| import numpy as np |
| import cv2 |
| import random |
| from config import cfg |
| import math |
| from utils.human_models import smpl_x, smpl |
| from utils.transforms import cam2pixel, transform_joint_to_other_db |
| from plyfile import PlyData, PlyElement |
| import torch |
|
|
|
|
| def load_img(path, order='RGB'): |
| img = cv2.imread(path, cv2.IMREAD_COLOR | cv2.IMREAD_IGNORE_ORIENTATION) |
| if not isinstance(img, np.ndarray): |
| raise IOError("Fail to read %s" % path) |
|
|
| if order == 'RGB': |
| img = img[:, :, ::-1].copy() |
|
|
| img = img.astype(np.float32) |
| return img |
|
|
|
|
| def get_bbox(joint_img, joint_valid, extend_ratio=1.2): |
| x_img, y_img = joint_img[:, 0], joint_img[:, 1] |
| x_img = x_img[joint_valid == 1]; |
| y_img = y_img[joint_valid == 1]; |
| xmin = min(x_img); |
| ymin = min(y_img); |
| xmax = max(x_img); |
| ymax = max(y_img); |
|
|
| x_center = (xmin + xmax) / 2.; |
| width = xmax - xmin; |
| xmin = x_center - 0.5 * width * extend_ratio |
| xmax = x_center + 0.5 * width * extend_ratio |
|
|
| y_center = (ymin + ymax) / 2.; |
| height = ymax - ymin; |
| ymin = y_center - 0.5 * height * extend_ratio |
| ymax = y_center + 0.5 * height * extend_ratio |
|
|
| bbox = np.array([xmin, ymin, xmax - xmin, ymax - ymin]).astype(np.float32) |
| return bbox |
|
|
|
|
| def sanitize_bbox(bbox, img_width, img_height): |
| x, y, w, h = bbox |
| x1 = np.max((0, x)) |
| y1 = np.max((0, y)) |
| x2 = np.min((img_width - 1, x1 + np.max((0, w - 1)))) |
| y2 = np.min((img_height - 1, y1 + np.max((0, h - 1)))) |
| if w * h > 0 and x2 > x1 and y2 > y1: |
| bbox = np.array([x1, y1, x2 - x1, y2 - y1]) |
| else: |
| bbox = None |
|
|
| return bbox |
|
|
|
|
| def process_bbox(bbox, img_width, img_height, ratio=1.25): |
| bbox = sanitize_bbox(bbox, img_width, img_height) |
| if bbox is None: |
| return bbox |
|
|
| |
| w = bbox[2] |
| h = bbox[3] |
| c_x = bbox[0] + w / 2. |
| c_y = bbox[1] + h / 2. |
| aspect_ratio = cfg.input_img_shape[1] / cfg.input_img_shape[0] |
| if w > aspect_ratio * h: |
| h = w / aspect_ratio |
| elif w < aspect_ratio * h: |
| w = h * aspect_ratio |
| bbox[2] = w * ratio |
| bbox[3] = h * ratio |
| bbox[0] = c_x - bbox[2] / 2. |
| bbox[1] = c_y - bbox[3] / 2. |
|
|
| bbox = bbox.astype(np.float32) |
| return bbox |
|
|
|
|
| def get_aug_config(): |
| scale_factor = 0.25 |
| rot_factor = 30 |
| color_factor = 0.2 |
|
|
| scale = np.clip(np.random.randn(), -1.0, 1.0) * scale_factor + 1.0 |
| rot = np.clip(np.random.randn(), -2.0, |
| 2.0) * rot_factor if random.random() <= 0.6 else 0 |
| c_up = 1.0 + color_factor |
| c_low = 1.0 - color_factor |
| color_scale = np.array([random.uniform(c_low, c_up), random.uniform(c_low, c_up), random.uniform(c_low, c_up)]) |
| do_flip = random.random() <= 0.5 |
|
|
| return scale, rot, color_scale, do_flip |
|
|
|
|
| def augmentation(img, bbox, data_split): |
| if getattr(cfg, 'no_aug', False): |
| scale, rot, color_scale, do_flip = 1.0, 0.0, np.array([1, 1, 1]), False |
| elif data_split == 'train': |
| scale, rot, color_scale, do_flip = get_aug_config() |
| else: |
| scale, rot, color_scale, do_flip = 1.0, 0.0, np.array([1, 1, 1]), False |
|
|
| img, trans, inv_trans = generate_patch_image(img, bbox, scale, rot, do_flip, cfg.input_img_shape) |
| img = np.clip(img * color_scale[None, None, :], 0, 255) |
| return img, trans, inv_trans, rot, do_flip |
|
|
|
|
| def generate_patch_image(cvimg, bbox, scale, rot, do_flip, out_shape): |
| img = cvimg.copy() |
| img_height, img_width, img_channels = img.shape |
|
|
| bb_c_x = float(bbox[0] + 0.5 * bbox[2]) |
| bb_c_y = float(bbox[1] + 0.5 * bbox[3]) |
| bb_width = float(bbox[2]) |
| bb_height = float(bbox[3]) |
|
|
| if do_flip: |
| img = img[:, ::-1, :] |
| bb_c_x = img_width - bb_c_x - 1 |
|
|
| trans = gen_trans_from_patch_cv(bb_c_x, bb_c_y, bb_width, bb_height, out_shape[1], out_shape[0], scale, rot) |
| img_patch = cv2.warpAffine(img, trans, (int(out_shape[1]), int(out_shape[0])), flags=cv2.INTER_LINEAR) |
| img_patch = img_patch.astype(np.float32) |
| inv_trans = gen_trans_from_patch_cv(bb_c_x, bb_c_y, bb_width, bb_height, out_shape[1], out_shape[0], scale, rot, |
| inv=True) |
|
|
| return img_patch, trans, inv_trans |
|
|
|
|
| def rotate_2d(pt_2d, rot_rad): |
| x = pt_2d[0] |
| y = pt_2d[1] |
| sn, cs = np.sin(rot_rad), np.cos(rot_rad) |
| xx = x * cs - y * sn |
| yy = x * sn + y * cs |
| return np.array([xx, yy], dtype=np.float32) |
|
|
|
|
| def gen_trans_from_patch_cv(c_x, c_y, src_width, src_height, dst_width, dst_height, scale, rot, inv=False): |
| |
| src_w = src_width * scale |
| src_h = src_height * scale |
| src_center = np.array([c_x, c_y], dtype=np.float32) |
|
|
| |
| rot_rad = np.pi * rot / 180 |
| src_downdir = rotate_2d(np.array([0, src_h * 0.5], dtype=np.float32), rot_rad) |
| src_rightdir = rotate_2d(np.array([src_w * 0.5, 0], dtype=np.float32), rot_rad) |
|
|
| dst_w = dst_width |
| dst_h = dst_height |
| dst_center = np.array([dst_w * 0.5, dst_h * 0.5], dtype=np.float32) |
| dst_downdir = np.array([0, dst_h * 0.5], dtype=np.float32) |
| dst_rightdir = np.array([dst_w * 0.5, 0], dtype=np.float32) |
|
|
| src = np.zeros((3, 2), dtype=np.float32) |
| src[0, :] = src_center |
| src[1, :] = src_center + src_downdir |
| src[2, :] = src_center + src_rightdir |
|
|
| dst = np.zeros((3, 2), dtype=np.float32) |
| dst[0, :] = dst_center |
| dst[1, :] = dst_center + dst_downdir |
| dst[2, :] = dst_center + dst_rightdir |
|
|
| if inv: |
| trans = cv2.getAffineTransform(np.float32(dst), np.float32(src)) |
| else: |
| trans = cv2.getAffineTransform(np.float32(src), np.float32(dst)) |
|
|
| trans = trans.astype(np.float32) |
| return trans |
|
|
|
|
| def process_db_coord(joint_img, joint_cam, joint_valid, do_flip, img_shape, flip_pairs, img2bb_trans, rot, |
| src_joints_name, target_joints_name): |
| joint_img_original = joint_img.copy() |
| joint_img, joint_cam, joint_valid = joint_img.copy(), joint_cam.copy(), joint_valid.copy() |
|
|
| |
| if do_flip: |
| joint_cam[:, 0] = -joint_cam[:, 0] |
| joint_img[:, 0] = img_shape[1] - 1 - joint_img[:, 0] |
| for pair in flip_pairs: |
| joint_img[pair[0], :], joint_img[pair[1], :] = joint_img[pair[1], :].copy(), joint_img[pair[0], :].copy() |
| joint_cam[pair[0], :], joint_cam[pair[1], :] = joint_cam[pair[1], :].copy(), joint_cam[pair[0], :].copy() |
| joint_valid[pair[0], :], joint_valid[pair[1], :] = joint_valid[pair[1], :].copy(), joint_valid[pair[0], |
| :].copy() |
|
|
| |
| rot_aug_mat = np.array([[np.cos(np.deg2rad(-rot)), -np.sin(np.deg2rad(-rot)), 0], |
| [np.sin(np.deg2rad(-rot)), np.cos(np.deg2rad(-rot)), 0], |
| [0, 0, 1]], dtype=np.float32) |
| joint_cam = np.dot(rot_aug_mat, joint_cam.transpose(1, 0)).transpose(1, 0) |
|
|
| |
| joint_img_xy1 = np.concatenate((joint_img[:, :2], np.ones_like(joint_img[:, :1])), 1) |
| joint_img[:, :2] = np.dot(img2bb_trans, joint_img_xy1.transpose(1, 0)).transpose(1, 0) |
| joint_img[:, 0] = joint_img[:, 0] / cfg.input_img_shape[1] * cfg.output_hm_shape[2] |
| joint_img[:, 1] = joint_img[:, 1] / cfg.input_img_shape[0] * cfg.output_hm_shape[1] |
|
|
| |
| joint_trunc = joint_valid * ((joint_img_original[:, 0] > 0) * (joint_img[:, 0] >= 0) * (joint_img[:, 0] < cfg.output_hm_shape[2]) * \ |
| (joint_img_original[:, 1] > 0) *(joint_img[:, 1] >= 0) * (joint_img[:, 1] < cfg.output_hm_shape[1]) * \ |
| (joint_img_original[:, 2] > 0) *(joint_img[:, 2] >= 0) * (joint_img[:, 2] < cfg.output_hm_shape[0])).reshape(-1, |
| 1).astype( |
| np.float32) |
|
|
| |
| joint_img = transform_joint_to_other_db(joint_img, src_joints_name, target_joints_name) |
| joint_cam_wo_ra = transform_joint_to_other_db(joint_cam, src_joints_name, target_joints_name) |
| joint_valid = transform_joint_to_other_db(joint_valid, src_joints_name, target_joints_name) |
| joint_trunc = transform_joint_to_other_db(joint_trunc, src_joints_name, target_joints_name) |
|
|
| |
| joint_cam_ra = joint_cam_wo_ra.copy() |
| joint_cam_ra = joint_cam_ra - joint_cam_ra[smpl_x.root_joint_idx, None, :] |
| joint_cam_ra[smpl_x.joint_part['lhand'], :] = joint_cam_ra[smpl_x.joint_part['lhand'], :] - joint_cam_ra[ |
| smpl_x.lwrist_idx, None, |
| :] |
| joint_cam_ra[smpl_x.joint_part['rhand'], :] = joint_cam_ra[smpl_x.joint_part['rhand'], :] - joint_cam_ra[ |
| smpl_x.rwrist_idx, None, |
| :] |
| joint_cam_ra[smpl_x.joint_part['face'], :] = joint_cam_ra[smpl_x.joint_part['face'], :] - joint_cam_ra[smpl_x.neck_idx, |
| None, |
| :] |
|
|
| return joint_img, joint_cam_wo_ra, joint_cam_ra, joint_valid, joint_trunc |
|
|
|
|
| def process_human_model_output(human_model_param, cam_param, do_flip, img_shape, img2bb_trans, rot, human_model_type, joint_img=None): |
| if human_model_type == 'smplx': |
| human_model = smpl_x |
| rotation_valid = np.ones((smpl_x.orig_joint_num), dtype=np.float32) |
| coord_valid = np.ones((smpl_x.joint_num), dtype=np.float32) |
|
|
| root_pose, body_pose, shape, trans = human_model_param['root_pose'], human_model_param['body_pose'], \ |
| human_model_param['shape'], human_model_param['trans'] |
| if 'lhand_pose' in human_model_param and human_model_param['lhand_valid']: |
| lhand_pose = human_model_param['lhand_pose'] |
| else: |
| lhand_pose = np.zeros((3 * len(smpl_x.orig_joint_part['lhand'])), dtype=np.float32) |
| rotation_valid[smpl_x.orig_joint_part['lhand']] = 0 |
| coord_valid[smpl_x.joint_part['lhand']] = 0 |
| if 'rhand_pose' in human_model_param and human_model_param['rhand_valid']: |
| rhand_pose = human_model_param['rhand_pose'] |
| else: |
| rhand_pose = np.zeros((3 * len(smpl_x.orig_joint_part['rhand'])), dtype=np.float32) |
| rotation_valid[smpl_x.orig_joint_part['rhand']] = 0 |
| coord_valid[smpl_x.joint_part['rhand']] = 0 |
| if 'jaw_pose' in human_model_param and 'expr' in human_model_param and human_model_param['face_valid']: |
| jaw_pose = human_model_param['jaw_pose'] |
| expr = human_model_param['expr'] |
| expr_valid = True |
| else: |
| jaw_pose = np.zeros((3), dtype=np.float32) |
| expr = np.zeros((smpl_x.expr_code_dim), dtype=np.float32) |
| rotation_valid[smpl_x.orig_joint_part['face']] = 0 |
| coord_valid[smpl_x.joint_part['face']] = 0 |
| expr_valid = False |
| if 'gender' in human_model_param: |
| gender = human_model_param['gender'] |
| else: |
| gender = 'neutral' |
| root_pose = torch.FloatTensor(root_pose).view(1, 3) |
| body_pose = torch.FloatTensor(body_pose).view(-1, 3) |
| lhand_pose = torch.FloatTensor(lhand_pose).view(-1, 3) |
| rhand_pose = torch.FloatTensor(rhand_pose).view(-1, 3) |
| jaw_pose = torch.FloatTensor(jaw_pose).view(-1, 3) |
| shape = torch.FloatTensor(shape).view(1, -1) |
| expr = torch.FloatTensor(expr).view(1, -1) |
| trans = torch.FloatTensor(trans).view(1, -1) |
|
|
| |
| |
| if 'R' in cam_param: |
| R = np.array(cam_param['R'], dtype=np.float32).reshape(3, 3) |
| root_pose = root_pose.numpy() |
| root_pose, _ = cv2.Rodrigues(root_pose) |
| root_pose, _ = cv2.Rodrigues(np.dot(R, root_pose)) |
| root_pose = torch.from_numpy(root_pose).view(1, 3) |
|
|
| |
| zero_pose = torch.zeros((1, 3)).float() |
| with torch.no_grad(): |
| output = smpl_x.layer[gender](betas=shape, body_pose=body_pose.view(1, -1), global_orient=root_pose, |
| transl=trans, left_hand_pose=lhand_pose.view(1, -1), |
| right_hand_pose=rhand_pose.view(1, -1), jaw_pose=jaw_pose.view(1, -1), |
| leye_pose=zero_pose, reye_pose=zero_pose, expression=expr) |
| mesh_cam = output.vertices[0].numpy() |
| joint_cam = output.joints[0].numpy()[smpl_x.joint_idx, :] |
|
|
| |
| |
| if 'R' in cam_param and 't' in cam_param: |
| R, t = np.array(cam_param['R'], dtype=np.float32).reshape(3, 3), np.array(cam_param['t'], |
| dtype=np.float32).reshape(1, 3) |
| root_cam = joint_cam[smpl_x.root_joint_idx, None, :] |
| joint_cam = joint_cam - root_cam + np.dot(R, root_cam.transpose(1, 0)).transpose(1, 0) + t |
| mesh_cam = mesh_cam - root_cam + np.dot(R, root_cam.transpose(1, 0)).transpose(1, 0) + t |
|
|
| |
| pose = torch.cat((root_pose, body_pose, lhand_pose, rhand_pose, jaw_pose)) |
|
|
| |
| if 'focal' not in cam_param or 'princpt' not in cam_param: |
| assert joint_img is not None |
| else: |
| joint_img = cam2pixel(joint_cam, cam_param['focal'], cam_param['princpt']) |
|
|
| joint_img_original = joint_img.copy() |
|
|
| joint_cam = joint_cam - joint_cam[smpl_x.root_joint_idx, None, :] |
| joint_cam[smpl_x.joint_part['lhand'], :] = joint_cam[smpl_x.joint_part['lhand'], :] - joint_cam[ |
| smpl_x.lwrist_idx, None, |
| :] |
| joint_cam[smpl_x.joint_part['rhand'], :] = joint_cam[smpl_x.joint_part['rhand'], :] - joint_cam[ |
| smpl_x.rwrist_idx, None, |
| :] |
| joint_cam[smpl_x.joint_part['face'], :] = joint_cam[smpl_x.joint_part['face'], :] - joint_cam[smpl_x.neck_idx, |
| None, |
| :] |
| joint_img[smpl_x.joint_part['body'], 2] = (joint_cam[smpl_x.joint_part['body'], 2].copy() / ( |
| cfg.body_3d_size / 2) + 1) / 2. * cfg.output_hm_shape[0] |
| joint_img[smpl_x.joint_part['lhand'], 2] = (joint_cam[smpl_x.joint_part['lhand'], 2].copy() / ( |
| cfg.hand_3d_size / 2) + 1) / 2. * cfg.output_hm_shape[0] |
| joint_img[smpl_x.joint_part['rhand'], 2] = (joint_cam[smpl_x.joint_part['rhand'], 2].copy() / ( |
| cfg.hand_3d_size / 2) + 1) / 2. * cfg.output_hm_shape[0] |
| joint_img[smpl_x.joint_part['face'], 2] = (joint_cam[smpl_x.joint_part['face'], 2].copy() / ( |
| cfg.face_3d_size / 2) + 1) / 2. * cfg.output_hm_shape[0] |
|
|
| elif human_model_type == 'smpl': |
| human_model = smpl |
| pose, shape, trans = human_model_param['pose'], human_model_param['shape'], human_model_param['trans'] |
| if 'gender' in human_model_param: |
| gender = human_model_param['gender'] |
| else: |
| gender = 'neutral' |
| pose = torch.FloatTensor(pose).view(-1, 3) |
| shape = torch.FloatTensor(shape).view(1, -1); |
| trans = torch.FloatTensor(trans).view(1, -1) |
|
|
| |
| |
| if 'R' in cam_param: |
| R = np.array(cam_param['R'], dtype=np.float32).reshape(3, 3) |
| root_pose = pose[smpl.orig_root_joint_idx, :].numpy() |
| root_pose, _ = cv2.Rodrigues(root_pose) |
| root_pose, _ = cv2.Rodrigues(np.dot(R, root_pose)) |
| pose[smpl.orig_root_joint_idx] = torch.from_numpy(root_pose).view(3) |
|
|
| |
| root_pose = pose[smpl.orig_root_joint_idx].view(1, 3) |
| body_pose = torch.cat((pose[:smpl.orig_root_joint_idx, :], pose[smpl.orig_root_joint_idx + 1:, :])).view(1, -1) |
| with torch.no_grad(): |
| output = smpl.layer[gender](betas=shape, body_pose=body_pose, global_orient=root_pose, transl=trans) |
| mesh_cam = output.vertices[0].numpy() |
| joint_cam = np.dot(smpl.joint_regressor, mesh_cam) |
|
|
| |
| |
| if 'R' in cam_param and 't' in cam_param: |
| R, t = np.array(cam_param['R'], dtype=np.float32).reshape(3, 3), np.array(cam_param['t'], |
| dtype=np.float32).reshape(1, 3) |
| root_cam = joint_cam[smpl.root_joint_idx, None, :] |
| joint_cam = joint_cam - root_cam + np.dot(R, root_cam.transpose(1, 0)).transpose(1, 0) + t |
| mesh_cam = mesh_cam - root_cam + np.dot(R, root_cam.transpose(1, 0)).transpose(1, 0) + t |
|
|
| |
| if 'focal' not in cam_param or 'princpt' not in cam_param: |
| assert joint_img is not None |
| else: |
| joint_img = cam2pixel(joint_cam, cam_param['focal'], cam_param['princpt']) |
| |
| joint_img_original = joint_img.copy() |
| joint_cam = joint_cam - joint_cam[smpl.root_joint_idx, None, :] |
| joint_img[:, 2] = (joint_cam[:, 2].copy() / (cfg.body_3d_size / 2) + 1) / 2. * cfg.output_hm_shape[ |
| 0] |
|
|
| elif human_model_type == 'mano': |
| human_model = mano |
| pose, shape, trans = human_model_param['pose'], human_model_param['shape'], human_model_param['trans'] |
| hand_type = human_model_param['hand_type'] |
| pose = torch.FloatTensor(pose).view(-1, 3) |
| shape = torch.FloatTensor(shape).view(1, -1); |
| trans = torch.FloatTensor(trans).view(1, -1) |
|
|
| |
| |
| if 'R' in cam_param: |
| R = np.array(cam_param['R'], dtype=np.float32).reshape(3, 3) |
| root_pose = pose[mano.orig_root_joint_idx, :].numpy() |
| root_pose, _ = cv2.Rodrigues(root_pose) |
| root_pose, _ = cv2.Rodrigues(np.dot(R, root_pose)) |
| pose[mano.orig_root_joint_idx] = torch.from_numpy(root_pose).view(3) |
|
|
| |
| root_pose = pose[mano.orig_root_joint_idx].view(1, 3) |
| hand_pose = torch.cat((pose[:mano.orig_root_joint_idx, :], pose[mano.orig_root_joint_idx + 1:, :])).view(1, -1) |
| with torch.no_grad(): |
| output = mano.layer[hand_type](betas=shape, hand_pose=hand_pose, global_orient=root_pose, transl=trans) |
| mesh_cam = output.vertices[0].numpy() |
| joint_cam = np.dot(mano.joint_regressor, mesh_cam) |
|
|
| |
| |
| if 'R' in cam_param and 't' in cam_param: |
| R, t = np.array(cam_param['R'], dtype=np.float32).reshape(3, 3), np.array(cam_param['t'], |
| dtype=np.float32).reshape(1, 3) |
| root_cam = joint_cam[mano.root_joint_idx, None, :] |
| joint_cam = joint_cam - root_cam + np.dot(R, root_cam.transpose(1, 0)).transpose(1, 0) + t |
| mesh_cam = mesh_cam - root_cam + np.dot(R, root_cam.transpose(1, 0)).transpose(1, 0) + t |
|
|
| |
| if 'focal' not in cam_param or 'princpt' not in cam_param: |
| assert joint_img is not None |
| else: |
| joint_img = cam2pixel(joint_cam, cam_param['focal'], cam_param['princpt']) |
| joint_cam = joint_cam - joint_cam[mano.root_joint_idx, None, :] |
| joint_img[:, 2] = (joint_cam[:, 2].copy() / (cfg.hand_3d_size / 2) + 1) / 2. * cfg.output_hm_shape[ |
| 0] |
|
|
| mesh_cam_orig = mesh_cam.copy() |
|
|
| |
| |
|
|
| |
| if do_flip: |
| joint_cam[:, 0] = -joint_cam[:, 0] |
| joint_img[:, 0] = img_shape[1] - 1 - joint_img[:, 0] |
| for pair in human_model.flip_pairs: |
| joint_cam[pair[0], :], joint_cam[pair[1], :] = joint_cam[pair[1], :].copy(), joint_cam[pair[0], :].copy() |
| joint_img[pair[0], :], joint_img[pair[1], :] = joint_img[pair[1], :].copy(), joint_img[pair[0], :].copy() |
| if human_model_type == 'smplx': |
| coord_valid[pair[0]], coord_valid[pair[1]] = coord_valid[pair[1]].copy(), coord_valid[pair[0]].copy() |
|
|
| |
| joint_img_xy1 = np.concatenate((joint_img[:, :2], np.ones_like(joint_img[:, 0:1])), 1) |
| joint_img[:, :2] = np.dot(img2bb_trans, joint_img_xy1.transpose(1, 0)).transpose(1, 0)[:, :2] |
| joint_img[:, 0] = joint_img[:, 0] / cfg.input_img_shape[1] * cfg.output_hm_shape[2] |
| joint_img[:, 1] = joint_img[:, 1] / cfg.input_img_shape[0] * cfg.output_hm_shape[1] |
|
|
| |
| |
| joint_trunc = ((joint_img_original[:, 0] > 0) * (joint_img[:, 0] >= 0) * (joint_img[:, 0] < cfg.output_hm_shape[2]) * \ |
| (joint_img_original[:, 1] > 0) * (joint_img[:, 1] >= 0) * (joint_img[:, 1] < cfg.output_hm_shape[1]) * \ |
| (joint_img_original[:, 2] > 0) * (joint_img[:, 2] >= 0) * (joint_img[:, 2] < cfg.output_hm_shape[0])).reshape(-1, 1).astype( |
| np.float32) |
|
|
| |
| rot_aug_mat = np.array([[np.cos(np.deg2rad(-rot)), -np.sin(np.deg2rad(-rot)), 0], |
| [np.sin(np.deg2rad(-rot)), np.cos(np.deg2rad(-rot)), 0], |
| [0, 0, 1]], dtype=np.float32) |
| |
| joint_cam = np.dot(rot_aug_mat, joint_cam.transpose(1, 0)).transpose(1, 0) |
| |
| |
| if do_flip: |
| for pair in human_model.orig_flip_pairs: |
| pose[pair[0], :], pose[pair[1], :] = pose[pair[1], :].clone(), pose[pair[0], :].clone() |
| if human_model_type == 'smplx': |
| rotation_valid[pair[0]], rotation_valid[pair[1]] = rotation_valid[pair[1]].copy(), rotation_valid[ |
| pair[0]].copy() |
| pose[:, 1:3] *= -1 |
|
|
| |
| pose = pose.numpy() |
| root_pose = pose[human_model.orig_root_joint_idx, :] |
| root_pose, _ = cv2.Rodrigues(root_pose) |
| root_pose, _ = cv2.Rodrigues(np.dot(rot_aug_mat, root_pose)) |
| pose[human_model.orig_root_joint_idx] = root_pose.reshape(3) |
|
|
| |
| shape[(shape.abs() > 3).any(dim=1)] = 0. |
| shape = shape.numpy().reshape(-1) |
|
|
| |
| if human_model_type == 'smplx': |
| pose = pose.reshape(-1) |
| expr = expr.numpy().reshape(-1) |
|
|
| return joint_img, joint_cam, joint_trunc, pose, shape, expr, rotation_valid, coord_valid, expr_valid, mesh_cam_orig |
| elif human_model_type == 'smpl': |
| pose = pose.reshape(-1) |
| return joint_img, joint_cam, joint_trunc, pose, shape, mesh_cam_orig |
| elif human_model_type == 'mano': |
| pose = pose.reshape(-1) |
| return joint_img, joint_cam, joint_trunc, pose, shape, mesh_cam_orig |
|
|
|
|
| def get_fitting_error_3D(db_joint, db_joint_from_fit, joint_valid): |
| |
| db_joint = db_joint[np.tile(joint_valid, (1, 3)) == 1].reshape(-1, 3) |
| db_joint_from_fit = db_joint_from_fit[np.tile(joint_valid, (1, 3)) == 1].reshape(-1, 3) |
|
|
| db_joint_from_fit = db_joint_from_fit - np.mean(db_joint_from_fit, 0)[None, :] + np.mean(db_joint, 0)[None, |
| :] |
| error = np.sqrt(np.sum((db_joint - db_joint_from_fit) ** 2, 1)).mean() |
| return error |
|
|
|
|
| def load_obj(file_name): |
| v = [] |
| obj_file = open(file_name) |
| for line in obj_file: |
| words = line.split(' ') |
| if words[0] == 'v': |
| x, y, z = float(words[1]), float(words[2]), float(words[3]) |
| v.append(np.array([x, y, z])) |
| return np.stack(v) |
|
|
|
|
| def load_ply(file_name): |
| plydata = PlyData.read(file_name) |
| x = plydata['vertex']['x'] |
| y = plydata['vertex']['y'] |
| z = plydata['vertex']['z'] |
| v = np.stack((x, y, z), 1) |
| return v |
|
|
| def resize_bbox(bbox, scale=1.2): |
| if isinstance(bbox, list): |
| x1, y1, x2, y2 = bbox[0], bbox[1], bbox[2], bbox[3] |
| else: |
| x1, y1, x2, y2 = bbox |
| x_center = (x1+x2)/2.0 |
| y_center = (y1+y2)/2.0 |
| x_size, y_size = x2-x1, y2-y1 |
| x1_resize = x_center-x_size/2.0*scale |
| x2_resize = x_center+x_size/2.0*scale |
| y1_resize = y_center - y_size / 2.0 * scale |
| y2_resize = y_center + y_size / 2.0 * scale |
| bbox[0], bbox[1], bbox[2], bbox[3] = x1_resize, y1_resize, x2_resize, y2_resize |
| return bbox |