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|
| import yaml |
| import os.path as osp |
| import torch |
| import numpy as np |
| from ..dataset.mesh_util import * |
| from ..net.geometry import orthogonal |
| from pytorch3d.renderer.mesh import rasterize_meshes |
| from .render_utils import Pytorch3dRasterizer |
| from pytorch3d.structures import Meshes |
| import cv2 |
| from PIL import Image |
| from tqdm import tqdm |
| import os |
| from termcolor import colored |
|
|
| import pytorch_lightning as pl |
| from pytorch_lightning.core.lightning import LightningModule |
| from pytorch_lightning.utilities.cloud_io import atomic_save |
| from pytorch_lightning.utilities import rank_zero_warn |
|
|
|
|
| def rename(old_dict, old_name, new_name): |
| new_dict = {} |
| for key, value in zip(old_dict.keys(), old_dict.values()): |
| new_key = key if key != old_name else new_name |
| new_dict[new_key] = old_dict[key] |
| return new_dict |
|
|
|
|
| class SubTrainer(pl.Trainer): |
|
|
| def save_checkpoint(self, filepath, weights_only=False): |
| """Save model/training states as a checkpoint file through state-dump and file-write. |
| Args: |
| filepath: write-target file's path |
| weights_only: saving model weights only |
| """ |
| _checkpoint = self.checkpoint_connector.dump_checkpoint(weights_only) |
|
|
| del_keys = [] |
| for key in _checkpoint["state_dict"].keys(): |
| for ig_key in ["normal_filter", "voxelization", "reconEngine"]: |
| if ig_key in key: |
| del_keys.append(key) |
| for key in del_keys: |
| del _checkpoint["state_dict"][key] |
|
|
| if self.is_global_zero: |
| |
|
|
| if self.training_type_plugin: |
| checkpoint = self.training_type_plugin.on_save(_checkpoint) |
| try: |
| atomic_save(checkpoint, filepath) |
| except AttributeError as err: |
| if LightningModule.CHECKPOINT_HYPER_PARAMS_KEY in checkpoint: |
| del checkpoint[LightningModule.CHECKPOINT_HYPER_PARAMS_KEY] |
| rank_zero_warn( |
| "Warning, `hyper_parameters` dropped from checkpoint." |
| f" An attribute is not picklable {err}") |
| atomic_save(checkpoint, filepath) |
|
|
|
|
| def load_networks(cfg, model, mlp_path, normal_path): |
|
|
| model_dict = model.state_dict() |
| main_dict = {} |
| normal_dict = {} |
|
|
| |
| if os.path.exists(mlp_path) and mlp_path.endswith("ckpt"): |
| main_dict = torch.load( |
| mlp_path, |
| map_location=torch.device(f"cuda:{cfg.gpus[0]}"))["state_dict"] |
|
|
| main_dict = { |
| k: v |
| for k, v in main_dict.items() |
| if k in model_dict and v.shape == model_dict[k].shape and ( |
| "reconEngine" not in k) and ("normal_filter" not in k) and ( |
| "voxelization" not in k) |
| } |
| print(colored(f"Resume MLP weights from {mlp_path}", "green")) |
|
|
| |
| if os.path.exists(normal_path) and normal_path.endswith("ckpt"): |
| normal_dict = torch.load( |
| normal_path, |
| map_location=torch.device(f"cuda:{cfg.gpus[0]}"))["state_dict"] |
|
|
| for key in normal_dict.keys(): |
| normal_dict = rename(normal_dict, key, |
| key.replace("netG", "netG.normal_filter")) |
|
|
| normal_dict = { |
| k: v |
| for k, v in normal_dict.items() |
| if k in model_dict and v.shape == model_dict[k].shape |
| } |
| print(colored(f"Resume normal model from {normal_path}", "green")) |
|
|
| model_dict.update(main_dict) |
| model_dict.update(normal_dict) |
| model.load_state_dict(model_dict) |
|
|
| |
| del main_dict |
| del normal_dict |
| del model_dict |
| torch.cuda.empty_cache() |
|
|
|
|
| def reshape_sample_tensor(sample_tensor, num_views): |
| if num_views == 1: |
| return sample_tensor |
| |
| sample_tensor = sample_tensor.unsqueeze(dim=1) |
| sample_tensor = sample_tensor.repeat(1, num_views, 1, 1) |
| sample_tensor = sample_tensor.view( |
| sample_tensor.shape[0] * sample_tensor.shape[1], |
| sample_tensor.shape[2], sample_tensor.shape[3]) |
| return sample_tensor |
|
|
|
|
| def gen_mesh_eval(opt, net, cuda, data, resolution=None): |
| resolution = opt.resolution if resolution is None else resolution |
| image_tensor = data['img'].to(device=cuda) |
| calib_tensor = data['calib'].to(device=cuda) |
|
|
| net.filter(image_tensor) |
|
|
| b_min = data['b_min'] |
| b_max = data['b_max'] |
| try: |
| verts, faces, _, _ = reconstruction_faster(net, |
| cuda, |
| calib_tensor, |
| resolution, |
| b_min, |
| b_max, |
| use_octree=False) |
|
|
| except Exception as e: |
| print(e) |
| print('Can not create marching cubes at this time.') |
| verts, faces = None, None |
| return verts, faces |
|
|
|
|
| def gen_mesh(opt, net, cuda, data, save_path, resolution=None): |
| resolution = opt.resolution if resolution is None else resolution |
| image_tensor = data['img'].to(device=cuda) |
| calib_tensor = data['calib'].to(device=cuda) |
|
|
| net.filter(image_tensor) |
|
|
| b_min = data['b_min'] |
| b_max = data['b_max'] |
| try: |
| save_img_path = save_path[:-4] + '.png' |
| save_img_list = [] |
| for v in range(image_tensor.shape[0]): |
| save_img = (np.transpose(image_tensor[v].detach().cpu().numpy(), |
| (1, 2, 0)) * 0.5 + |
| 0.5)[:, :, ::-1] * 255.0 |
| save_img_list.append(save_img) |
| save_img = np.concatenate(save_img_list, axis=1) |
| Image.fromarray(np.uint8(save_img[:, :, ::-1])).save(save_img_path) |
|
|
| verts, faces, _, _ = reconstruction_faster(net, cuda, calib_tensor, |
| resolution, b_min, b_max) |
| verts_tensor = torch.from_numpy( |
| verts.T).unsqueeze(0).to(device=cuda).float() |
| xyz_tensor = net.projection(verts_tensor, calib_tensor[:1]) |
| uv = xyz_tensor[:, :2, :] |
| color = netG.index(image_tensor[:1], uv).detach().cpu().numpy()[0].T |
| color = color * 0.5 + 0.5 |
| save_obj_mesh_with_color(save_path, verts, faces, color) |
| except Exception as e: |
| print(e) |
| print('Can not create marching cubes at this time.') |
| verts, faces, color = None, None, None |
| return verts, faces, color |
|
|
|
|
| def gen_mesh_color(opt, netG, netC, cuda, data, save_path, use_octree=True): |
| image_tensor = data['img'].to(device=cuda) |
| calib_tensor = data['calib'].to(device=cuda) |
|
|
| netG.filter(image_tensor) |
| netC.filter(image_tensor) |
| netC.attach(netG.get_im_feat()) |
|
|
| b_min = data['b_min'] |
| b_max = data['b_max'] |
| try: |
| save_img_path = save_path[:-4] + '.png' |
| save_img_list = [] |
| for v in range(image_tensor.shape[0]): |
| save_img = (np.transpose(image_tensor[v].detach().cpu().numpy(), |
| (1, 2, 0)) * 0.5 + |
| 0.5)[:, :, ::-1] * 255.0 |
| save_img_list.append(save_img) |
| save_img = np.concatenate(save_img_list, axis=1) |
| Image.fromarray(np.uint8(save_img[:, :, ::-1])).save(save_img_path) |
|
|
| verts, faces, _, _ = reconstruction_faster(netG, |
| cuda, |
| calib_tensor, |
| opt.resolution, |
| b_min, |
| b_max, |
| use_octree=use_octree) |
|
|
| |
| verts_tensor = torch.from_numpy( |
| verts.T).unsqueeze(0).to(device=cuda).float() |
| verts_tensor = reshape_sample_tensor(verts_tensor, opt.num_views) |
| color = np.zeros(verts.shape) |
| interval = 10000 |
| for i in range(len(color) // interval): |
| left = i * interval |
| right = i * interval + interval |
| if i == len(color) // interval - 1: |
| right = -1 |
| netC.query(verts_tensor[:, :, left:right], calib_tensor) |
| rgb = netC.get_preds()[0].detach().cpu().numpy() * 0.5 + 0.5 |
| color[left:right] = rgb.T |
|
|
| save_obj_mesh_with_color(save_path, verts, faces, color) |
| except Exception as e: |
| print(e) |
| print('Can not create marching cubes at this time.') |
| verts, faces, color = None, None, None |
| return verts, faces, color |
|
|
|
|
| def adjust_learning_rate(optimizer, epoch, lr, schedule, gamma): |
| """Sets the learning rate to the initial LR decayed by schedule""" |
| if epoch in schedule: |
| lr *= gamma |
| for param_group in optimizer.param_groups: |
| param_group['lr'] = lr |
| return lr |
|
|
|
|
| def compute_acc(pred, gt, thresh=0.5): |
| ''' |
| return: |
| IOU, precision, and recall |
| ''' |
| with torch.no_grad(): |
| vol_pred = pred > thresh |
| vol_gt = gt > thresh |
|
|
| union = vol_pred | vol_gt |
| inter = vol_pred & vol_gt |
|
|
| true_pos = inter.sum().float() |
|
|
| union = union.sum().float() |
| if union == 0: |
| union = 1 |
| vol_pred = vol_pred.sum().float() |
| if vol_pred == 0: |
| vol_pred = 1 |
| vol_gt = vol_gt.sum().float() |
| if vol_gt == 0: |
| vol_gt = 1 |
| return true_pos / union, true_pos / vol_pred, true_pos / vol_gt |
|
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|
| def calc_error(opt, net, cuda, dataset, num_tests): |
| if num_tests > len(dataset): |
| num_tests = len(dataset) |
| with torch.no_grad(): |
| erorr_arr, IOU_arr, prec_arr, recall_arr = [], [], [], [] |
| for idx in tqdm(range(num_tests)): |
| data = dataset[idx * len(dataset) // num_tests] |
| |
| image_tensor = data['img'].to(device=cuda) |
| calib_tensor = data['calib'].to(device=cuda) |
| sample_tensor = data['samples'].to(device=cuda).unsqueeze(0) |
| if opt.num_views > 1: |
| sample_tensor = reshape_sample_tensor(sample_tensor, |
| opt.num_views) |
| label_tensor = data['labels'].to(device=cuda).unsqueeze(0) |
|
|
| res, error = net.forward(image_tensor, |
| sample_tensor, |
| calib_tensor, |
| labels=label_tensor) |
|
|
| IOU, prec, recall = compute_acc(res, label_tensor) |
|
|
| |
| |
| |
| erorr_arr.append(error.item()) |
| IOU_arr.append(IOU.item()) |
| prec_arr.append(prec.item()) |
| recall_arr.append(recall.item()) |
|
|
| return np.average(erorr_arr), np.average(IOU_arr), np.average( |
| prec_arr), np.average(recall_arr) |
|
|
|
|
| def calc_error_color(opt, netG, netC, cuda, dataset, num_tests): |
| if num_tests > len(dataset): |
| num_tests = len(dataset) |
| with torch.no_grad(): |
| error_color_arr = [] |
|
|
| for idx in tqdm(range(num_tests)): |
| data = dataset[idx * len(dataset) // num_tests] |
| |
| image_tensor = data['img'].to(device=cuda) |
| calib_tensor = data['calib'].to(device=cuda) |
| color_sample_tensor = data['color_samples'].to( |
| device=cuda).unsqueeze(0) |
|
|
| if opt.num_views > 1: |
| color_sample_tensor = reshape_sample_tensor( |
| color_sample_tensor, opt.num_views) |
|
|
| rgb_tensor = data['rgbs'].to(device=cuda).unsqueeze(0) |
|
|
| netG.filter(image_tensor) |
| _, errorC = netC.forward(image_tensor, |
| netG.get_im_feat(), |
| color_sample_tensor, |
| calib_tensor, |
| labels=rgb_tensor) |
|
|
| |
| |
| error_color_arr.append(errorC.item()) |
|
|
| return np.average(error_color_arr) |
|
|
|
|
| |
|
|
|
|
| def query_func(opt, netG, features, points, proj_matrix=None): |
| ''' |
| - points: size of (bz, N, 3) |
| - proj_matrix: size of (bz, 4, 4) |
| return: size of (bz, 1, N) |
| ''' |
| assert len(points) == 1 |
| samples = points.repeat(opt.num_views, 1, 1) |
| samples = samples.permute(0, 2, 1) |
|
|
| |
| if proj_matrix is not None: |
| samples = orthogonal(samples, proj_matrix) |
|
|
| calib_tensor = torch.stack([torch.eye(4).float()], dim=0).type_as(samples) |
|
|
| preds = netG.query(features=features, |
| points=samples, |
| calibs=calib_tensor) |
|
|
| if type(preds) is list: |
| preds = preds[0] |
|
|
| return preds |
|
|
|
|
| def isin(ar1, ar2): |
| return (ar1[..., None] == ar2).any(-1) |
|
|
|
|
| def in1d(ar1, ar2): |
| mask = ar2.new_zeros((max(ar1.max(), ar2.max()) + 1, ), dtype=torch.bool) |
| mask[ar2.unique()] = True |
| return mask[ar1] |
|
|
|
|
| def get_visibility(xy, z, faces): |
| """get the visibility of vertices |
| |
| Args: |
| xy (torch.tensor): [N,2] |
| z (torch.tensor): [N,1] |
| faces (torch.tensor): [N,3] |
| size (int): resolution of rendered image |
| """ |
|
|
| xyz = torch.cat((xy, -z), dim=1) |
| xyz = (xyz + 1.0) / 2.0 |
| faces = faces.long() |
|
|
| rasterizer = Pytorch3dRasterizer(image_size=2**12) |
| meshes_screen = Meshes(verts=xyz[None, ...], faces=faces[None, ...]) |
| raster_settings = rasterizer.raster_settings |
|
|
| pix_to_face, zbuf, bary_coords, dists = rasterize_meshes( |
| meshes_screen, |
| image_size=raster_settings.image_size, |
| blur_radius=raster_settings.blur_radius, |
| faces_per_pixel=raster_settings.faces_per_pixel, |
| bin_size=raster_settings.bin_size, |
| max_faces_per_bin=raster_settings.max_faces_per_bin, |
| perspective_correct=raster_settings.perspective_correct, |
| cull_backfaces=raster_settings.cull_backfaces, |
| ) |
|
|
| vis_vertices_id = torch.unique(faces[torch.unique(pix_to_face), :]) |
| vis_mask = torch.zeros(size=(z.shape[0], 1)) |
| vis_mask[vis_vertices_id] = 1.0 |
|
|
| |
| |
|
|
| return vis_mask |
|
|
|
|
| def batch_mean(res, key): |
| |
| return torch.stack([ |
| x[key] if isinstance(x, dict) else batch_mean(x, key) for x in res |
| ]).mean() |
|
|
|
|
| def tf_log_convert(log_dict): |
| new_log_dict = log_dict.copy() |
| for k, v in log_dict.items(): |
| new_log_dict[k.replace("_", "/")] = v |
| del new_log_dict[k] |
|
|
| return new_log_dict |
|
|
|
|
| def bar_log_convert(log_dict, name=None, rot=None): |
| from decimal import Decimal |
|
|
| new_log_dict = {} |
|
|
| if name is not None: |
| new_log_dict['name'] = name[0] |
| if rot is not None: |
| new_log_dict['rot'] = rot[0] |
|
|
| for k, v in log_dict.items(): |
| color = "yellow" |
| if 'loss' in k: |
| color = "red" |
| k = k.replace("loss", "L") |
| elif 'acc' in k: |
| color = "green" |
| k = k.replace("acc", "A") |
| elif 'iou' in k: |
| color = "green" |
| k = k.replace("iou", "I") |
| elif 'prec' in k: |
| color = "green" |
| k = k.replace("prec", "P") |
| elif 'recall' in k: |
| color = "green" |
| k = k.replace("recall", "R") |
|
|
| if 'lr' not in k: |
| new_log_dict[colored(k.split("_")[1], |
| color)] = colored(f"{v:.3f}", color) |
| else: |
| new_log_dict[colored(k.split("_")[1], |
| color)] = colored(f"{Decimal(str(v)):.1E}", |
| color) |
|
|
| if 'loss' in new_log_dict.keys(): |
| del new_log_dict['loss'] |
|
|
| return new_log_dict |
|
|
|
|
| def accumulate(outputs, rot_num, split): |
|
|
| hparam_log_dict = {} |
|
|
| metrics = outputs[0].keys() |
| datasets = split.keys() |
|
|
| for dataset in datasets: |
| for metric in metrics: |
| keyword = f"{dataset}-{metric}" |
| if keyword not in hparam_log_dict.keys(): |
| hparam_log_dict[keyword] = 0 |
| for idx in range(split[dataset][0] * rot_num, |
| split[dataset][1] * rot_num): |
| hparam_log_dict[keyword] += outputs[idx][metric] |
| hparam_log_dict[keyword] /= (split[dataset][1] - |
| split[dataset][0]) * rot_num |
|
|
| print(colored(hparam_log_dict, "green")) |
|
|
| return hparam_log_dict |
|
|
|
|
| def calc_error_N(outputs, targets): |
| """calculate the error of normal (IGR) |
| |
| Args: |
| outputs (torch.tensor): [B, 3, N] |
| target (torch.tensor): [B, N, 3] |
| |
| # manifold loss and grad_loss in IGR paper |
| grad_loss = ((nonmnfld_grad.norm(2, dim=-1) - 1) ** 2).mean() |
| normals_loss = ((mnfld_grad - normals).abs()).norm(2, dim=1).mean() |
| |
| Returns: |
| torch.tensor: error of valid normals on the surface |
| """ |
| |
| outputs = -outputs.permute(0, 2, 1).reshape(-1, 1) |
| targets = targets.reshape(-1, 3)[:, 2:3] |
| with_normals = targets.sum(dim=1).abs() > 0.0 |
|
|
| |
| grad_loss = ((outputs[with_normals].norm(2, dim=-1) - 1)**2).mean() |
| |
| normal_loss = (outputs - targets)[with_normals].abs().norm(2, dim=1).mean() |
|
|
| return grad_loss * 0.0 + normal_loss |
|
|
|
|
| def calc_knn_acc(preds, carn_verts, labels, pick_num): |
| """calculate knn accuracy |
| |
| Args: |
| preds (torch.tensor): [B, 3, N] |
| carn_verts (torch.tensor): [SMPLX_V_num, 3] |
| labels (torch.tensor): [B, N_knn, N] |
| """ |
| N_knn_full = labels.shape[1] |
| preds = preds.permute(0, 2, 1).reshape(-1, 3) |
| labels = labels.permute(0, 2, 1).reshape(-1, N_knn_full) |
| labels = labels[:, :pick_num] |
|
|
| dist = torch.cdist(preds, carn_verts, p=2) |
| knn = dist.topk(k=pick_num, dim=1, largest=False)[1] |
| cat_mat = torch.sort(torch.cat((knn, labels), dim=1))[0] |
| bool_col = torch.zeros_like(cat_mat)[:, 0] |
| for i in range(pick_num * 2 - 1): |
| bool_col += cat_mat[:, i] == cat_mat[:, i + 1] |
| acc = (bool_col > 0).sum() / len(bool_col) |
|
|
| return acc |
|
|
|
|
| def calc_acc_seg(output, target, num_multiseg): |
| from pytorch_lightning.metrics import Accuracy |
| return Accuracy()(output.reshape(-1, num_multiseg).cpu(), |
| target.flatten().cpu()) |
|
|
|
|
| def add_watermark(imgs, titles): |
|
|
| |
|
|
| font = cv2.FONT_HERSHEY_SIMPLEX |
| bottomLeftCornerOfText = (350, 50) |
| bottomRightCornerOfText = (800, 50) |
| fontScale = 1 |
| fontColor = (1.0, 1.0, 1.0) |
| lineType = 2 |
|
|
| for i in range(len(imgs)): |
|
|
| title = titles[i + 1] |
| cv2.putText(imgs[i], title, bottomLeftCornerOfText, font, fontScale, |
| fontColor, lineType) |
|
|
| if i == 0: |
| cv2.putText(imgs[i], str(titles[i][0]), bottomRightCornerOfText, |
| font, fontScale, fontColor, lineType) |
|
|
| result = np.concatenate(imgs, axis=0).transpose(2, 0, 1) |
|
|
| return result |
|
|
|
|
| def make_test_gif(img_dir): |
|
|
| if img_dir is not None and len(os.listdir(img_dir)) > 0: |
| for dataset in os.listdir(img_dir): |
| for subject in sorted(os.listdir(osp.join(img_dir, dataset))): |
| img_lst = [] |
| im1 = None |
| for file in sorted( |
| os.listdir(osp.join(img_dir, dataset, subject))): |
| if file[-3:] not in ['obj', 'gif']: |
| img_path = os.path.join(img_dir, dataset, subject, |
| file) |
| if im1 == None: |
| im1 = Image.open(img_path) |
| else: |
| img_lst.append(Image.open(img_path)) |
|
|
| print(os.path.join(img_dir, dataset, subject, "out.gif")) |
| im1.save(os.path.join(img_dir, dataset, subject, "out.gif"), |
| save_all=True, |
| append_images=img_lst, |
| duration=500, |
| loop=0) |
|
|
|
|
| def export_cfg(logger, cfg): |
|
|
| cfg_export_file = osp.join(logger.save_dir, logger.name, |
| f"version_{logger.version}", "cfg.yaml") |
|
|
| if not osp.exists(cfg_export_file): |
| os.makedirs(osp.dirname(cfg_export_file), exist_ok=True) |
| with open(cfg_export_file, "w+") as file: |
| _ = yaml.dump(cfg, file) |
|
|