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- import numpy as np
- from sklearn.utils.linear_assignment_ import linear_assignment
- # from numba import jit
- import copy
- class Tracker(object):
- def __init__(self, opt):
- self.opt = opt
- self.reset()
- def init_track(self, results):
- for item in results:
- if item['score'] > self.opt.new_thresh:
- self.id_count += 1
- # active and age are never used in the paper
- item['active'] = 1
- item['age'] = 1
- item['tracking_id'] = self.id_count
- if not ('ct' in item):
- bbox = item['bbox']
- item['ct'] = [(bbox[0] + bbox[2]) / 2, (bbox[1] + bbox[3]) / 2]
- self.tracks.append(item)
- def reset(self):
- self.id_count = 0
- self.tracks = []
- def step(self, results_with_low, public_det=None):
-
- results = [item for item in results_with_low if item['score'] >= self.opt.track_thresh]
-
- # first association
- N = len(results)
- M = len(self.tracks)
- dets = np.array(
- [det['ct'] + det['tracking'] for det in results], np.float32) # N x 2
- track_size = np.array([((track['bbox'][2] - track['bbox'][0]) * \
- (track['bbox'][3] - track['bbox'][1])) \
- for track in self.tracks], np.float32) # M
- track_cat = np.array([track['class'] for track in self.tracks], np.int32) # M
- item_size = np.array([((item['bbox'][2] - item['bbox'][0]) * \
- (item['bbox'][3] - item['bbox'][1])) \
- for item in results], np.float32) # N
- item_cat = np.array([item['class'] for item in results], np.int32) # N
- tracks = np.array(
- [pre_det['ct'] for pre_det in self.tracks], np.float32) # M x 2
- dist = (((tracks.reshape(1, -1, 2) - \
- dets.reshape(-1, 1, 2)) ** 2).sum(axis=2)) # N x M
- invalid = ((dist > track_size.reshape(1, M)) + \
- (dist > item_size.reshape(N, 1)) + \
- (item_cat.reshape(N, 1) != track_cat.reshape(1, M))) > 0
- dist = dist + invalid * 1e18
-
- if self.opt.hungarian:
- assert not self.opt.hungarian, 'we only verify centertrack with greedy_assignment'
- item_score = np.array([item['score'] for item in results], np.float32) # N
- dist[dist > 1e18] = 1e18
- matched_indices = linear_assignment(dist)
- else:
- matched_indices = greedy_assignment(copy.deepcopy(dist))
-
- unmatched_dets = [d for d in range(dets.shape[0]) \
- if not (d in matched_indices[:, 0])]
- unmatched_tracks = [d for d in range(tracks.shape[0]) \
- if not (d in matched_indices[:, 1])]
- if self.opt.hungarian:
- assert not self.opt.hungarian, 'we only verify centertrack with greedy_assignment'
- matches = []
- for m in matched_indices:
- if dist[m[0], m[1]] > 1e16:
- unmatched_dets.append(m[0])
- unmatched_tracks.append(m[1])
- else:
- matches.append(m)
- matches = np.array(matches).reshape(-1, 2)
- else:
- matches = matched_indices
- ret = []
- for m in matches:
- track = results[m[0]]
- track['tracking_id'] = self.tracks[m[1]]['tracking_id']
- track['age'] = 1
- track['active'] = self.tracks[m[1]]['active'] + 1
- ret.append(track)
-
- if self.opt.public_det and len(unmatched_dets) > 0:
- assert not self.opt.public_det, 'we only verify centertrack with private detection'
- # Public detection: only create tracks from provided detections
- pub_dets = np.array([d['ct'] for d in public_det], np.float32)
- dist3 = ((dets.reshape(-1, 1, 2) - pub_dets.reshape(1, -1, 2)) ** 2).sum(
- axis=2)
- matched_dets = [d for d in range(dets.shape[0]) \
- if not (d in unmatched_dets)]
- dist3[matched_dets] = 1e18
- for j in range(len(pub_dets)):
- i = dist3[:, j].argmin()
- if dist3[i, j] < item_size[i]:
- dist3[i, :] = 1e18
- track = results[i]
- if track['score'] > self.opt.new_thresh:
- self.id_count += 1
- track['tracking_id'] = self.id_count
- track['age'] = 1
- track['active'] = 1
- ret.append(track)
- else:
- # Private detection: create tracks for all un-matched detections
- for i in unmatched_dets:
- track = results[i]
- if track['score'] > self.opt.new_thresh:
- self.id_count += 1
- track['tracking_id'] = self.id_count
- track['age'] = 1
- track['active'] = 1
- ret.append(track)
-
- # second association
- results_second = [item for item in results_with_low if item['score'] < self.opt.track_thresh]
-
- self_tracks_second = [self.tracks[i] for i in unmatched_tracks if self.tracks[i]['active'] > 0]
- second2original = [i for i in unmatched_tracks if self.tracks[i]['active'] > 0]
-
- N = len(results_second)
- M = len(self_tracks_second)
-
- if N > 0 and M > 0:
- dets = np.array(
- [det['ct'] + det['tracking'] for det in results_second], np.float32) # N x 2
- track_size = np.array([((track['bbox'][2] - track['bbox'][0]) * \
- (track['bbox'][3] - track['bbox'][1])) \
- for track in self_tracks_second], np.float32) # M
- track_cat = np.array([track['class'] for track in self_tracks_second], np.int32) # M
- item_size = np.array([((item['bbox'][2] - item['bbox'][0]) * \
- (item['bbox'][3] - item['bbox'][1])) \
- for item in results_second], np.float32) # N
- item_cat = np.array([item['class'] for item in results_second], np.int32) # N
- tracks_second = np.array(
- [pre_det['ct'] for pre_det in self_tracks_second], np.float32) # M x 2
- dist = (((tracks_second.reshape(1, -1, 2) - \
- dets.reshape(-1, 1, 2)) ** 2).sum(axis=2)) # N x M
- invalid = ((dist > track_size.reshape(1, M)) + \
- (dist > item_size.reshape(N, 1)) + \
- (item_cat.reshape(N, 1) != track_cat.reshape(1, M))) > 0
- dist = dist + invalid * 1e18
-
- matched_indices_second = greedy_assignment(copy.deepcopy(dist), 1e8)
-
- unmatched_tracks_second = [d for d in range(tracks_second.shape[0]) \
- if not (d in matched_indices_second[:, 1])]
- matches_second = matched_indices_second
-
- for m in matches_second:
- track = results_second[m[0]]
- track['tracking_id'] = self_tracks_second[m[1]]['tracking_id']
- track['age'] = 1
- track['active'] = self_tracks_second[m[1]]['active'] + 1
- ret.append(track)
-
- unmatched_tracks = [second2original[i] for i in unmatched_tracks_second] + \
- [i for i in unmatched_tracks if self.tracks[i]['active'] == 0]
- #. for debug
- # unmatched_tracks = [i for i in unmatched_tracks if self.tracks[i]['active'] > 0] + \
- # [i for i in unmatched_tracks if self.tracks[i]['active'] == 0]
-
- for i in unmatched_tracks:
- track = self.tracks[i]
- if track['age'] < self.opt.max_age:
- track['age'] += 1
- track['active'] = 0
- bbox = track['bbox']
- ct = track['ct']
- v = [0, 0]
- track['bbox'] = [
- bbox[0] + v[0], bbox[1] + v[1],
- bbox[2] + v[0], bbox[3] + v[1]]
- track['ct'] = [ct[0] + v[0], ct[1] + v[1]]
- ret.append(track)
- self.tracks = ret
- return ret
- def greedy_assignment(dist, thresh=1e16):
- matched_indices = []
- if dist.shape[1] == 0:
- return np.array(matched_indices, np.int32).reshape(-1, 2)
- for i in range(dist.shape[0]):
- j = dist[i].argmin()
- if dist[i][j] < thresh:
- dist[:, j] = 1e18
- matched_indices.append([i, j])
- return np.array(matched_indices, np.int32).reshape(-1, 2)
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