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| import subprocess | |
| # Define the command to be executed | |
| command = ["python", "setup.py", "build_ext", "--inplace"] | |
| # Execute the command | |
| result = subprocess.run(command, capture_output=True, text=True) | |
| # Print the output and error (if any) | |
| print("Output:\n", result.stdout) | |
| print("Errors:\n", result.stderr) | |
| # Check if the command was successful | |
| if result.returncode == 0: | |
| print("Command executed successfully.") | |
| else: | |
| print("Command failed with return code:", result.returncode) | |
| import gradio as gr | |
| from datetime import datetime | |
| import os | |
| os.environ["TORCH_CUDNN_SDPA_ENABLED"] = "1" | |
| import torch | |
| import numpy as np | |
| import cv2 | |
| import matplotlib.pyplot as plt | |
| from PIL import Image, ImageFilter | |
| from sam2.build_sam import build_sam2_video_predictor | |
| from moviepy.editor import ImageSequenceClip | |
| def get_video_fps(video_path): | |
| # Open the video file | |
| cap = cv2.VideoCapture(video_path) | |
| if not cap.isOpened(): | |
| print("Error: Could not open video.") | |
| return None | |
| # Get the FPS of the video | |
| fps = cap.get(cv2.CAP_PROP_FPS) | |
| return fps | |
| def preprocess_image(image): | |
| return image, gr.State([]), gr.State([]), image, gr.State() | |
| def preprocess_video_in(video_path): | |
| # Generate a unique ID based on the current date and time | |
| unique_id = datetime.now().strftime('%Y%m%d%H%M%S') | |
| output_dir = f'frames_{unique_id}' | |
| # Create the output directory | |
| os.makedirs(output_dir, exist_ok=True) | |
| # Open the video file | |
| cap = cv2.VideoCapture(video_path) | |
| if not cap.isOpened(): | |
| print("Error: Could not open video.") | |
| return None | |
| frame_number = 0 | |
| first_frame = None | |
| while True: | |
| ret, frame = cap.read() | |
| if not ret: | |
| break | |
| # Format the frame filename as '00000.jpg' | |
| frame_filename = os.path.join(output_dir, f'{frame_number:05d}.jpg') | |
| # Save the frame as a JPEG file | |
| cv2.imwrite(frame_filename, frame) | |
| # Store the first frame | |
| if frame_number == 0: | |
| first_frame = frame_filename | |
| frame_number += 1 | |
| # Release the video capture object | |
| cap.release() | |
| # 'image' is the first frame extracted from video_in | |
| return first_frame, gr.State([]), gr.State([]), first_frame, first_frame, output_dir, None, None, gr.update(open=False) | |
| def get_point(point_type, tracking_points, trackings_input_label, first_frame_path, evt: gr.SelectData): | |
| print(f"You selected {evt.value} at {evt.index} from {evt.target}") | |
| tracking_points.value.append(evt.index) | |
| print(f"TRACKING POINT: {tracking_points.value}") | |
| if point_type == "include": | |
| trackings_input_label.value.append(1) | |
| elif point_type == "exclude": | |
| trackings_input_label.value.append(0) | |
| print(f"TRACKING INPUT LABEL: {trackings_input_label.value}") | |
| # Open the image and get its dimensions | |
| transparent_background = Image.open(first_frame_path).convert('RGBA') | |
| w, h = transparent_background.size | |
| # Define the circle radius as a fraction of the smaller dimension | |
| fraction = 0.02 # You can adjust this value as needed | |
| radius = int(fraction * min(w, h)) | |
| # Create a transparent layer to draw on | |
| transparent_layer = np.zeros((h, w, 4), dtype=np.uint8) | |
| for index, track in enumerate(tracking_points.value): | |
| if trackings_input_label.value[index] == 1: | |
| cv2.circle(transparent_layer, track, radius, (0, 255, 0, 255), -1) | |
| else: | |
| cv2.circle(transparent_layer, track, radius, (255, 0, 0, 255), -1) | |
| # Convert the transparent layer back to an image | |
| transparent_layer = Image.fromarray(transparent_layer, 'RGBA') | |
| selected_point_map = Image.alpha_composite(transparent_background, transparent_layer) | |
| return tracking_points, trackings_input_label, selected_point_map | |
| # use bfloat16 for the entire notebook | |
| torch.autocast(device_type="cuda", dtype=torch.bfloat16).__enter__() | |
| if torch.cuda.get_device_properties(0).major >= 8: | |
| # turn on tfloat32 for Ampere GPUs (https://pytorch.org/docs/stable/notes/cuda.html#tensorfloat-32-tf32-on-ampere-devices) | |
| torch.backends.cuda.matmul.allow_tf32 = True | |
| torch.backends.cudnn.allow_tf32 = True | |
| def show_mask(mask, ax, obj_id=None, random_color=False): | |
| if random_color: | |
| color = np.concatenate([np.random.random(3), np.array([0.6])], axis=0) | |
| else: | |
| cmap = plt.get_cmap("tab10") | |
| cmap_idx = 0 if obj_id is None else obj_id | |
| color = np.array([*cmap(cmap_idx)[:3], 0.6]) | |
| h, w = mask.shape[-2:] | |
| mask_image = mask.reshape(h, w, 1) * color.reshape(1, 1, -1) | |
| ax.imshow(mask_image) | |
| def show_points(coords, labels, ax, marker_size=200): | |
| pos_points = coords[labels==1] | |
| neg_points = coords[labels==0] | |
| ax.scatter(pos_points[:, 0], pos_points[:, 1], color='green', marker='*', s=marker_size, edgecolor='white', linewidth=1.25) | |
| ax.scatter(neg_points[:, 0], neg_points[:, 1], color='red', marker='*', s=marker_size, edgecolor='white', linewidth=1.25) | |
| def show_box(box, ax): | |
| x0, y0 = box[0], box[1] | |
| w, h = box[2] - box[0], box[3] - box[1] | |
| ax.add_patch(plt.Rectangle((x0, y0), w, h, edgecolor='green', facecolor=(0, 0, 0, 0), lw=2)) | |
| def show_masks(image, masks, scores, point_coords=None, box_coords=None, input_labels=None, borders=True): | |
| combined_images = [] # List to store filenames of images with masks overlaid | |
| mask_images = [] # List to store filenames of separate mask images | |
| for i, (mask, score) in enumerate(zip(masks, scores)): | |
| # ---- Original Image with Mask Overlaid ---- | |
| plt.figure(figsize=(10, 10)) | |
| plt.imshow(image) | |
| show_mask(mask, plt.gca(), borders=borders) # Draw the mask with borders | |
| """ | |
| if point_coords is not None: | |
| assert input_labels is not None | |
| show_points(point_coords, input_labels, plt.gca()) | |
| """ | |
| if box_coords is not None: | |
| show_box(box_coords, plt.gca()) | |
| if len(scores) > 1: | |
| plt.title(f"Mask {i+1}, Score: {score:.3f}", fontsize=18) | |
| plt.axis('off') | |
| # Save the figure as a JPG file | |
| combined_filename = f"combined_image_{i+1}.jpg" | |
| plt.savefig(combined_filename, format='jpg', bbox_inches='tight') | |
| combined_images.append(combined_filename) | |
| plt.close() # Close the figure to free up memory | |
| # ---- Separate Mask Image (White Mask on Black Background) ---- | |
| # Create a black image | |
| mask_image = np.zeros_like(image, dtype=np.uint8) | |
| # The mask is a binary array where the masked area is 1, else 0. | |
| # Convert the mask to a white color in the mask_image | |
| mask_layer = (mask > 0).astype(np.uint8) * 255 | |
| for c in range(3): # Assuming RGB, repeat mask for all channels | |
| mask_image[:, :, c] = mask_layer | |
| # Save the mask image | |
| mask_filename = f"mask_image_{i+1}.png" | |
| Image.fromarray(mask_image).save(mask_filename) | |
| mask_images.append(mask_filename) | |
| plt.close() # Close the figure to free up memory | |
| return combined_images, mask_images | |
| def load_model(checkpoint): | |
| # Load model accordingly to user's choice | |
| if checkpoint == "tiny": | |
| sam2_checkpoint = "./checkpoints/sam2_hiera_tiny.pt" | |
| model_cfg = "sam2_hiera_t.yaml" | |
| return sam2_checkpoint, model_cfg | |
| elif checkpoint == "samll": | |
| sam2_checkpoint = "./checkpoints/sam2_hiera_small.pt" | |
| model_cfg = "sam2_hiera_s.yaml" | |
| return sam2_checkpoint, model_cfg | |
| elif checkpoint == "base-plus": | |
| sam2_checkpoint = "./checkpoints/sam2_hiera_base_plus.pt" | |
| model_cfg = "sam2_hiera_b+.yaml" | |
| return sam2_checkpoint, model_cfg | |
| elif checkpoint == "large": | |
| sam2_checkpoint = "./checkpoints/sam2_hiera_large.pt" | |
| model_cfg = "sam2_hiera_l.yaml" | |
| return sam2_checkpoint, model_cfg | |
| def sam_process(input_first_frame_image, checkpoint, tracking_points, trackings_input_label, video_frames_dir, progress=gr.Progress(track_tqdm=True)): | |
| # 1. We need to preprocess the video and store frames in the right directory | |
| # — Penser à utiliser un ID unique pour le dossier | |
| sam2_checkpoint, model_cfg = load_model(checkpoint) | |
| predictor = build_sam2_video_predictor(model_cfg, sam2_checkpoint) | |
| # `video_dir` a directory of JPEG frames with filenames like `<frame_index>.jpg` | |
| print(f"STATE FRAME OUTPUT DIRECTORY: {video_frames_dir}") | |
| video_dir = video_frames_dir | |
| # scan all the JPEG frame names in this directory | |
| frame_names = [ | |
| p for p in os.listdir(video_dir) | |
| if os.path.splitext(p)[-1] in [".jpg", ".jpeg", ".JPG", ".JPEG"] | |
| ] | |
| frame_names.sort(key=lambda p: int(os.path.splitext(p)[0])) | |
| inference_state = predictor.init_state(video_path=video_dir) | |
| # segment and track one object | |
| # predictor.reset_state(inference_state) # if any previous tracking, reset | |
| # Add new point | |
| ann_frame_idx = 0 # the frame index we interact with | |
| ann_obj_id = 1 # give a unique id to each object we interact with (it can be any integers) | |
| # Let's add a positive click at (x, y) = (210, 350) to get started | |
| points = np.array(tracking_points.value, dtype=np.float32) | |
| # for labels, `1` means positive click and `0` means negative click | |
| labels = np.array(trackings_input_label.value, np.int32) | |
| _, out_obj_ids, out_mask_logits = predictor.add_new_points( | |
| inference_state=inference_state, | |
| frame_idx=ann_frame_idx, | |
| obj_id=ann_obj_id, | |
| points=points, | |
| labels=labels, | |
| ) | |
| # Create the plot | |
| plt.figure(figsize=(12, 8)) | |
| plt.title(f"frame {ann_frame_idx}") | |
| plt.imshow(Image.open(os.path.join(video_dir, frame_names[ann_frame_idx]))) | |
| show_points(points, labels, plt.gca()) | |
| show_mask((out_mask_logits[0] > 0.0).cpu().numpy(), plt.gca(), obj_id=out_obj_ids[0]) | |
| # Save the plot as a JPG file | |
| first_frame_output_filename = "output_first_frame.jpg" | |
| plt.savefig(first_frame_output_filename, format='jpg') | |
| plt.close() | |
| return "output_first_frame.jpg", frame_names, inference_state | |
| def propagate_to_all(video_in, checkpoint, stored_inference_state, stored_frame_names, video_frames_dir, vis_frame_type, progress=gr.Progress(track_tqdm=True)): | |
| #### PROPAGATION #### | |
| sam2_checkpoint, model_cfg = load_model(checkpoint) | |
| predictor = build_sam2_video_predictor(model_cfg, sam2_checkpoint) | |
| inference_state = stored_inference_state | |
| frame_names = stored_frame_names | |
| video_dir = video_frames_dir | |
| # Define a directory to save the JPEG images | |
| frames_output_dir = "frames_output_images" | |
| os.makedirs(frames_output_dir, exist_ok=True) | |
| # Initialize a list to store file paths of saved images | |
| jpeg_images = [] | |
| # run propagation throughout the video and collect the results in a dict | |
| video_segments = {} # video_segments contains the per-frame segmentation results | |
| for out_frame_idx, out_obj_ids, out_mask_logits in predictor.propagate_in_video(inference_state): | |
| video_segments[out_frame_idx] = { | |
| out_obj_id: (out_mask_logits[i] > 0.0).cpu().numpy() | |
| for i, out_obj_id in enumerate(out_obj_ids) | |
| } | |
| # render the segmentation results every few frames | |
| if vis_frame_type == "check": | |
| vis_frame_stride = 15 | |
| elif vis_frame_type == "render": | |
| vis_frame_stride = 1 | |
| plt.close("all") | |
| for out_frame_idx in range(0, len(frame_names), vis_frame_stride): | |
| plt.figure(figsize=(6, 4)) | |
| plt.title(f"frame {out_frame_idx}") | |
| plt.imshow(Image.open(os.path.join(video_dir, frame_names[out_frame_idx]))) | |
| for out_obj_id, out_mask in video_segments[out_frame_idx].items(): | |
| show_mask(out_mask, plt.gca(), obj_id=out_obj_id) | |
| # Define the output filename and save the figure as a JPEG file | |
| output_filename = os.path.join(frames_output_dir, f"frame_{out_frame_idx}.jpg") | |
| plt.savefig(output_filename, format='jpg') | |
| # Close the plot | |
| plt.close() | |
| # Append the file path to the list | |
| jpeg_images.append(output_filename) | |
| if vis_frame_type == "check": | |
| return gr.update(value=jpeg_images), gr.update(value=None) | |
| elif vis_frame_type == "render": | |
| # Create a video clip from the image sequence | |
| original_fps = get_video_fps(video_in) | |
| fps = original_fps # Frames per second | |
| total_frames = len(jpeg_images) | |
| clip = ImageSequenceClip(jpeg_images, fps=fps) | |
| # Write the result to a file | |
| final_vid_output_path = "output_video.mp4" | |
| # Write the result to a file | |
| clip.write_videofile( | |
| final_vid_output_path, | |
| codec='libx264' | |
| ) | |
| return gr.update(value=None), gr.update(value=final_vid_output_path) | |
| def update_ui(vis_frame_type): | |
| if vis_frame_type == "check": | |
| return gr.update(visible=True), gr.update(visible=False) | |
| elif vis_frame_type == "render": | |
| return gr.update(visible=False), gr.update(visible=True) | |
| with gr.Blocks() as demo: | |
| first_frame_path = gr.State() | |
| tracking_points = gr.State([]) | |
| trackings_input_label = gr.State([]) | |
| video_frames_dir = gr.State() | |
| stored_inference_state = gr.State() | |
| stored_frame_names = gr.State() | |
| with gr.Column(): | |
| gr.Markdown("# SAM2 Video Predictor") | |
| gr.Markdown("This is a simple demo for video segmentation with SAM2.") | |
| gr.Markdown("""Instructions: | |
| 1. Upload your video | |
| 2. With 'include' point type selected, Click on the object to mask on first frame | |
| 3. Switch to 'exclude' point type if you want to specify an area to avoid | |
| 4. Submit ! | |
| """) | |
| with gr.Row(): | |
| with gr.Column(): | |
| with gr.Row(): | |
| point_type = gr.Radio(label="point type", choices=["include", "exclude"], value="include", scale=2) | |
| clear_points_btn = gr.Button("Clear Points", scale=1) | |
| input_first_frame_image = gr.Image(label="input image", interactive=False, type="filepath", visible=False) | |
| points_map = gr.Image( | |
| label="Point n Click map", | |
| type="filepath", | |
| interactive=False | |
| ) | |
| with gr.Row(): | |
| checkpoint = gr.Dropdown(label="Checkpoint", choices=["tiny", "small", "base-plus", "large"], value="tiny") | |
| submit_btn = gr.Button("Submit", size="lg") | |
| with gr.Accordion("Your video IN", open=True) as video_in_drawer: | |
| video_in = gr.Video(label="Video IN") | |
| with gr.Column(): | |
| output_result = gr.Image() | |
| with gr.Row(): | |
| vis_frame_type = gr.Radio(label="Propagation level", choices=["check", "render"], value="check", scale=2) | |
| propagate_btn = gr.Button("Propagate", scale=1) | |
| output_propagated = gr.Gallery(label="Propagated Mask samples gallery", visible=False) | |
| output_video = gr.Video(visible=False) | |
| # output_result_mask = gr.Image() | |
| clear_points_btn.click( | |
| fn = preprocess_image, | |
| inputs = input_first_frame_image, | |
| outputs = [first_frame_path, tracking_points, trackings_input_label, points_map, stored_inference_state], | |
| queue=False | |
| ) | |
| video_in.upload( | |
| fn = preprocess_video_in, | |
| inputs = [video_in], | |
| outputs = [first_frame_path, tracking_points, trackings_input_label, input_first_frame_image, points_map, video_frames_dir, stored_inference_state, stored_frame_names, video_in_drawer], | |
| queue = False | |
| ) | |
| points_map.select( | |
| fn = get_point, | |
| inputs = [point_type, tracking_points, trackings_input_label, first_frame_path], | |
| outputs = [tracking_points, trackings_input_label, points_map], | |
| queue = False | |
| ) | |
| submit_btn.click( | |
| fn = sam_process, | |
| inputs = [input_first_frame_image, checkpoint, tracking_points, trackings_input_label, video_frames_dir], | |
| outputs = [output_result, stored_frame_names, stored_inference_state] | |
| ) | |
| propagate_btn.click( | |
| fn = update_ui, | |
| inputs = [vis_frame_type], | |
| outputs = [output_propagated, output_video], | |
| queue=False | |
| ).then( | |
| fn = propagate_to_all, | |
| inputs = [video_in, checkpoint, stored_inference_state, stored_frame_names, video_frames_dir, vis_frame_type], | |
| outputs = [output_propagated, output_video] | |
| ) | |
| demo.launch(show_api=False, show_error=True) |