118 lines
5.3 KiB
Python
118 lines
5.3 KiB
Python
'''
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@ Date: 2021-04-13 19:46:51
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@ Author: Qing Shuai
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@ LastEditors: Qing Shuai
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@ LastEditTime: 2021-06-13 17:56:25
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@ FilePath: /EasyMocap/apps/demo/mv1p.py
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'''
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from tqdm import tqdm
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from easymocap.smplmodel import check_keypoints, load_model, select_nf
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from easymocap.mytools import simple_recon_person, Timer, projectN3
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from easymocap.pipeline import smpl_from_keypoints3d2d
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import os
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from os.path import join
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import numpy as np
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def check_repro_error(keypoints3d, kpts_repro, keypoints2d, P, MAX_REPRO_ERROR):
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square_diff = (keypoints2d[:, :, :2] - kpts_repro[:, :, :2])**2
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conf = keypoints3d[None, :, -1:]
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conf = (keypoints3d[None, :, -1:] > 0) * (keypoints2d[:, :, -1:] > 0)
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dist = np.sqrt((((kpts_repro[..., :2] - keypoints2d[..., :2])*conf)**2).sum(axis=-1))
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vv, jj = np.where(dist > MAX_REPRO_ERROR)
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if vv.shape[0] > 0:
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keypoints2d[vv, jj, -1] = 0.
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keypoints3d, kpts_repro = simple_recon_person(keypoints2d, P)
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return keypoints3d, kpts_repro
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def mv1pmf_skel(dataset, check_repro=True, args=None):
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MIN_CONF_THRES = args.thres2d
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no_img = not (args.vis_det or args.vis_repro)
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dataset.no_img = no_img
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kp3ds = []
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start, end = args.start, min(args.end, len(dataset))
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kpts_repro = None
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for nf in tqdm(range(start, end), desc='triangulation'):
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images, annots = dataset[nf]
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check_keypoints(annots['keypoints'], WEIGHT_DEBUFF=1, min_conf=MIN_CONF_THRES)
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keypoints3d, kpts_repro = simple_recon_person(annots['keypoints'], dataset.Pall)
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if check_repro:
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keypoints3d, kpts_repro = check_repro_error(keypoints3d, kpts_repro, annots['keypoints'], P=dataset.Pall, MAX_REPRO_ERROR=args.MAX_REPRO_ERROR)
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# keypoints3d, kpts_repro = robust_triangulate(annots['keypoints'], dataset.Pall, config=config, ret_repro=True)
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kp3ds.append(keypoints3d)
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if args.vis_det:
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dataset.vis_detections(images, annots, nf, sub_vis=args.sub_vis)
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if args.vis_repro:
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dataset.vis_repro(images, kpts_repro, nf=nf, sub_vis=args.sub_vis)
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# smooth the skeleton
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if args.smooth3d > 0:
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kp3ds = smooth_skeleton(kp3ds, args.smooth3d)
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for nf in tqdm(range(len(kp3ds)), desc='dump'):
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dataset.write_keypoints3d(kp3ds[nf], nf+start)
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def mv1pmf_smpl(dataset, args, weight_pose=None, weight_shape=None):
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dataset.skel_path = args.skel
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kp3ds = []
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start, end = args.start, min(args.end, len(dataset))
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keypoints2d, bboxes = [], []
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dataset.no_img = True
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for nf in tqdm(range(start, end), desc='loading'):
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images, annots = dataset[nf]
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keypoints2d.append(annots['keypoints'])
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bboxes.append(annots['bbox'])
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kp3ds = dataset.read_skeleton(start, end)
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keypoints2d = np.stack(keypoints2d)
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bboxes = np.stack(bboxes)
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kp3ds = check_keypoints(kp3ds, 1)
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# optimize the human shape
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with Timer('Loading {}, {}'.format(args.model, args.gender), not args.verbose):
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body_model = load_model(gender=args.gender, model_type=args.model)
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params = smpl_from_keypoints3d2d(body_model, kp3ds, keypoints2d, bboxes,
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dataset.Pall, config=dataset.config, args=args,
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weight_shape=weight_shape, weight_pose=weight_pose)
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# write out the results
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dataset.no_img = not (args.vis_smpl or args.vis_repro)
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for nf in tqdm(range(start, end), desc='render'):
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images, annots = dataset[nf]
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param = select_nf(params, nf-start)
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dataset.write_smpl(param, nf)
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if args.write_smpl_full:
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param_full = param.copy()
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param_full['poses'] = body_model.full_poses(param['poses'])
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dataset.write_smpl(param_full, nf, mode='smpl_full')
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if args.write_vertices:
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vertices = body_model(return_verts=True, return_tensor=False, **param)
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write_data = [{'id': 0, 'vertices': vertices[0]}]
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dataset.write_vertices(write_data, nf)
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if args.vis_smpl:
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vertices = body_model(return_verts=True, return_tensor=False, **param)
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dataset.vis_smpl(vertices=vertices[0], faces=body_model.faces, images=images, nf=nf, sub_vis=args.sub_vis, add_back=True)
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if args.vis_repro:
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keypoints = body_model(return_verts=False, return_tensor=False, **param)[0]
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kpts_repro = projectN3(keypoints, dataset.Pall)
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dataset.vis_repro(images, kpts_repro, nf=nf, sub_vis=args.sub_vis, mode='repro_smpl')
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if __name__ == "__main__":
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from easymocap.mytools import load_parser, parse_parser
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from easymocap.dataset import CONFIG, MV1PMF
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parser = load_parser()
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parser.add_argument('--skel', action='store_true')
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args = parse_parser(parser)
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help="""
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Demo code for multiple views and one person:
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- Input : {} => {}
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- Output: {}
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- Body : {}=>{}, {}
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""".format(args.path, ', '.join(args.sub), args.out,
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args.model, args.gender, args.body)
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print(help)
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skel_path = join(args.out, 'keypoints3d')
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dataset = MV1PMF(args.path, annot_root=args.annot, cams=args.sub, out=args.out,
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config=CONFIG[args.body], kpts_type=args.body,
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undis=args.undis, no_img=False, verbose=args.verbose)
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dataset.writer.save_origin = args.save_origin
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if args.skel or not os.path.exists(skel_path):
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mv1pmf_skel(dataset, check_repro=True, args=args)
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mv1pmf_smpl(dataset, args)
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