Spaces:
Sleeping
Sleeping
File size: 13,238 Bytes
e1832f4 |
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260 261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295 296 297 298 299 300 301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324 325 326 327 328 329 330 331 332 333 334 335 336 337 338 339 340 341 342 343 344 345 346 347 348 349 350 351 352 353 354 355 356 357 358 359 360 361 362 363 364 365 366 367 368 369 370 371 372 373 374 375 376 377 378 379 380 381 382 383 384 385 386 387 388 389 390 391 392 393 394 395 396 397 398 399 400 401 402 403 404 405 406 |
# Mikel Broström 🔥 Yolo Tracking 🧾 AGPL-3.0 license
import lap
import numpy as np
import scipy
import torch
from scipy.spatial.distance import cdist
from boxmot.utils.iou import AssociationFunction
"""
Table for the 0.95 quantile of the chi-square distribution with N degrees of
freedom (contains values for N=1, ..., 9). Taken from MATLAB/Octave's chi2inv
function and used as Mahalanobis gating threshold.
"""
chi2inv95 = {
1: 3.8415,
2: 5.9915,
3: 7.8147,
4: 9.4877,
5: 11.070,
6: 12.592,
7: 14.067,
8: 15.507,
9: 16.919,
}
def merge_matches(m1, m2, shape):
O, P, Q = shape
m1 = np.asarray(m1)
m2 = np.asarray(m2)
M1 = scipy.sparse.coo_matrix((np.ones(len(m1)), (m1[:, 0], m1[:, 1])), shape=(O, P))
M2 = scipy.sparse.coo_matrix((np.ones(len(m2)), (m2[:, 0], m2[:, 1])), shape=(P, Q))
mask = M1 * M2
match = mask.nonzero()
match = list(zip(match[0], match[1]))
unmatched_O = tuple(set(range(O)) - set([i for i, j in match]))
unmatched_Q = tuple(set(range(Q)) - set([j for i, j in match]))
return match, unmatched_O, unmatched_Q
def _indices_to_matches(cost_matrix, indices, thresh):
matched_cost = cost_matrix[tuple(zip(*indices))]
matched_mask = matched_cost <= thresh
matches = indices[matched_mask]
unmatched_a = tuple(set(range(cost_matrix.shape[0])) - set(matches[:, 0]))
unmatched_b = tuple(set(range(cost_matrix.shape[1])) - set(matches[:, 1]))
return matches, unmatched_a, unmatched_b
def linear_assignment(cost_matrix, thresh):
if cost_matrix.size == 0:
return (
np.empty((0, 2), dtype=int),
tuple(range(cost_matrix.shape[0])),
tuple(range(cost_matrix.shape[1])),
)
matches, unmatched_a, unmatched_b = [], [], []
cost, x, y = lap.lapjv(cost_matrix, extend_cost=True, cost_limit=thresh)
for ix, mx in enumerate(x):
if mx >= 0:
matches.append([ix, mx])
unmatched_a = np.where(x < 0)[0]
unmatched_b = np.where(y < 0)[0]
matches = np.asarray(matches)
return matches, unmatched_a, unmatched_b
def ious(atlbrs, btlbrs):
"""
Compute cost based on IoU
:type atlbrs: list[tlbr] | np.ndarray
:type atlbrs: list[tlbr] | np.ndarray
:rtype ious np.ndarray
"""
ious = np.zeros((len(atlbrs), len(btlbrs)), dtype=np.float32)
if ious.size == 0:
return ious
ious = bbox_ious(
np.ascontiguousarray(atlbrs, dtype=np.float32),
np.ascontiguousarray(btlbrs, dtype=np.float32),
)
return ious
def d_iou_distance(atracks, btracks):
"""
Compute cost based on IoU
:type atracks: list[STrack]
:type btracks: list[STrack]
:rtype cost_matrix np.ndarray
"""
if (len(atracks) > 0 and isinstance(atracks[0], np.ndarray)) or (
len(btracks) > 0 and isinstance(btracks[0], np.ndarray)
):
atlbrs = atracks
btlbrs = btracks
else:
atlbrs = [track.xyxy for track in atracks]
btlbrs = [track.xyxy for track in btracks]
ious = np.zeros((len(atlbrs), len(btlbrs)), dtype=np.float32)
if ious.size == 0:
return ious
_ious = AssociationFunction.diou_batch(atlbrs, btlbrs)
cost_matrix = 1 - _ious
return cost_matrix
def iou_distance(atracks, btracks):
"""
Compute cost based on IoU
:type atracks: list[STrack]
:type btracks: list[STrack]
:rtype cost_matrix np.ndarray
"""
if (len(atracks) > 0 and isinstance(atracks[0], np.ndarray)) or (
len(btracks) > 0 and isinstance(btracks[0], np.ndarray)
):
atlbrs = atracks
btlbrs = btracks
else:
atlbrs = [track.xyxy for track in atracks]
btlbrs = [track.xyxy for track in btracks]
ious = np.zeros((len(atlbrs), len(btlbrs)), dtype=np.float32)
if ious.size == 0:
return ious
_ious = AssociationFunction.iou_batch(atlbrs, btlbrs)
cost_matrix = 1 - _ious
return cost_matrix
def v_iou_distance(atracks, btracks):
"""
Compute cost based on IoU
:type atracks: list[STrack]
:type btracks: list[STrack]
:rtype cost_matrix np.ndarray
"""
if (len(atracks) > 0 and isinstance(atracks[0], np.ndarray)) or (
len(btracks) > 0 and isinstance(btracks[0], np.ndarray)
):
atlbrs = atracks
btlbrs = btracks
else:
atlbrs = [track.tlwh_to_tlbr(track.pred_bbox) for track in atracks]
btlbrs = [track.tlwh_to_tlbr(track.pred_bbox) for track in btracks]
_ious = ious(atlbrs, btlbrs)
cost_matrix = 1 - _ious
return cost_matrix
def embedding_distance(tracks, detections, metric="cosine"):
"""
:param tracks: list[STrack]
:param detections: list[BaseTrack]
:param metric:
:return: cost_matrix np.ndarray
"""
cost_matrix = np.zeros((len(tracks), len(detections)), dtype=np.float32)
if cost_matrix.size == 0:
return cost_matrix
det_features = np.asarray(
[track.curr_feat for track in detections], dtype=np.float32
)
# for i, track in enumerate(tracks):
# cost_matrix[i, :] = np.maximum(0.0, cdist(track.smooth_feat.reshape(1,-1), det_features, metric))
track_features = np.asarray(
[track.smooth_feat for track in tracks], dtype=np.float32
)
cost_matrix = np.maximum(
0.0, cdist(track_features, det_features, metric)
) # Nomalized features
return cost_matrix
def gate_cost_matrix(kf, cost_matrix, tracks, detections, only_position=False):
if cost_matrix.size == 0:
return cost_matrix
gating_dim = 2 if only_position else 4
gating_threshold = chi2inv95[gating_dim]
measurements = np.asarray([det.to_xyah() for det in detections])
for row, track in enumerate(tracks):
gating_distance = kf.gating_distance(
track.mean, track.covariance, measurements, only_position
)
cost_matrix[row, gating_distance > gating_threshold] = np.inf
return cost_matrix
def fuse_motion(kf, cost_matrix, tracks, detections, only_position=False, lambda_=0.98):
if cost_matrix.size == 0:
return cost_matrix
gating_dim = 2 if only_position else 4
gating_threshold = chi2inv95[gating_dim]
measurements = np.asarray([det.to_xyah() for det in detections])
for row, track in enumerate(tracks):
gating_distance = kf.gating_distance(
track.mean, track.covariance, measurements, only_position, metric="maha"
)
cost_matrix[row, gating_distance > gating_threshold] = np.inf
cost_matrix[row] = lambda_ * cost_matrix[row] + (1 - lambda_) * gating_distance
return cost_matrix
def fuse_iou(cost_matrix, tracks, detections):
if cost_matrix.size == 0:
return cost_matrix
reid_sim = 1 - cost_matrix
iou_dist = iou_distance(tracks, detections)
iou_sim = 1 - iou_dist
fuse_sim = reid_sim * (1 + iou_sim) / 2
det_confs = np.array([det.conf for det in detections])
det_confs = np.expand_dims(det_confs, axis=0).repeat(cost_matrix.shape[0], axis=0)
# fuse_sim = fuse_sim * (1 + det_confs) / 2
fuse_cost = 1 - fuse_sim
return fuse_cost
def fuse_score(cost_matrix, detections):
if cost_matrix.size == 0:
return cost_matrix
iou_sim = 1 - cost_matrix
det_confs = np.array([det.conf for det in detections])
det_confs = np.expand_dims(det_confs, axis=0).repeat(cost_matrix.shape[0], axis=0)
fuse_sim = iou_sim * det_confs
fuse_cost = 1 - fuse_sim
return fuse_cost
def _pdist(a, b):
"""Compute pair-wise squared distance between points in `a` and `b`.
Parameters
----------
a : array_like
An NxM matrix of N samples of dimensionality M.
b : array_like
An LxM matrix of L samples of dimensionality M.
Returns
-------
ndarray
Returns a matrix of size len(a), len(b) such that eleement (i, j)
contains the squared distance between `a[i]` and `b[j]`.
"""
a, b = np.asarray(a), np.asarray(b)
if len(a) == 0 or len(b) == 0:
return np.zeros((len(a), len(b)))
a2, b2 = np.square(a).sum(axis=1), np.square(b).sum(axis=1)
r2 = -2.0 * np.dot(a, b.T) + a2[:, None] + b2[None, :]
r2 = np.clip(r2, 0.0, float(np.inf))
return r2
def _cosine_distance(a, b, data_is_normalized=False):
"""Compute pair-wise cosine distance between points in `a` and `b`.
Parameters
----------
a : array_like
An NxM matrix of N samples of dimensionality M.
b : array_like
An LxM matrix of L samples of dimensionality M.
data_is_normalized : Optional[bool]
If True, assumes rows in a and b are unit length vectors.
Otherwise, a and b are explicitly normalized to lenght 1.
Returns
-------
ndarray
Returns a matrix of size len(a), len(b) such that eleement (i, j)
contains the squared distance between `a[i]` and `b[j]`.
"""
if not data_is_normalized:
a = np.asarray(a) / np.linalg.norm(a, axis=1, keepdims=True)
b = np.asarray(b) / np.linalg.norm(b, axis=1, keepdims=True)
return 1.0 - np.dot(a, b.T)
def _nn_euclidean_distance(x, y):
"""Helper function for nearest neighbor distance metric (Euclidean).
Parameters
----------
x : ndarray
A matrix of N row-vectors (sample points).
y : ndarray
A matrix of M row-vectors (query points).
Returns
-------
ndarray
A vector of length M that contains for each entry in `y` the
smallest Euclidean distance to a sample in `x`.
"""
# x_ = torch.from_numpy(np.asarray(x) / np.linalg.norm(x, axis=1, keepdims=True))
# y_ = torch.from_numpy(np.asarray(y) / np.linalg.norm(y, axis=1, keepdims=True))
distances = distances = _pdist(x, y)
return np.maximum(0.0, torch.min(distances, axis=0)[0].numpy())
def _nn_cosine_distance(x, y):
"""Helper function for nearest neighbor distance metric (cosine).
Parameters
----------
x : ndarray
A matrix of N row-vectors (sample points).
y : ndarray
A matrix of M row-vectors (query points).
Returns
-------
ndarray
A vector of length M that contains for each entry in `y` the
smallest cosine distance to a sample in `x`.
"""
x_ = torch.from_numpy(np.asarray(x))
y_ = torch.from_numpy(np.asarray(y))
distances = _cosine_distance(x_, y_)
distances = distances
return distances.min(axis=0)
class NearestNeighborDistanceMetric(object):
"""
A nearest neighbor distance metric that, for each target, returns
the closest distance to any sample that has been observed so far.
Parameters
----------
metric : str
Either "euclidean" or "cosine".
matching_threshold: float
The matching threshold. Samples with larger distance are considered an
invalid match.
budget : Optional[int]
If not None, fix samples per class to at most this number. Removes
the oldest samples when the budget is reached.
Attributes
----------
samples : Dict[int -> List[ndarray]]
A dictionary that maps from target identities to the list of samples
that have been observed so far.
"""
def __init__(self, metric, matching_threshold, budget=None):
if metric == "euclidean":
self._metric = _nn_euclidean_distance
elif metric == "cosine":
self._metric = _nn_cosine_distance
else:
raise ValueError("Invalid metric; must be either 'euclidean' or 'cosine'")
self.matching_threshold = matching_threshold
self.budget = budget
self.samples = {}
def partial_fit(self, features, targets, active_targets):
"""Update the distance metric with new data.
Parameters
----------
features : ndarray
An NxM matrix of N features of dimensionality M.
targets : ndarray
An integer array of associated target identities.
active_targets : List[int]
A list of targets that are currently present in the scene.
"""
for feature, target in zip(features, targets):
self.samples.setdefault(target, []).append(feature)
if self.budget is not None:
self.samples[target] = self.samples[target][-self.budget:]
self.samples = {k: self.samples[k] for k in active_targets}
def distance(self, features, targets):
"""Compute distance between features and targets.
Parameters
----------
features : ndarray
An NxM matrix of N features of dimensionality M.
targets : List[int]
A list of targets to match the given `features` against.
Returns
-------
ndarray
Returns a cost matrix of shape len(targets), len(features), where
element (i, j) contains the closest squared distance between
`targets[i]` and `features[j]`.
"""
cost_matrix = np.zeros((len(targets), len(features)))
for i, target in enumerate(targets):
cost_matrix[i, :] = self._metric(self.samples[target], features)
return cost_matrix
|