Spaces:
Runtime error
Runtime error
| import spaces | |
| import gradio as gr | |
| from omegaconf import OmegaConf | |
| from app.demo import * | |
| def prepare_cfg(is_static:bool, video_path:str, demo_id:str): | |
| output_root = Path(video_path).parent / 'output' | |
| output_root = str(output_root.absolute()) | |
| # Cfg | |
| with initialize_config_module(version_base="1.3", config_module=f"hmr4d.configs"): | |
| overrides = [ | |
| f"video_name={demo_id}", | |
| f"static_cam={is_static}", | |
| f"verbose={False}", | |
| ] | |
| # Allow to change output root | |
| overrides.append(f"output_root={output_root}") | |
| register_store_gvhmr() | |
| cfg = compose(config_name="demo", overrides=overrides) | |
| # Output | |
| Log.info(f"[Output Dir]: {cfg.output_dir}") | |
| Path(cfg.output_dir).mkdir(parents=True, exist_ok=True) | |
| Path(cfg.preprocess_dir).mkdir(parents=True, exist_ok=True) | |
| # Copy raw-input-video to video_path | |
| Log.info(f"[Copy Video] {video_path} -> {cfg.video_path}") | |
| if not Path(cfg.video_path).exists() or get_video_lwh(video_path)[0] != get_video_lwh(cfg.video_path)[0]: | |
| reader = get_video_reader(video_path) | |
| writer = get_writer(cfg.video_path, fps=30, crf=CRF) | |
| for img in tqdm(reader, total=get_video_lwh(video_path)[0], desc=f"Copy"): | |
| writer.write_frame(img) | |
| writer.close() | |
| reader.close() | |
| return cfg | |
| def run_demo(cfg, progress, GPU_quota): | |
| ''' Allow user to adjust GPU quota. ''' | |
| smpl_utils = { | |
| 'smplx' : make_smplx("supermotion"), | |
| 'J_regressor' : torch.load("hmr4d/utils/body_model/smpl_neutral_J_regressor.pt"), | |
| 'smplx2smpl' : torch.load("hmr4d/utils/body_model/smplx2smpl_sparse.pt"), | |
| 'faces_smpl' : make_smplx("smpl").faces, | |
| } | |
| def run_GPU_task(): | |
| Log.info(f"[GPU]: {torch.cuda.get_device_name()}") | |
| Log.info(f'[GPU]: {torch.cuda.get_device_properties("cuda")}') | |
| # ===== Preprocess and save to disk ===== # | |
| run_preprocess(cfg, progress) | |
| data = load_data_dict(cfg) | |
| # ===== HMR4D ===== # | |
| Log.info("[HMR4D] Predicting") | |
| progress(0, '[GVHMR] Initializing pipeline...') | |
| model: DemoPL = hydra.utils.instantiate(cfg.model, _recursive_=False) | |
| model.load_pretrained_model(cfg.ckpt_path) | |
| model = model.eval().cuda() | |
| tic = Log.sync_time() | |
| progress(1/3, '[GVHMR] Predicting...') | |
| pred = model.predict(data, static_cam=cfg.static_cam) | |
| pred = detach_to_cpu(pred) | |
| data_time = data["length"] / 30 | |
| Log.info(f"[HMR4D] Elapsed: {Log.sync_time() - tic:.2f}s for data-length={data_time:.1f}s") | |
| progress(2/3, '[GVHMR] Rendering...') | |
| # ===== Render ===== # | |
| smpl_utils['smplx'] = smpl_utils['smplx'].cuda() | |
| smpl_utils['J_regressor'] = smpl_utils['J_regressor'].cuda() | |
| smpl_utils['smplx2smpl'] = smpl_utils['smplx2smpl'].cuda() | |
| render_incam(cfg, pred, smpl_utils) | |
| render_global(cfg, pred, smpl_utils) | |
| return | |
| run_GPU_task() | |
| return | |
| def handler(video_path, cam_status, GPU_quota, progress=gr.Progress()): | |
| # 0. Check validity of inputs. | |
| if cam_status not in ['Static Camera', 'Dynamic Camera']: | |
| raise gr.Error('Please define the camera status!', duration=5) | |
| if video_path is None or not Path(video_path).exists(): | |
| raise gr.Error('Can not find the video!', duration=5) | |
| # 1. Deal with APP inputs. | |
| is_static = cam_status == 'Static Camera' | |
| Log.info(f"[Input Args] is_static: {is_static}") | |
| Log.info(f"[Input Args] video_path: {video_path}") | |
| if not is_static: | |
| Log.info("[Warning] Dynamic Camera is not supported yet.") | |
| raise gr.Error('DPVO is not supported in spaces yet. Try to run videos with static camera instead!', duration=20) | |
| # 2. Prepare cfg. | |
| Log.info(f"[Video]: {video_path}") | |
| demo_id = f'{Path(video_path).stem}_{np.random.randint(0, 1024):04d}' | |
| cfg = prepare_cfg(is_static, video_path, demo_id) | |
| # 3. Run demo. | |
| cfg = OmegaConf.to_container(cfg, resolve=True) | |
| cfg = OmegaConf.create(cfg) | |
| run_demo(cfg, progress, GPU_quota) | |
| # 4. Prepare the output. | |
| return cfg.paths.incam_video, cfg.paths.global_video | |