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| import gradio as gr | |
| import spaces | |
| from gradio_litmodel3d import LitModel3D | |
| import os | |
| import shutil | |
| os.environ['SPCONV_ALGO'] = 'native' | |
| from typing import * | |
| import torch | |
| import numpy as np | |
| import imageio | |
| from easydict import EasyDict as edict | |
| from PIL import Image | |
| from trellis.pipelines import TrellisVGGTTo3DPipeline | |
| from trellis.representations import Gaussian, MeshExtractResult | |
| from trellis.utils import render_utils, postprocessing_utils | |
| from wheels.vggt.vggt.utils.load_fn import load_and_preprocess_images | |
| from wheels.vggt.vggt.utils.pose_enc import pose_encoding_to_extri_intri | |
| import open3d as o3d | |
| from torchvision import transforms as TF | |
| from PIL import Image | |
| import sys | |
| sys.path.append("wheels") | |
| from wheels.mast3r.model import AsymmetricMASt3R | |
| from wheels.mast3r.fast_nn import fast_reciprocal_NNs | |
| from wheels.dust3r.dust3r.inference import inference | |
| from wheels.dust3r.dust3r.utils.image import load_images_new | |
| from trellis.utils.general_utils import * | |
| import copy | |
| MAX_SEED = np.iinfo(np.int32).max | |
| TMP_DIR = os.path.join(os.path.dirname(os.path.abspath(__file__)), 'tmp') | |
| # TMP_DIR = "tmp/Trellis-demo" | |
| # os.environ['GRADIO_TEMP_DIR'] = 'tmp' | |
| os.makedirs(TMP_DIR, exist_ok=True) | |
| device = "cuda" if torch.cuda.is_available() else "cpu" | |
| def start_session(req: gr.Request): | |
| user_dir = os.path.join(TMP_DIR, str(req.session_hash)) | |
| os.makedirs(user_dir, exist_ok=True) | |
| def end_session(req: gr.Request): | |
| user_dir = os.path.join(TMP_DIR, str(req.session_hash)) | |
| shutil.rmtree(user_dir) | |
| def preprocess_image(image: Image.Image) -> Image.Image: | |
| """ | |
| Preprocess the input image for 3D generation. | |
| This function is called when a user uploads an image or selects an example. | |
| It applies background removal and other preprocessing steps necessary for | |
| optimal 3D model generation. | |
| Args: | |
| image (Image.Image): The input image from the user | |
| Returns: | |
| Image.Image: The preprocessed image ready for 3D generation | |
| """ | |
| processed_image = pipeline.preprocess_image(image) | |
| return processed_image | |
| def preprocess_videos(video: str) -> List[Tuple[Image.Image, str]]: | |
| """ | |
| Preprocess the input video for multi-image 3D generation. | |
| This function is called when a user uploads a video. | |
| It extracts frames from the video and processes each frame to prepare them | |
| for the multi-image 3D generation pipeline. | |
| Args: | |
| video (str): The path to the input video file | |
| Returns: | |
| List[Tuple[Image.Image, str]]: The list of preprocessed images ready for 3D generation | |
| """ | |
| vid = imageio.get_reader(video, 'ffmpeg') | |
| fps = vid.get_meta_data()['fps'] | |
| images = [] | |
| for i, frame in enumerate(vid): | |
| if i % max(int(fps * 1), 1) == 0: | |
| img = Image.fromarray(frame) | |
| W, H = img.size | |
| img = img.resize((int(W / H * 512), 512)) | |
| images.append(img) | |
| vid.close() | |
| processed_images = [pipeline.preprocess_image(image) for image in images] | |
| return processed_images | |
| def preprocess_images(images: List[Tuple[Image.Image, str]]) -> List[Image.Image]: | |
| """ | |
| Preprocess a list of input images for multi-image 3D generation. | |
| This function is called when users upload multiple images in the gallery. | |
| It processes each image to prepare them for the multi-image 3D generation pipeline. | |
| Args: | |
| images (List[Tuple[Image.Image, str]]): The input images from the gallery | |
| Returns: | |
| List[Image.Image]: The preprocessed images ready for 3D generation | |
| """ | |
| images = [image[0] for image in images] | |
| processed_images = [pipeline.preprocess_image(image) for image in images] | |
| return processed_images | |
| def pack_state(gs: Gaussian, mesh: MeshExtractResult) -> dict: | |
| return { | |
| 'gaussian': { | |
| **gs.init_params, | |
| '_xyz': gs._xyz.cpu().numpy(), | |
| '_features_dc': gs._features_dc.cpu().numpy(), | |
| '_scaling': gs._scaling.cpu().numpy(), | |
| '_rotation': gs._rotation.cpu().numpy(), | |
| '_opacity': gs._opacity.cpu().numpy(), | |
| }, | |
| 'mesh': { | |
| 'vertices': mesh.vertices.cpu().numpy(), | |
| 'faces': mesh.faces.cpu().numpy(), | |
| }, | |
| } | |
| def unpack_state(state: dict) -> Tuple[Gaussian, edict, str]: | |
| gs = Gaussian( | |
| aabb=state['gaussian']['aabb'], | |
| sh_degree=state['gaussian']['sh_degree'], | |
| mininum_kernel_size=state['gaussian']['mininum_kernel_size'], | |
| scaling_bias=state['gaussian']['scaling_bias'], | |
| opacity_bias=state['gaussian']['opacity_bias'], | |
| scaling_activation=state['gaussian']['scaling_activation'], | |
| ) | |
| gs._xyz = torch.tensor(state['gaussian']['_xyz'], device='cuda') | |
| gs._features_dc = torch.tensor(state['gaussian']['_features_dc'], device='cuda') | |
| gs._scaling = torch.tensor(state['gaussian']['_scaling'], device='cuda') | |
| gs._rotation = torch.tensor(state['gaussian']['_rotation'], device='cuda') | |
| gs._opacity = torch.tensor(state['gaussian']['_opacity'], device='cuda') | |
| mesh = edict( | |
| vertices=torch.tensor(state['mesh']['vertices'], device='cuda'), | |
| faces=torch.tensor(state['mesh']['faces'], device='cuda'), | |
| ) | |
| return gs, mesh | |
| def get_seed(randomize_seed: bool, seed: int) -> int: | |
| """ | |
| Get the random seed for generation. | |
| This function is called by the generate button to determine whether to use | |
| a random seed or the user-specified seed value. | |
| Args: | |
| randomize_seed (bool): Whether to generate a random seed | |
| seed (int): The user-specified seed value | |
| Returns: | |
| int: The seed to use for generation | |
| """ | |
| return np.random.randint(0, MAX_SEED) if randomize_seed else seed | |
| def align_camera(num_frames, extrinsic, intrinsic, rend_extrinsics, rend_intrinsics): | |
| extrinsic_tmp = extrinsic.clone() | |
| camera_relative = torch.matmul(extrinsic_tmp[:num_frames,:3,:3].permute(0,2,1), extrinsic_tmp[num_frames:,:3,:3]) | |
| camera_relative_angle = torch.acos(((camera_relative[:,0,0] + camera_relative[:,1,1] + camera_relative[:,2,2] - 1) / 2).clamp(-1, 1)) | |
| idx = torch.argmin(camera_relative_angle) | |
| target_extrinsic = rend_extrinsics[idx:idx+1].clone() | |
| focal_x = intrinsic[:num_frames,0,0].mean() | |
| focal_y = intrinsic[:num_frames,1,1].mean() | |
| focal = (focal_x + focal_y) / 2 | |
| rend_focal = (rend_intrinsics[0][0,0] + rend_intrinsics[0][1,1]) * 518 / 2 | |
| focal_scale = rend_focal / focal | |
| target_intrinsic = intrinsic[num_frames:].clone() | |
| fxy = (target_intrinsic[:,0,0] + target_intrinsic[:,1,1]) / 2 * focal_scale | |
| target_intrinsic[:,0,0] = fxy | |
| target_intrinsic[:,1,1] = fxy | |
| return target_extrinsic, target_intrinsic | |
| def refine_pose_mast3r(rend_image_pil, target_image_pil, original_size, fxy, target_extrinsic, rend_depth): | |
| images_mast3r = load_images_new([rend_image_pil, target_image_pil], size=512, square_ok=True) | |
| with torch.no_grad(): | |
| output = inference([tuple(images_mast3r)], mast3r_model, device, batch_size=1, verbose=False) | |
| view1, pred1 = output['view1'], output['pred1'] | |
| view2, pred2 = output['view2'], output['pred2'] | |
| del output | |
| desc1, desc2 = pred1['desc'].squeeze(0).detach(), pred2['desc'].squeeze(0).detach() | |
| # find 2D-2D matches between the two images | |
| matches_im0, matches_im1 = fast_reciprocal_NNs(desc1, desc2, subsample_or_initxy1=8, | |
| device=device, dist='dot', block_size=2**13) | |
| # ignore small border around the edge | |
| H0, W0 = view1['true_shape'][0] | |
| valid_matches_im0 = (matches_im0[:, 0] >= 3) & (matches_im0[:, 0] < int(W0) - 3) & ( | |
| matches_im0[:, 1] >= 3) & (matches_im0[:, 1] < int(H0) - 3) | |
| H1, W1 = view2['true_shape'][0] | |
| valid_matches_im1 = (matches_im1[:, 0] >= 3) & (matches_im1[:, 0] < int(W1) - 3) & ( | |
| matches_im1[:, 1] >= 3) & (matches_im1[:, 1] < int(H1) - 3) | |
| valid_matches = valid_matches_im0 & valid_matches_im1 | |
| matches_im0, matches_im1 = matches_im0[valid_matches], matches_im1[valid_matches] | |
| scale_x = original_size[1] / W0.item() | |
| scale_y = original_size[0] / H0.item() | |
| for pixel in matches_im1: | |
| pixel[0] *= scale_x | |
| pixel[1] *= scale_y | |
| for pixel in matches_im0: | |
| pixel[0] *= scale_x | |
| pixel[1] *= scale_y | |
| depth_map = rend_depth[0] | |
| fx, fy, cx, cy = fxy.item(), fxy.item(), original_size[1]/2, original_size[0]/2 # Example values for focal lengths and principal point | |
| K = np.array([ | |
| [fx, 0, cx], | |
| [0, fy, cy], | |
| [0, 0, 1] | |
| ]) | |
| dist_eff = np.array([0,0,0,0], dtype=np.float32) | |
| predict_c2w_ini = np.linalg.inv(target_extrinsic[0].cpu().numpy()) | |
| predict_w2c_ini = target_extrinsic[0].cpu().numpy() | |
| initial_rvec, _ = cv2.Rodrigues(predict_c2w_ini[:3,:3].astype(np.float32)) | |
| initial_tvec = predict_c2w_ini[:3,3].astype(np.float32) | |
| K_inv = np.linalg.inv(K) | |
| height, width = depth_map.shape | |
| x_coords, y_coords = np.meshgrid(np.arange(width), np.arange(height)) | |
| x_flat = x_coords.flatten() | |
| y_flat = y_coords.flatten() | |
| depth_flat = depth_map.flatten() | |
| x_normalized = (x_flat - K[0, 2]) / K[0, 0] | |
| y_normalized = (y_flat - K[1, 2]) / K[1, 1] | |
| X_camera = depth_flat * x_normalized | |
| Y_camera = depth_flat * y_normalized | |
| Z_camera = depth_flat | |
| points_camera = np.vstack((X_camera, Y_camera, Z_camera, np.ones_like(X_camera))) | |
| points_world = predict_c2w_ini @ points_camera | |
| X_world = points_world[0, :] | |
| Y_world = points_world[1, :] | |
| Z_world = points_world[2, :] | |
| points_3D = np.vstack((X_world, Y_world, Z_world)) | |
| scene_coordinates_gs = points_3D.reshape(3, original_size[0], original_size[1]) | |
| points_3D_at_pixels = np.zeros((matches_im0.shape[0], 3)) | |
| for i, (x, y) in enumerate(matches_im0): | |
| points_3D_at_pixels[i] = scene_coordinates_gs[:, y, x] | |
| success, rvec, tvec, inliers = cv2.solvePnPRansac(points_3D_at_pixels.astype(np.float32), matches_im1.astype(np.float32), K, \ | |
| dist_eff,rvec=initial_rvec,tvec=initial_tvec, useExtrinsicGuess=True, reprojectionError=1.0,\ | |
| iterationsCount=2000,flags=cv2.SOLVEPNP_EPNP) | |
| R = perform_rodrigues_transformation(rvec) | |
| trans = -R.T @ np.matrix(tvec) | |
| predict_c2w_refine = np.eye(4) | |
| predict_c2w_refine[:3,:3] = R.T | |
| predict_c2w_refine[:3,3] = trans.reshape(3) | |
| target_extrinsic_final = torch.tensor(predict_c2w_refine).inverse().cuda()[None].float() | |
| return target_extrinsic_final | |
| def pointcloud_registration(rend_image_pil, target_image_pil, original_size, | |
| fxy, target_extrinsic, rend_depth, target_pointmap, | |
| down_pcd, pcd): | |
| images_mast3r = load_images_new([rend_image_pil, target_image_pil], size=512, square_ok=True) | |
| with torch.no_grad(): | |
| output = inference([tuple(images_mast3r)], mast3r_model, device, batch_size=1, verbose=False) | |
| view1, pred1 = output['view1'], output['pred1'] | |
| view2, pred2 = output['view2'], output['pred2'] | |
| del output | |
| desc1, desc2 = pred1['desc'].squeeze(0).detach(), pred2['desc'].squeeze(0).detach() | |
| # find 2D-2D matches between the two images | |
| matches_im0, matches_im1 = fast_reciprocal_NNs(desc1, desc2, subsample_or_initxy1=8, | |
| device=device, dist='dot', block_size=2**13) | |
| # ignore small border around the edge | |
| H0, W0 = view1['true_shape'][0] | |
| valid_matches_im0 = (matches_im0[:, 0] >= 3) & (matches_im0[:, 0] < int(W0) - 3) & ( | |
| matches_im0[:, 1] >= 3) & (matches_im0[:, 1] < int(H0) - 3) | |
| H1, W1 = view2['true_shape'][0] | |
| valid_matches_im1 = (matches_im1[:, 0] >= 3) & (matches_im1[:, 0] < int(W1) - 3) & ( | |
| matches_im1[:, 1] >= 3) & (matches_im1[:, 1] < int(H1) - 3) | |
| valid_matches = valid_matches_im0 & valid_matches_im1 | |
| matches_im0, matches_im1 = matches_im0[valid_matches], matches_im1[valid_matches] | |
| scale_x = original_size[1] / W0.item() | |
| scale_y = original_size[0] / H0.item() | |
| for pixel in matches_im1: | |
| pixel[0] *= scale_x | |
| pixel[1] *= scale_y | |
| for pixel in matches_im0: | |
| pixel[0] *= scale_x | |
| pixel[1] *= scale_y | |
| depth_map = rend_depth[0] | |
| fx, fy, cx, cy = fxy.item(), fxy.item(), original_size[1]/2, original_size[0]/2 # Example values for focal lengths and principal point | |
| K = np.array([ | |
| [fx, 0, cx], | |
| [0, fy, cy], | |
| [0, 0, 1] | |
| ]) | |
| dist_eff = np.array([0,0,0,0], dtype=np.float32) | |
| predict_c2w_ini = np.linalg.inv(target_extrinsic[0].cpu().numpy()) | |
| predict_w2c_ini = target_extrinsic[0].cpu().numpy() | |
| initial_rvec, _ = cv2.Rodrigues(predict_c2w_ini[:3,:3].astype(np.float32)) | |
| initial_tvec = predict_c2w_ini[:3,3].astype(np.float32) | |
| K_inv = np.linalg.inv(K) | |
| height, width = depth_map.shape | |
| x_coords, y_coords = np.meshgrid(np.arange(width), np.arange(height)) | |
| x_flat = x_coords.flatten() | |
| y_flat = y_coords.flatten() | |
| depth_flat = depth_map.flatten() | |
| x_normalized = (x_flat - K[0, 2]) / K[0, 0] | |
| y_normalized = (y_flat - K[1, 2]) / K[1, 1] | |
| X_camera = depth_flat * x_normalized | |
| Y_camera = depth_flat * y_normalized | |
| Z_camera = depth_flat | |
| points_camera = np.vstack((X_camera, Y_camera, Z_camera, np.ones_like(X_camera))) | |
| points_world = predict_c2w_ini @ points_camera | |
| X_world = points_world[0, :] | |
| Y_world = points_world[1, :] | |
| Z_world = points_world[2, :] | |
| points_3D = np.vstack((X_world, Y_world, Z_world)) | |
| scene_coordinates_gs = points_3D.reshape(3, original_size[0], original_size[1]) | |
| points_3D_at_pixels = np.zeros((matches_im0.shape[0], 3)) | |
| for i, (x, y) in enumerate(matches_im0): | |
| points_3D_at_pixels[i] = scene_coordinates_gs[:, y, x] | |
| points_3D_at_pixels_2 = np.zeros((matches_im1.shape[0], 3)) | |
| for i, (x, y) in enumerate(matches_im1): | |
| points_3D_at_pixels_2[i] = target_pointmap[:, y, x] | |
| dist_1 = np.linalg.norm(points_3D_at_pixels - points_3D_at_pixels.mean(axis=0), axis=1) | |
| scale_1 = dist_1[dist_1 < np.percentile(dist_1, 99)].mean() | |
| dist_2 = np.linalg.norm(points_3D_at_pixels_2 - points_3D_at_pixels_2.mean(axis=0), axis=1) | |
| scale_2 = dist_2[dist_2 < np.percentile(dist_2, 99)].mean() | |
| # scale_1 = np.linalg.norm(points_3D_at_pixels - points_3D_at_pixels.mean(axis=0), axis=1).mean() | |
| # scale_2 = np.linalg.norm(points_3D_at_pixels_2 - points_3D_at_pixels_2.mean(axis=0), axis=1).mean() | |
| points_3D_at_pixels_2 = points_3D_at_pixels_2 * (scale_1 / scale_2) | |
| pcd_1 = o3d.geometry.PointCloud() | |
| pcd_1.points = o3d.utility.Vector3dVector(points_3D_at_pixels) | |
| pcd_2 = o3d.geometry.PointCloud() | |
| pcd_2.points = o3d.utility.Vector3dVector(points_3D_at_pixels_2) | |
| indices = np.arange(points_3D_at_pixels.shape[0]) | |
| correspondences = np.stack([indices, indices], axis=1) | |
| correspondences = o3d.utility.Vector2iVector(correspondences) | |
| result = o3d.pipelines.registration.registration_ransac_based_on_correspondence( | |
| pcd_2, | |
| pcd_1, | |
| correspondences, | |
| 0.03, | |
| estimation_method=o3d.pipelines.registration.TransformationEstimationPointToPoint(False), | |
| ransac_n=5, | |
| criteria=o3d.pipelines.registration.RANSACConvergenceCriteria(10000, 10000), | |
| ) | |
| transformation_matrix = result.transformation.copy() | |
| transformation_matrix[:3,:3] = transformation_matrix[:3,:3] * (scale_1 / scale_2) | |
| evaluation = o3d.pipelines.registration.evaluate_registration( | |
| down_pcd, pcd, 0.02, transformation_matrix | |
| ) | |
| return transformation_matrix, evaluation.fitness | |
| def generate_and_extract_glb( | |
| multiimages: List[Tuple[Image.Image, str]], | |
| seed: int, | |
| ss_guidance_strength: float, | |
| ss_sampling_steps: int, | |
| slat_guidance_strength: float, | |
| slat_sampling_steps: int, | |
| multiimage_algo: Literal["multidiffusion", "stochastic"], | |
| mesh_simplify: float, | |
| texture_size: int, | |
| refine: Literal["Yes", "No"], | |
| ss_refine: Literal["noise", "deltav", "No"], | |
| registration_num_frames: int, | |
| trellis_stage1_lr: float, | |
| trellis_stage1_start_t: float, | |
| trellis_stage2_lr: float, | |
| trellis_stage2_start_t: float, | |
| req: gr.Request, | |
| ) -> Tuple[dict, str, str, str]: | |
| """ | |
| Convert an image to a 3D model and extract GLB file. | |
| Args: | |
| image (Image.Image): The input image. | |
| multiimages (List[Tuple[Image.Image, str]]): The input images in multi-image mode. | |
| is_multiimage (bool): Whether is in multi-image mode. | |
| seed (int): The random seed. | |
| ss_guidance_strength (float): The guidance strength for sparse structure generation. | |
| ss_sampling_steps (int): The number of sampling steps for sparse structure generation. | |
| slat_guidance_strength (float): The guidance strength for structured latent generation. | |
| slat_sampling_steps (int): The number of sampling steps for structured latent generation. | |
| multiimage_algo (Literal["multidiffusion", "stochastic"]): The algorithm for multi-image generation. | |
| mesh_simplify (float): The mesh simplification factor. | |
| texture_size (int): The texture resolution. | |
| Returns: | |
| dict: The information of the generated 3D model. | |
| str: The path to the video of the 3D model. | |
| str: The path to the extracted GLB file. | |
| str: The path to the extracted GLB file (for download). | |
| """ | |
| user_dir = os.path.join(TMP_DIR, str(req.session_hash)) | |
| image_files = [image[0] for image in multiimages] | |
| # Generate 3D model | |
| outputs, coords, ss_noise = pipeline.run( | |
| image=image_files, | |
| seed=seed, | |
| formats=["gaussian", "mesh"], | |
| preprocess_image=False, | |
| sparse_structure_sampler_params={ | |
| "steps": ss_sampling_steps, | |
| "cfg_strength": ss_guidance_strength, | |
| }, | |
| slat_sampler_params={ | |
| "steps": slat_sampling_steps, | |
| "cfg_strength": slat_guidance_strength, | |
| }, | |
| mode=multiimage_algo, | |
| ) | |
| if refine == "Yes": | |
| try: | |
| images, alphas = load_and_preprocess_images(multiimages) | |
| images, alphas = images.to(device), alphas.to(device) | |
| with torch.no_grad(): | |
| with torch.cuda.amp.autocast(dtype=pipeline.VGGT_dtype): | |
| images = images[None] | |
| aggregated_tokens_list, ps_idx = pipeline.VGGT_model.aggregator(images) | |
| # Predict Cameras | |
| pose_enc = pipeline.VGGT_model.camera_head(aggregated_tokens_list)[-1] | |
| # Extrinsic and intrinsic matrices, following OpenCV convention (camera from world) | |
| extrinsic, intrinsic = pose_encoding_to_extri_intri(pose_enc, images.shape[-2:]) | |
| # Predict Point Cloud | |
| point_map, point_conf = pipeline.VGGT_model.point_head(aggregated_tokens_list, images, ps_idx) | |
| del aggregated_tokens_list | |
| mask = (alphas[:,0,...][...,None] > 0.8) | |
| conf_threshold = np.percentile(point_conf.cpu().numpy(), 50) | |
| confidence_mask = (point_conf[0] > conf_threshold) & (point_conf[0] > 1e-5) | |
| mask = mask & confidence_mask[...,None] | |
| point_map_by_unprojection = point_map[0] | |
| point_map_clean = point_map_by_unprojection[mask[...,0]] | |
| center_point = point_map_clean.mean(0) | |
| scale = np.percentile((point_map_clean - center_point[None]).norm(dim=-1).cpu().numpy(), 98) | |
| outlier_mask = (point_map_by_unprojection - center_point[None]).norm(dim=-1) <= scale | |
| final_mask = mask & outlier_mask[...,None] | |
| point_map_perframe = (point_map_by_unprojection - center_point[None, None, None]) / (2 * scale) | |
| point_map_perframe[~final_mask[...,0]] = 127/255 | |
| point_map_perframe = point_map_perframe.permute(0,3,1,2) | |
| images = images[0].permute(0,2,3,1) | |
| images[~(alphas[:,0,...][...,None] > 0.8)[...,0]] = 0. | |
| input_images = images.permute(0,3,1,2).clone() | |
| vggt_extrinsic = extrinsic[0] | |
| vggt_extrinsic = torch.cat([vggt_extrinsic, torch.tensor([[[0,0,0,1]]]).repeat(vggt_extrinsic.shape[0], 1, 1).to(vggt_extrinsic)], dim=1) | |
| vggt_intrinsic = intrinsic[0] | |
| vggt_intrinsic[:,:2] = vggt_intrinsic[:,:2] / 518 | |
| vggt_extrinsic[:,:3,3] = (torch.matmul(vggt_extrinsic[:,:3,:3], center_point[None,:,None].float())[...,0] + vggt_extrinsic[:,:3,3]) / (2 * scale) | |
| pointcloud = point_map_perframe.permute(0,2,3,1)[final_mask[...,0]] | |
| idxs = torch.randperm(pointcloud.shape[0])[:min(50000, pointcloud.shape[0])] | |
| pcd = o3d.geometry.PointCloud() | |
| pcd.points = o3d.utility.Vector3dVector(pointcloud[idxs].cpu().numpy()) | |
| cl, ind = pcd.remove_statistical_outlier(nb_neighbors=30, std_ratio=3.0) | |
| inlier_cloud = pcd.select_by_index(ind) | |
| outlier_cloud = pcd.select_by_index(ind, invert=True) | |
| distance = np.array(inlier_cloud.points) - np.array(inlier_cloud.points).mean(axis=0)[None] | |
| scale = np.percentile(np.linalg.norm(distance, axis=1), 97) | |
| voxel_size = 1/64*scale*2 | |
| down_pcd = inlier_cloud.voxel_down_sample(voxel_size) | |
| torch.cuda.empty_cache() | |
| video, rend_extrinsics, rend_intrinsics = render_utils.render_multiview(outputs['gaussian'][0], num_frames=registration_num_frames) | |
| rend_extrinsics = torch.stack(rend_extrinsics, dim=0) | |
| rend_intrinsics = torch.stack(rend_intrinsics, dim=0) | |
| target_extrinsics = [] | |
| target_intrinsics = [] | |
| target_transforms = [] | |
| target_fitnesses = [] | |
| pcd = o3d.geometry.PointCloud() | |
| mesh = outputs['mesh'][0] | |
| idxs = torch.randperm(mesh.vertices.shape[0])[:min(50000, mesh.vertices.shape[0])] | |
| pcd.points = o3d.utility.Vector3dVector(mesh.vertices[idxs].cpu().numpy()) | |
| distance = np.array(pcd.points) - np.array(pcd.points).mean(axis=0)[None] | |
| scale = np.linalg.norm(distance, axis=1).max() | |
| voxel_size = 1/64*scale*2 | |
| pcd = pcd.voxel_down_sample(voxel_size) | |
| # pcd.points = o3d.utility.Vector3dVector((coords[:,1:].cpu().numpy() + 0.5) / 64 - 0.5) | |
| for k in range(len(image_files)): | |
| images = torch.stack([TF.ToTensor()(render_image) for render_image in video['color']] + [TF.ToTensor()(image_files[k].convert("RGB"))], dim=0) | |
| # if len(images) == 0: | |
| with torch.no_grad(): | |
| with torch.cuda.amp.autocast(dtype=pipeline.VGGT_dtype): | |
| # predictions = vggt_model(images.cuda()) | |
| aggregated_tokens_list, ps_idx = pipeline.VGGT_model.aggregator(images[None].cuda()) | |
| pose_enc = pipeline.VGGT_model.camera_head(aggregated_tokens_list)[-1] | |
| extrinsic, intrinsic = pose_encoding_to_extri_intri(pose_enc, images.shape[-2:]) | |
| extrinsic, intrinsic = extrinsic[0], intrinsic[0] | |
| extrinsic = torch.cat([extrinsic, torch.tensor([0,0,0,1])[None,None].repeat(extrinsic.shape[0], 1, 1).to(extrinsic.device)], dim=1) | |
| del aggregated_tokens_list, ps_idx | |
| target_extrinsic, target_intrinsic = align_camera(registration_num_frames, extrinsic, intrinsic, rend_extrinsics, rend_intrinsics) | |
| fxy = target_intrinsic[:,0,0] | |
| target_intrinsic_tmp = target_intrinsic.clone() | |
| target_intrinsic_tmp[:,:2] = target_intrinsic_tmp[:,:2] / 518 | |
| target_extrinsic_list = [target_extrinsic] | |
| iou_list = [] | |
| iterations = 3 | |
| for i in range(iterations + 1): | |
| j = 0 | |
| rend = render_utils.render_frames(outputs['gaussian'][0], target_extrinsic, target_intrinsic_tmp, {'resolution': 518, 'bg_color': (0, 0, 0)}, need_depth=True) | |
| rend_image = rend['color'][j] # (518, 518, 3) | |
| rend_depth = rend['depth'][j] # (3, 518, 518) | |
| depth_single = rend_depth[0].astype(np.float32) # (H, W) | |
| mask = (depth_single != 0).astype(np.uint8) # | |
| kernel = np.ones((3, 3), np.uint8) | |
| mask_eroded = cv2.erode(mask, kernel, iterations=3) | |
| depth_eroded = depth_single * mask_eroded | |
| rend_depth_eroded = np.stack([depth_eroded]*3, axis=0) | |
| rend_image = torch.tensor(rend_image).permute(2,0,1) / 255 | |
| target_image = images[registration_num_frames:].to(target_extrinsic.device)[j] | |
| original_size = (rend_image.shape[1], rend_image.shape[2]) | |
| import torchvision | |
| torchvision.utils.save_image(rend_image, 'rend_image_{}.png'.format(k)) | |
| torchvision.utils.save_image(target_image, 'target_image_{}.png'.format(k)) | |
| mask_rend = (rend_image.detach().cpu() > 0).any(dim=0) | |
| mask_target = (target_image.detach().cpu() > 0).any(dim=0) | |
| intersection = (mask_rend & mask_target).sum().item() | |
| union = (mask_rend | mask_target).sum().item() | |
| iou = intersection / union if union > 0 else 0.0 | |
| iou_list.append(iou) | |
| if i == iterations: | |
| break | |
| rend_image = rend_image * torch.from_numpy(mask_eroded[None]).to(rend_image.device) | |
| rend_image_pil = Image.fromarray((rend_image.permute(1,2,0).cpu().numpy() * 255).astype(np.uint8)) | |
| target_image_pil = Image.fromarray((target_image.permute(1,2,0).cpu().numpy() * 255).astype(np.uint8)) | |
| target_extrinsic[j:j+1] = refine_pose_mast3r(rend_image_pil, target_image_pil, original_size, fxy[j:j+1], target_extrinsic[j:j+1], rend_depth_eroded) | |
| target_extrinsic_list.append(target_extrinsic[j:j+1]) | |
| idx = iou_list.index(max(iou_list)) | |
| target_extrinsic[j:j+1] = target_extrinsic_list[idx] | |
| target_transform, fitness = pointcloud_registration(rend_image_pil, target_image_pil, original_size, fxy[j:j+1], target_extrinsic[j:j+1], \ | |
| rend_depth_eroded, point_map_perframe[k].cpu().numpy(), down_pcd, pcd) | |
| target_transforms.append(target_transform) | |
| target_fitnesses.append(fitness) | |
| target_extrinsics.append(target_extrinsic[j:j+1]) | |
| target_intrinsics.append(target_intrinsic_tmp[j:j+1]) | |
| target_extrinsics = torch.cat(target_extrinsics, dim=0) | |
| target_intrinsics = torch.cat(target_intrinsics, dim=0) | |
| target_fitnesses_filtered = [x for x in target_fitnesses if x < 1] | |
| idx = target_fitnesses.index(max(target_fitnesses_filtered)) | |
| target_transform = target_transforms[idx] | |
| down_pcd_align = copy.deepcopy(down_pcd).transform(target_transform) | |
| # pcd = o3d.geometry.PointCloud() | |
| # pcd.points = o3d.utility.Vector3dVector(coords[:,1:].cpu().numpy() / 64 - 0.5) | |
| reg_p2p = o3d.pipelines.registration.registration_icp( | |
| down_pcd_align, pcd, 0.02, np.eye(4), | |
| o3d.pipelines.registration.TransformationEstimationPointToPoint(with_scaling=True), | |
| o3d.pipelines.registration.ICPConvergenceCriteria(max_iteration = 10000)) | |
| down_pcd_align_2 = copy.deepcopy(down_pcd_align).transform(reg_p2p.transformation) | |
| input_points = torch.tensor(np.asarray(down_pcd_align_2.points)).to(extrinsic.device).float() | |
| input_points = ((input_points + 0.5).clip(0, 1) * 64 - 0.5).to(torch.int32) | |
| outputs = pipeline.run_refine( | |
| image=image_files, | |
| ss_learning_rate=trellis_stage1_lr, | |
| ss_start_t=trellis_stage1_start_t, | |
| apperance_learning_rate=trellis_stage2_lr, | |
| apperance_start_t=trellis_stage2_start_t, | |
| extrinsics=target_extrinsics, | |
| intrinsics=target_intrinsics, | |
| ss_noise=ss_noise, | |
| input_points=input_points, | |
| ss_refine_type = ss_refine, | |
| coords=coords if ss_refine == "No" else None, | |
| seed=seed, | |
| formats=["mesh", "gaussian"], | |
| sparse_structure_sampler_params={ | |
| "steps": ss_sampling_steps, | |
| "cfg_strength": ss_guidance_strength, | |
| }, | |
| slat_sampler_params={ | |
| "steps": slat_sampling_steps, | |
| "cfg_strength": slat_guidance_strength, | |
| }, | |
| mode=multiimage_algo, | |
| ) | |
| except Exception as e: | |
| print(f"Error during refinement: {e}") | |
| # Render video | |
| # import uuid | |
| # output_id = str(uuid.uuid4()) | |
| # os.makedirs(f"{TMP_DIR}/{output_id}", exist_ok=True) | |
| # video_path = f"{TMP_DIR}/{output_id}/preview.mp4" | |
| # glb_path = f"{TMP_DIR}/{output_id}/mesh.glb" | |
| video = render_utils.render_video(outputs['gaussian'][0], num_frames=120)['color'] | |
| video_geo = render_utils.render_video(outputs['mesh'][0], num_frames=120)['normal'] | |
| video = [np.concatenate([video[i], video_geo[i]], axis=1) for i in range(len(video))] | |
| video_path = os.path.join(user_dir, 'sample.mp4') | |
| imageio.mimsave(video_path, video, fps=15) | |
| # Extract GLB | |
| gs = outputs['gaussian'][0] | |
| mesh = outputs['mesh'][0] | |
| glb = postprocessing_utils.to_glb(gs, mesh, simplify=mesh_simplify, texture_size=texture_size, verbose=False) | |
| glb_path = os.path.join(user_dir, 'sample.glb') | |
| glb.export(glb_path) | |
| # Pack state for optional Gaussian extraction | |
| state = pack_state(gs, mesh) | |
| torch.cuda.empty_cache() | |
| return state, video_path, glb_path, glb_path | |
| def extract_gaussian(state: dict, req: gr.Request) -> Tuple[str, str]: | |
| """ | |
| Extract a Gaussian splatting file from the generated 3D model. | |
| This function is called when the user clicks "Extract Gaussian" button. | |
| It converts the 3D model state into a .ply file format containing | |
| Gaussian splatting data for advanced 3D applications. | |
| Args: | |
| state (dict): The state of the generated 3D model containing Gaussian data | |
| req (gr.Request): Gradio request object for session management | |
| Returns: | |
| Tuple[str, str]: Paths to the extracted Gaussian file (for display and download) | |
| """ | |
| user_dir = os.path.join(TMP_DIR, str(req.session_hash)) | |
| gs, _ = unpack_state(state) | |
| gaussian_path = os.path.join(user_dir, 'sample.ply') | |
| gs.save_ply(gaussian_path) | |
| torch.cuda.empty_cache() | |
| return gaussian_path, gaussian_path | |
| def prepare_multi_example() -> List[Image.Image]: | |
| multi_case = list(set([i.split('_')[0] for i in os.listdir("assets/example_multi_image")])) | |
| images = [] | |
| for case in multi_case: | |
| _images = [] | |
| for i in range(1, 9): | |
| if os.path.exists(f'assets/example_multi_image/{case}_{i}.png'): | |
| img = Image.open(f'assets/example_multi_image/{case}_{i}.png') | |
| W, H = img.size | |
| img = img.resize((int(W / H * 512), 512)) | |
| _images.append(np.array(img)) | |
| if len(_images) > 0: | |
| images.append(Image.fromarray(np.concatenate(_images, axis=1))) | |
| return images | |
| def split_image(image: Image.Image) -> List[Image.Image]: | |
| """ | |
| Split a multi-view image into separate view images. | |
| This function is called when users select multi-image examples that contain | |
| multiple views in a single concatenated image. It automatically splits them | |
| based on alpha channel boundaries and preprocesses each view. | |
| Args: | |
| image (Image.Image): A concatenated image containing multiple views | |
| Returns: | |
| List[Image.Image]: List of individual preprocessed view images | |
| """ | |
| image = np.array(image) | |
| alpha = image[..., 3] | |
| alpha = np.any(alpha>0, axis=0) | |
| start_pos = np.where(~alpha[:-1] & alpha[1:])[0].tolist() | |
| end_pos = np.where(alpha[:-1] & ~alpha[1:])[0].tolist() | |
| images = [] | |
| for s, e in zip(start_pos, end_pos): | |
| images.append(Image.fromarray(image[:, s:e+1])) | |
| return [preprocess_image(image) for image in images] | |
| # Create interface | |
| demo = gr.Blocks( | |
| title="ReconViaGen", | |
| css=""" | |
| .slider .inner { width: 5px; background: #FFF; } | |
| .viewport { aspect-ratio: 4/3; } | |
| .tabs button.selected { font-size: 20px !important; color: crimson !important; } | |
| h1, h2, h3 { text-align: center; display: block; } | |
| .md_feedback li { margin-bottom: 0px !important; } | |
| """ | |
| ) | |
| with demo: | |
| gr.Markdown(""" | |
| # 💻 ReconViaGen | |
| <p align="center"> | |
| <a title="Github" href="https://github.com/GAP-LAB-CUHK-SZ/ReconViaGen" target="_blank" rel="noopener noreferrer" style="display: inline-block;"> | |
| <img src="https://img.shields.io/github/stars/GAP-LAB-CUHK-SZ/ReconViaGen?label=GitHub%20%E2%98%85&logo=github&color=C8C" alt="badge-github-stars"> | |
| </a> | |
| <a title="Website" href="https://jiahao620.github.io/reconviagen/" target="_blank" rel="noopener noreferrer" style="display: inline-block;"> | |
| <img src="https://www.obukhov.ai/img/badges/badge-website.svg"> | |
| </a> | |
| <a title="arXiv" href="https://jiahao620.github.io/reconviagen/" target="_blank" rel="noopener noreferrer" style="display: inline-block;"> | |
| <img src="https://www.obukhov.ai/img/badges/badge-pdf.svg"> | |
| </a> | |
| </p> | |
| ✨This demo is partial. We will release the whole model later. Stay tuned!✨ | |
| """) | |
| with gr.Row(): | |
| with gr.Column(): | |
| with gr.Tabs() as input_tabs: | |
| with gr.Tab(label="Input Video or Images", id=0) as multiimage_input_tab: | |
| input_video = gr.Video(label="Upload Video", interactive=True, height=300) | |
| image_prompt = gr.Image(label="Image Prompt", format="png", visible=False, image_mode="RGBA", type="pil", height=300) | |
| multiimage_prompt = gr.Gallery(label="Image Prompt", format="png", type="pil", height=300, columns=3) | |
| gr.Markdown(""" | |
| Input different views of the object in separate images. | |
| """) | |
| with gr.Accordion(label="Generation Settings", open=False): | |
| seed = gr.Slider(0, MAX_SEED, label="Seed", value=0, step=1) | |
| randomize_seed = gr.Checkbox(label="Randomize Seed", value=False) | |
| gr.Markdown("Stage 1: Sparse Structure Generation") | |
| with gr.Row(): | |
| ss_guidance_strength = gr.Slider(0.0, 10.0, label="Guidance Strength", value=7.5, step=0.1) | |
| ss_sampling_steps = gr.Slider(1, 50, label="Sampling Steps", value=30, step=1) | |
| gr.Markdown("Stage 2: Structured Latent Generation") | |
| with gr.Row(): | |
| slat_guidance_strength = gr.Slider(0.0, 10.0, label="Guidance Strength", value=3.0, step=0.1) | |
| slat_sampling_steps = gr.Slider(1, 50, label="Sampling Steps", value=12, step=1) | |
| multiimage_algo = gr.Radio(["stochastic", "multidiffusion"], label="Multi-image Algorithm", value="multidiffusion") | |
| refine = gr.Radio(["Yes", "No"], label="Refinement of Not", value="Yes") | |
| ss_refine = gr.Radio(["noise", "deltav", "No"], label="Sparse Structure refinement of not", value="No") | |
| registration_num_frames = gr.Slider(20, 50, label="Number of frames in registration", value=30, step=1) | |
| trellis_stage1_lr = gr.Slider(1e-4, 1., label="trellis_stage1_lr", value=1e-1, step=5e-4) | |
| trellis_stage1_start_t = gr.Slider(0., 1., label="trellis_stage1_start_t", value=0.5, step=0.01) | |
| trellis_stage2_lr = gr.Slider(1e-4, 1., label="trellis_stage2_lr", value=1e-1, step=5e-4) | |
| trellis_stage2_start_t = gr.Slider(0., 1., label="trellis_stage2_start_t", value=0.5, step=0.01) | |
| with gr.Accordion(label="GLB Extraction Settings", open=False): | |
| mesh_simplify = gr.Slider(0.9, 0.98, label="Simplify", value=0.95, step=0.01) | |
| texture_size = gr.Slider(512, 2048, label="Texture Size", value=1024, step=512) | |
| generate_btn = gr.Button("Generate & Extract GLB", variant="primary") | |
| extract_gs_btn = gr.Button("Extract Gaussian", interactive=False) | |
| gr.Markdown(""" | |
| *NOTE: Gaussian file can be very large (~50MB), it will take a while to display and download.* | |
| """) | |
| with gr.Column(): | |
| video_output = gr.Video(label="Generated 3D Asset", autoplay=True, loop=True, height=300) | |
| model_output = LitModel3D(label="Extracted GLB/Gaussian", exposure=10.0, height=300) | |
| with gr.Row(): | |
| download_glb = gr.DownloadButton(label="Download GLB", interactive=False) | |
| download_gs = gr.DownloadButton(label="Download Gaussian", interactive=False) | |
| output_buf = gr.State() | |
| # Example images at the bottom of the page | |
| with gr.Row() as multiimage_example: | |
| examples_multi = gr.Examples( | |
| examples=prepare_multi_example(), | |
| inputs=[image_prompt], | |
| fn=split_image, | |
| outputs=[multiimage_prompt], | |
| run_on_click=True, | |
| examples_per_page=8, | |
| ) | |
| # Handlers | |
| demo.load(start_session) | |
| demo.unload(end_session) | |
| input_video.upload( | |
| preprocess_videos, | |
| inputs=[input_video], | |
| outputs=[multiimage_prompt], | |
| ) | |
| input_video.clear( | |
| lambda: tuple([None, None]), | |
| outputs=[input_video, multiimage_prompt], | |
| ) | |
| multiimage_prompt.upload( | |
| preprocess_images, | |
| inputs=[multiimage_prompt], | |
| outputs=[multiimage_prompt], | |
| ) | |
| generate_btn.click( | |
| get_seed, | |
| inputs=[randomize_seed, seed], | |
| outputs=[seed], | |
| ).then( | |
| generate_and_extract_glb, | |
| inputs=[multiimage_prompt, seed, ss_guidance_strength, ss_sampling_steps, | |
| slat_guidance_strength, slat_sampling_steps, multiimage_algo, | |
| mesh_simplify, texture_size, refine, ss_refine, registration_num_frames, | |
| trellis_stage1_lr, trellis_stage1_start_t, trellis_stage2_lr, | |
| trellis_stage2_start_t], | |
| outputs=[output_buf, video_output, model_output, download_glb], | |
| ).then( | |
| lambda: tuple([gr.Button(interactive=True), gr.Button(interactive=True)]), | |
| outputs=[extract_gs_btn, download_glb], | |
| ) | |
| video_output.clear( | |
| lambda: tuple([gr.Button(interactive=False), gr.Button(interactive=False), gr.Button(interactive=False)]), | |
| outputs=[extract_gs_btn, download_glb, download_gs], | |
| ) | |
| extract_gs_btn.click( | |
| extract_gaussian, | |
| inputs=[output_buf], | |
| outputs=[model_output, download_gs], | |
| ).then( | |
| lambda: gr.Button(interactive=True), | |
| outputs=[download_gs], | |
| ) | |
| model_output.clear( | |
| lambda: tuple([gr.Button(interactive=False), gr.Button(interactive=False)]), | |
| outputs=[download_glb, download_gs], | |
| ) | |
| # Launch the Gradio app | |
| if __name__ == "__main__": | |
| pipeline = TrellisVGGTTo3DPipeline.from_pretrained("Stable-X/trellis-vggt-v0-2") | |
| # pipeline = TrellisVGGTTo3DPipeline.from_pretrained("weights/trellis-vggt-v0-1") | |
| pipeline.cuda() | |
| pipeline.VGGT_model.cuda() | |
| pipeline.birefnet_model.cuda() | |
| pipeline.dreamsim_model.cuda() | |
| mast3r_model = AsymmetricMASt3R.from_pretrained("naver/MASt3R_ViTLarge_BaseDecoder_512_catmlpdpt_metric").cuda().eval() | |
| # mast3r_model = AsymmetricMASt3R.from_pretrained("weights/MAST3R/MASt3R_ViTLarge_BaseDecoder_512_catmlpdpt_metric.pth").cuda().eval() | |
| demo.launch() | |