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from __future__ import absolute_import |
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from __future__ import division |
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from __future__ import print_function |
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import numpy as np |
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from .ddd_utils import ddd2locrot |
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from .image import transform_preds |
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def get_pred_depth(depth): |
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return depth |
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def get_alpha(rot): |
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idx = rot[:, 1] > rot[:, 5] |
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alpha1 = np.arctan(rot[:, 2] / rot[:, 3]) + (-0.5 * np.pi) |
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alpha2 = np.arctan(rot[:, 6] / rot[:, 7]) + (0.5 * np.pi) |
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return alpha1 * idx + alpha2 * (1 - idx) |
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def ddd_post_process_2d(dets, c, s, opt): |
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ret = [] |
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include_wh = dets.shape[2] > 16 |
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for i in range(dets.shape[0]): |
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top_preds = {} |
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dets[i, :, :2] = transform_preds( |
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dets[i, :, 0:2], c[i], s[i], (opt.output_w, opt.output_h)) |
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classes = dets[i, :, -1] |
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for j in range(opt.num_classes): |
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inds = (classes == j) |
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top_preds[j + 1] = np.concatenate([ |
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dets[i, inds, :3].astype(np.float32), |
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get_alpha(dets[i, inds, 3:11])[:, np.newaxis].astype(np.float32), |
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get_pred_depth(dets[i, inds, 11:12]).astype(np.float32), |
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dets[i, inds, 12:15].astype(np.float32)], axis=1) |
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if include_wh: |
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top_preds[j + 1] = np.concatenate([ |
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top_preds[j + 1], |
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transform_preds( |
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dets[i, inds, 15:17], c[i], s[i], (opt.output_w, opt.output_h)) |
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.astype(np.float32)], axis=1) |
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ret.append(top_preds) |
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return ret |
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def ddd_post_process_3d(dets, calibs): |
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ret = [] |
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for i in range(len(dets)): |
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preds = {} |
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for cls_ind in dets[i].keys(): |
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preds[cls_ind] = [] |
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for j in range(len(dets[i][cls_ind])): |
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center = dets[i][cls_ind][j][:2] |
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score = dets[i][cls_ind][j][2] |
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alpha = dets[i][cls_ind][j][3] |
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depth = dets[i][cls_ind][j][4] |
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dimensions = dets[i][cls_ind][j][5:8] |
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wh = dets[i][cls_ind][j][8:10] |
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locations, rotation_y = ddd2locrot( |
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center, alpha, dimensions, depth, calibs[0]) |
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bbox = [center[0] - wh[0] / 2, center[1] - wh[1] / 2, |
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center[0] + wh[0] / 2, center[1] + wh[1] / 2] |
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pred = [alpha] + bbox + dimensions.tolist() + \ |
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locations.tolist() + [rotation_y, score] |
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preds[cls_ind].append(pred) |
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preds[cls_ind] = np.array(preds[cls_ind], dtype=np.float32) |
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ret.append(preds) |
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return ret |
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def ddd_post_process(dets, c, s, calibs, opt): |
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dets = ddd_post_process_2d(dets, c, s, opt) |
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dets = ddd_post_process_3d(dets, calibs) |
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return dets |
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def ctdet_4ps_post_process(dets, c, s, h, w, num_classes): |
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ret = [] |
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for i in range(dets.shape[0]): |
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top_preds = {} |
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dets[i, :, 0:2] = transform_preds(dets[i, :, 0:2], c[i], s[i], (w, h)) |
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dets[i, :, 2:4] = transform_preds(dets[i, :, 2:4], c[i], s[i], (w, h)) |
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dets[i, :, 4:6] = transform_preds(dets[i, :, 4:6], c[i], s[i], (w, h)) |
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dets[i, :, 6:8] = transform_preds(dets[i, :, 6:8], c[i], s[i], (w, h)) |
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classes = dets[i, :, 9] |
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for j in range(num_classes): |
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inds = (classes == j) |
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top_preds[j + 1] = np.concatenate([ |
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dets[i, inds, :8].astype(np.float32), |
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dets[i, inds, 8:].astype(np.float32)], axis=1).tolist() |
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ret.append(top_preds) |
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return ret |
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def ctdet_post_process(dets, c, s, h, w, num_classes): |
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ret = [] |
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for i in range(dets.shape[0]): |
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top_preds = {} |
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dets[i, :, :2] = transform_preds( |
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dets[i, :, 0:2], c[i], s[i], (w, h)) |
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dets[i, :, 2:4] = transform_preds( |
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dets[i, :, 2:4], c[i], s[i], (w, h)) |
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classes = dets[i, :, -1] |
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for j in range(num_classes): |
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inds = (classes == j) |
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top_preds[j + 1] = np.concatenate([ |
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dets[i, inds, :4].astype(np.float32), |
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dets[i, inds, 4:5].astype(np.float32)], axis=1).tolist() |
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ret.append(top_preds) |
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return ret |
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def ctdet_corner_post_process(corner, c, s, h, w, num_classes): |
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corner[:, :2] = transform_preds(corner[:, 0:2], c[0], s[0], (w, h)) |
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return corner |
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def multi_pose_post_process(dets, c, s, h, w): |
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ret = [] |
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for i in range(dets.shape[0]): |
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bbox = transform_preds(dets[i, :, :4].reshape(-1, 2), c[i], s[i], (w, h)) |
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pts = transform_preds(dets[i, :, 5:39].reshape(-1, 2), c[i], s[i], (w, h)) |
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top_preds = np.concatenate( |
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[bbox.reshape(-1, 4), dets[i, :, 4:5], |
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pts.reshape(-1, 34)], axis=1).astype(np.float32).tolist() |
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ret.append({np.ones(1, dtype=np.int32)[0]: top_preds}) |
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return ret |
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