times" : 0, "positive_click_times": 0, "mask_save": arg_mask_save, "multi_mask": { "mask_names": [], "masks": [], "sam3_prompts": [], }, "sam3_current_prompt": None, "track_end_number": None, } ) video_state = gr.State( { "user_name": "", "video_name": "", "origin_images": None, "painted_images": None, "masks": None, "inpaint_masks": None, "logits": None, "select_frame_number": 0, "fps": 16, "audio": "", } ) with gr.Column( visible=True): with gr.Row(): with gr.Accordion('MatAnyone Settings (click to expand)', open=False): with gr.Row(visible=not is_sam3_selected()) as video_morphology_row: erode_kernel_size = gr.Slider(label='Erode Kernel Size', minimum=0, maximum=30, step=1, value=10, info="Erosion on the added mask", interactive=True) dilate_kernel_size = gr.Slider(label='Dilate Kernel Size', minimum=0, maximum=30, step=1, value=10, info="Dilation on the added mask", interactive=True) with gr.Row(): image_selection_slider = gr.Slider(minimum=1, maximum=100, step=1, value=1, label="Start Frame", info="Choose the start frame for target assignment and video matting", visible=False) end_selection_slider = gr.Slider(minimum=1, maximum=300, step=1, value=81, label="Last Frame to Process", info="Last Frame to Process", visible=False) track_pause_number_slider = gr.Slider(minimum=1, maximum=100, step=1, value=1, label="End frame", visible=False) with gr.Row(): point_prompt = gr.Radio( choices=["Positive", "Negative"], value="Positive", label="Point Prompt", info="Click to add positive or negative point for target mask", interactive=True, visible=False, min_width=100, scale=1) mask_dropdown = gr.Dropdown(multiselect=True, value=[], label="Mask Selection", info="Choose 1~all mask(s) added in Step 2", visible=False, scale=2, allow_custom_value=True) # input video with gr.Row(equal_height=True): with gr.Column(scale=2): gr.Markdown("## Step1: Upload video") with gr.Column(scale=2): step2_title = gr.Markdown("## Step2: Add masks (Several clicks then **`Add Mask`** one by one)", visible=False) with gr.Row(equal_height=True): with gr.Column(scale=2): video_input = gr.Video(label="Input Video", elem_classes="video") extract_frames_button = gr.Button(value="Load Video", interactive=True, elem_classes="new_button") with gr.Column(scale=2): video_info = gr.Textbox(label="Video Info", visible=False) template_frame = gr.Image(label="Start Frame", type="pil",interactive=True, elem_id="template_frame", visible=False, elem_classes="image") with gr.Row(): clear_button_click = gr.Button(value="Clear Clicks", interactive=True, visible=False, min_width=100) add_mask_button = gr.Button(value="Add Mask", interactive=True, visible=False, min_width=100) remove_mask_button = gr.Button(value="Remove Mask", interactive=True, visible=False, min_width=100) # no use matting_button = gr.Button(value="Generate Video Matting", interactive=True, visible=False, min_width=100) with gr.Row(visible=False, equal_height=True, elem_classes="sam3-keyword-row") as sam3_keyword_row: sam3_keyword_text = gr.Textbox(label="Keyword", show_label=False, placeholder="keyword", lines=1, min_width=120, scale=1) sam3_keyword_button = gr.Button(value="Add Mask based on Keyword", interactive=True, min_width=260, scale=1, elem_classes="sam3-keyword-button") with gr.Row(): gr.Markdown("") # output video with gr.Column() as output_row: #equal_height=True with gr.Row(): with gr.Column(scale=2): foreground_video_output = gr.Video(label="Original Video Input", visible=False, elem_classes="video") foreground_output_button = gr.Button(value="Black & White Video Output", visible=False, elem_classes="new_button") with gr.Column(scale=2): alpha_video_output = gr.Video(label="Mask Video Output", visible=False, elem_classes="video") export_image_mask_btn = gr.Button(value=_matanyone_mask_output_button_label(), visible=False, elem_classes="new_button") with gr.Row(): with gr.Row(visible= False): export_to_vace_video_14B_btn = gr.Button("Export to current Video Input Video For Inpainting", visible= False) with gr.Row(visible= True): export_to_current_video_engine_btn = gr.Button("Export to Control Video Input and Video Mask Input", visible= False) export_to_current_video_engine_btn.click( fn=export_to_current_video_engine, inputs= [state, foreground_video_output, alpha_video_output], outputs= [refresh_form_trigger]).then( #video_prompt_video_guide_trigger, fn=teleport_to_video_tab, inputs= [tab_state, state], outputs= [tabs]) refresh_form_trigger.change(fn=_matanyone_mask_output_button_update, inputs=[], outputs=[export_image_mask_btn], show_progress="hidden") # first step: get the video information extract_frames_button.click( fn=get_frames_from_video, inputs=[ state, video_input, video_state, new_dim ], outputs=[video_state, extract_frames_button, video_info, template_frame, image_selection_slider, end_selection_slider, track_pause_number_slider, point_prompt, dummy, clear_button_click, add_mask_button, matting_button, template_frame, foreground_video_output, alpha_video_output, foreground_output_button, export_image_mask_btn, mask_dropdown, step2_title] ).then(fn=lambda: gr.update(visible=is_sam3_selected()), inputs=[], outputs=[sam3_keyword_row], show_progress="hidden") # second step: select images from slider image_selection_slider.release(fn=select_video_template, inputs=[image_selection_slider, video_state, interactive_state], outputs=[template_frame, video_state, interactive_state], api_name="select_image") track_pause_number_slider.release(fn=get_end_number, inputs=[track_pause_number_slider, video_state, interactive_state], outputs=[template_frame, interactive_state], api_name="end_image") # click select image to get mask using sam template_frame.select( fn=sam_refine, inputs=[state, video_state, point_prompt, click_state, interactive_state], outputs=[template_frame, video_state, interactive_state] ) # add different mask add_mask_button.click( fn=add_multi_mask, inputs=[video_state, interactive_state, mask_dropdown], outputs=[interactive_state, mask_dropdown, template_frame, click_state] ) remove_mask_button.click( fn=remove_multi_mask, inputs=[interactive_state, mask_dropdown], outputs=[interactive_state, mask_dropdown] ) # video matting matting_button.click( fn=show_outputs, inputs=[], outputs=[foreground_video_output, alpha_video_output]).then( fn=video_matting, inputs=[state, video_state, mask_type, video_input, end_selection_slider, matting_type, new_dim, interactive_state, mask_dropdown, erode_kernel_size, dilate_kernel_size], outputs=[foreground_video_output, alpha_video_output,foreground_video_output, alpha_video_output, export_to_vace_video_14B_btn, export_to_current_video_engine_btn] ) # click to get mask mask_dropdown.change( fn=show_mask, inputs=[video_state, interactive_state, mask_dropdown], outputs=[template_frame] ) refresh_form_trigger.change(fn=lambda video_state: gr.update(visible=is_sam3_selected() and video_state.get("origin_images") is not None), inputs=[video_state], outputs=[sam3_keyword_row], show_progress="hidden") sam3_keyword_button.click( fn=add_sam3_keyword_masks, inputs=[state, video_state, interactive_state, sam3_keyword_text, mask_dropdown], outputs=[interactive_state, mask_dropdown, template_frame] ) # clear input video_input.change( fn=restart, inputs=[], outputs=[ video_state, interactive_state, click_state, extract_frames_button, dummy, foreground_video_output, dummy, alpha_video_output, template_frame, image_selection_slider, end_selection_slider, track_pause_number_slider,point_prompt, export_to_vace_video_14B_btn, export_to_current_video_engine_btn, dummy, clear_button_click, add_mask_button, matting_button, template_frame, foreground_video_output, alpha_video_output, remove_mask_button, foreground_output_button, export_image_mask_btn, mask_dropdown, video_info, step2_title ], queue=False, show_progress=False).then(fn=lambda: gr.update(visible=False), inputs=[], outputs=[sam3_keyword_row], show_progress="hidden") video_input.clear( fn=restart, inputs=[], outputs=[ video_state, interactive_state, click_state, extract_frames_button, dummy, foreground_video_output, dummy, alpha_video_output, template_frame, image_selection_slider , end_selection_slider, track_pause_number_slider,point_prompt, export_to_vace_video_14B_btn, export_to_current_video_engine_btn, dummy, clear_button_click, add_mask_button, matting_button, template_frame, foreground_video_output, alpha_video_output, remove_mask_button, foreground_output_button, export_image_mask_btn, mask_dropdown, video_info, step2_title ], queue=False, show_progress=False).then(fn=lambda: gr.update(visible=False), inputs=[], outputs=[sam3_keyword_row], show_progress="hidden") # points clear clear_button_click.click( fn = clear_click, inputs = [video_state, click_state,], outputs = [template_frame,click_state], ) with gr.TabItem("Image"): click_state = gr.State([[],[]]) interactive_state = gr.State({ "inference_times": 0, "negative_click_times" : 0, "positive_click_times": 0, "mask_save": False, "multi_mask": { "mask_names": [], "masks": [], "sam3_prompts": [], }, "sam3_current_prompt": None, "track_end_number": None, } ) image_state = gr.State( { "user_name": "", "image_name": "", "origin_images": None, "painted_images": None, "masks": None, "inpaint_masks": None, "logits": None, "select_frame_number": 0, "fps": 30 } ) with gr.Group(elem_classes="gr-monochrome-group", visible=True): with gr.Row(): with gr.Accordion('MatAnyone Settings (click to expand)', open=False): with gr.Row(visible=not is_sam3_selected()) as image_morphology_row: erode_kernel_size = gr.Slider(label='Erode Kernel Size', minimum=0, maximum=30, step=1, value=10, info="Erosion on the added mask", interactive=True) dilate_kernel_size = gr.Slider(label='Dilate Kernel Size', minimum=0, maximum=30, step=1, value=10, info="Dilation on the added mask", interactive=True) with gr.Row(): image_selection_slider = gr.Slider(minimum=1, maximum=100, step=1, value=1, label="Num of Refinement Iterations", info="More iterations → More details & More time", visible=False) track_pause_number_slider = gr.Slider(minimum=1, maximum=100, step=1, value=1, label="Track end frame", visible=False) with gr.Row(): point_prompt = gr.Radio( choices=["Positive", "Negative"], value="Positive", label="Point Prompt", info="Click to add positive or negative point for target mask", interactive=True, visible=False, min_width=100, scale=1) mask_dropdown = gr.Dropdown(multiselect=True, value=[], label="Mask Selection", info="Choose 1~all mask(s) added in Step 2", visible=False) with gr.Column(): # input image with gr.Row(equal_height=True): with gr.Column(scale=2): gr.Markdown("## Step1: Upload image") with gr.Column(scale=2): step2_title = gr.Markdown("## Step2: Add masks (Several clicks then **`Add Mask`** one by one)", visible=False) with gr.Row(equal_height=True): with gr.Column(scale=2): image_input = gr.Image(label="Input Image", elem_classes="image") extract_frames_button = gr.Button(value="Load Image", interactive=True, elem_classes="new_button") with gr.Column(scale=2): image_info = gr.Textbox(label="Image Info", visible=False) template_frame = gr.Image(type="pil", label="Start Frame", interactive=True, elem_id="template_frame", visible=False, elem_classes="image") with gr.Row(equal_height=True, elem_classes="mask_button_group"): clear_button_click = gr.Button(value="Clear Clicks", interactive=True, visible=False, elem_classes="new_button", min_width=100) add_mask_button = gr.Button(value="Add Mask", interactive=True, visible=False, elem_classes="new_button", min_width=100) remove_mask_button = gr.Button(value="Remove Mask", interactive=True, visible=False, elem_classes="new_button", min_width=100) matting_button = gr.Button(value="Image Matting", interactive=True, visible=False, elem_classes="green_button", min_width=100) with gr.Row(visible=False, equal_height=True, elem_classes="sam3-keyword-row") as image_sam3_keyword_row: image_sam3_keyword_text = gr.Textbox(label="Keyword", show_label=False, placeholder="keyword", lines=1, min_width=120, scale=1) image_sam3_keyword_button = gr.Button(value="Add Mask based on Keyword", interactive=True, min_width=260, scale=1, elem_classes="sam3-keyword-button") # output image with gr.Tabs(visible = False) as image_tabs: with gr.TabItem("Control Image & Mask", visible = False) as image_first_tab: with gr.Row(equal_height=True): control_image_output = gr.Image(type="pil", label="Control Image", visible=False, elem_classes="image") alpha_image_output = gr.Image(type="pil", label="Mask", visible=False, elem_classes="image") with gr.Row(): export_image_mask_btn = gr.Button(value="Set to Control Image & Mask", visible=False, elem_classes="new_button") with gr.TabItem("Reference Image", visible = False) as image_second_tab: with gr.Row(): foreground_image_output = gr.Image(type="pil", label="Foreground Output", visible=False, elem_classes="image") with gr.Row(): export_image_btn = gr.Button(value="Add to current Reference Images", visible=False, elem_classes="new_button") with gr.Row(equal_height=True): bbox_info = gr.Text(label ="Mask BBox Info (Left:Top:Right:Bottom)", visible = False, interactive= False) export_image_btn.click( fn=export_image, inputs= [state, foreground_image_output], outputs= [refresh_form_trigger]).then( #video_prompt_video_guide_trigger, fn=teleport_to_video_tab, inputs= [tab_state, state], outputs= [tabs]) export_image_mask_btn.click( fn=export_image_mask, inputs= [state, control_image_output, alpha_image_output], outputs= [refresh_form_trigger]).then( #video_prompt_video_guide_trigger, fn=teleport_to_video_tab, inputs= [tab_state, state], outputs= [tabs]).then(fn=None, inputs=None, outputs=None, js=click_brush_js) # first step: get the image information extract_frames_button.click( fn=get_frames_from_image, inputs=[ state, image_input, image_state, new_dim ], outputs=[image_state, extract_frames_button, image_info, template_frame, image_selection_slider, track_pause_number_slider,point_prompt, clear_button_click, add_mask_button, matting_button, template_frame, foreground_image_output, alpha_image_output, control_image_output, image_tabs, bbox_info, export_image_btn, export_image_mask_btn, mask_dropdown, step2_title] ).then(fn=lambda: gr.update(visible=is_sam3_selected()), inputs=[], outputs=[image_sam3_keyword_row], show_progress="hidden") # points clear clear_button_click.click( fn = clear_click, inputs = [image_state, click_state,], outputs = [template_frame,click_state], ) # second step: select images from slider image_selection_slider.release(fn=select_image_template, inputs=[image_selection_slider, image_state, interactive_state], outputs=[template_frame, image_state, interactive_state], api_name="select_image") track_pause_number_slider.release(fn=get_end_number, inputs=[track_pause_number_slider, image_state, interactive_state], outputs=[template_frame, interactive_state], api_name="end_image") # click select image to get mask using sam template_frame.select( fn=sam_refine, inputs=[state, image_state, point_prompt, click_state, interactive_state], outputs=[template_frame, image_state, interactive_state] ) # add different mask add_mask_button.click( fn=add_multi_mask, inputs=[image_state, interactive_state, mask_dropdown], outputs=[interactive_state, mask_dropdown, template_frame, click_state] ) remove_mask_button.click( fn=remove_multi_mask, inputs=[interactive_state, mask_dropdown], outputs=[interactive_state, mask_dropdown] ) image_sam3_keyword_button.click( fn=add_sam3_keyword_masks, inputs=[state, image_state, interactive_state, image_sam3_keyword_text, mask_dropdown], outputs=[interactive_state, mask_dropdown, template_frame] ) # image matting matting_button.click( fn=image_matting, inputs=[state, image_state, interactive_state, mask_type, matting_type, new_dim, mask_dropdown, erode_kernel_size, dilate_kernel_size, image_selection_slider], outputs=[image_tabs, image_first_tab, image_second_tab, foreground_image_output, control_image_output, alpha_image_output, foreground_image_output, control_image_output, alpha_image_output, bbox_info, export_image_btn, export_image_mask_btn] ) nada = gr.State({}) # clear input gr.on( triggers=[image_input.clear], #image_input.change, fn=restart, inputs=[], outputs=[ image_state, interactive_state, click_state, extract_frames_button, image_tabs, foreground_image_output, control_image_output, alpha_image_output, template_frame, image_selection_slider, image_selection_slider, track_pause_number_slider,point_prompt, export_image_btn, export_image_mask_btn, bbox_info, clear_button_click, add_mask_button, matting_button, template_frame, foreground_image_output, alpha_image_output, remove_mask_button, export_image_btn, export_image_mask_btn, mask_dropdown, nada, step2_title ], queue=False, show_progress=False).then(fn=lambda: gr.update(visible=False), inputs=[], outputs=[image_sam3_keyword_row], show_progress="hidden") refresh_form_trigger.change( fn=lambda image_state: gr.update(visible=is_sam3_selected() and image_state.get("origin_images") is not None), inputs=[image_state], outputs=[image_sam3_keyword_row], show_progress="hidden", ) refresh_form_trigger.change( fn=lambda: [_matanyone_morphology_visibility(), _matanyone_morphology_visibility()], inputs=[], outputs=[video_morphology_row, image_morphology_row], show_progress="hidden", )