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@amoshyc
Last active March 30, 2021 16:56
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def boxes_iou(boxesA, boxesB):
boxesA = boxesA.astype(float)
boxesB = boxesB.astype(float)
boxesA[:, 2:] += boxesA[:, :2]
boxesB[:, 2:] += boxesB[:, :2]
N, M = len(boxesA), len(boxesB)
boxesA = np.broadcast_to(boxesA.reshape(N, 1, 4), (N, M, 4))
boxesB = np.broadcast_to(boxesB.reshape(1, M, 4), (N, M, 4))
x1 = np.maximum(boxesA[..., 0], boxesB[..., 0])
y1 = np.maximum(boxesA[..., 1], boxesB[..., 1])
x2 = np.minimum(boxesA[..., 2], boxesB[..., 2])
y2 = np.minimum(boxesA[..., 3], boxesB[..., 3])
dx = np.clip(x2 - x1, a_min=0, a_max=None)
dy = np.clip(y2 - y1, a_min=0, a_max=None)
inter = dx * dy
wA = np.clip(boxesA[..., 2] - boxesA[..., 0], 0, None)
hA = np.clip(boxesA[..., 3] - boxesA[..., 1], 0, None)
wB = np.clip(boxesB[..., 2] - boxesB[..., 0], 0, None)
hB = np.clip(boxesB[..., 3] - boxesB[..., 1], 0, None)
areaA, areaB = wA * hA, wB * hB
union = areaA + areaB - inter
return inter / (union)
def find_in_sorted(sorted, value):
idx = np.searchsorted(sorted, value)
return idx if idx < len(sorted) and sorted[idx] == value else -1
def evaluate_iou_mota(df_pred, df_true):
df_pred = df_pred.sort_values(by=['fid', 'tag'])
df_true = df_true.sort_values(by=['fid', 'tag'])
pred_data = {fid: group for fid, group in df_pred.groupby('fid')}
true_data = {fid: group for fid, group in df_true.groupby('fid')}
prev_match = dict() # gt_tag -> pd_tag
metrics = []
for fid in tqdm(df_true['fid'].unique()):
gt_group = true_data[fid]
pd_group = pred_data.get(fid, None)
gt_tags = gt_group['tag'].values
pd_tags = pd_group['tag'].values
gt_boxes = gt_group[['x', 'y', 'w', 'h']].values
pd_boxes = pd_group[['x', 'y', 'w', 'h']].values
iou = boxes_iou(gt_boxes, pd_boxes)
gt_match_mask = np.zeros(len(gt_group), dtype=bool)
pd_match_mask = np.zeros(len(pd_group), dtype=bool)
curr_match = dict()
metric = {
'num_objects': len(gt_group),
'dist_error': 0.0,
'num_misses': 0,
'false_dets': 0,
'num_match': 0,
'num_mismatch': 0,
}
# Propagate existing matches
for gt_tag, pd_tag in prev_match.items():
gt_idx = find_in_sorted(gt_tags, gt_tag)
pd_idx = find_in_sorted(pd_tags, pd_tag)
if gt_idx == -1 or pd_idx == -1:
continue
if iou[gt_idx, pd_idx] > 0.5:
curr_match[gt_tag] = pd_tag
metric['dist_error'] += 1 - iou[gt_idx, pd_idx]
metric['num_match'] += 1
gt_match_mask[gt_idx] = True
pd_match_mask[pd_idx] = True
# Find new matches
gt_tags = gt_tags[~gt_match_mask]
pd_tags = pd_tags[~pd_match_mask]
gt_boxes = gt_boxes[~gt_match_mask]
pd_boxes = pd_boxes[~pd_match_mask]
iou = iou[np.ix_(~gt_match_mask, ~pd_match_mask)]
iou[iou < 0.5] = np.nan
rr, cc = solve_dense(-iou)
for r, c in zip(rr, cc):
curr_match[gt_tags[r]] = pd_tags[c]
metric['dist_error'] += 1 - iou[r, c]
if gt_tags[r] in prev_match:
metric['num_mismatch'] += 1
else:
metric['num_match'] += 1
metric['num_misses'] += len(gt_tags) - len(rr)
metric['false_dets'] += len(pd_tags) - len(cc)
# Update matches
prev_match.update(curr_match)
# prev_match = curr_match
metrics.append(metric)
total_g = sum(m['num_objects'] for m in metrics)
total_m = sum(m['num_misses'] for m in metrics)
total_d = sum(m['dist_error'] for m in metrics)
total_fp = sum(m['false_dets'] for m in metrics)
total_c = sum(m['num_match'] for m in metrics)
total_mme = sum(m['num_mismatch'] for m in metrics)
mota = 1 - (total_m + total_fp + total_mme) / total_g
motp = total_d / (total_c + total_mme) # motmetrics
# paper: motp = total_d / total_c
return {
'mota': mota,
'motp': motp,
'ids': total_mme,
'num_matches': total_c,
'num_objects': total_g,
'num_misses': total_m,
'num_fp': total_fp,
}
def qs_dist(gt_data, pd_data, img_size):
imgW, imgH = img_size
gt_boxes = gt_data[['x', 'y', 'w', 'h']].values
gt_boxes[:, 2:4] += gt_boxes[:, 0:2]
gt_boxes[:, [0, 2]] = np.clip(gt_boxes[:, [0, 2]], 0, imgW - 1)
gt_boxes[:, [1, 3]] = np.clip(gt_boxes[:, [1, 3]], 0, imgH - 1)
gt_insts = []
for x1, y1, x2, y2 in gt_boxes:
seg = np.zeros((imgH, imgW), dtype=bool)
seg[y1 : y2 + 1, x1 : x2 + 1] = True
gt_insts.append(GroundTruthInstance(seg, 0, [x1, y1, x2, y2]))
if 'sx1' in pd_data.columns:
pd_boxes = pd_data[['x', 'y', 'w', 'h', 'sx1', 'sy1', 'sx2', 'sy2']].values
pd_boxes[:, 2:4] += pd_boxes[:, 0:2]
pd_boxes[:, [0, 2]] = np.clip(pd_boxes[:, [0, 2]], 0, imgW - 1)
pd_boxes[:, [1, 3]] = np.clip(pd_boxes[:, [1, 3]], 0, imgH - 1)
pd_insts = []
for x1, y1, x2, y2, sx1, sy1, sx2, sy2 in pd_boxes:
tl_cov = [[sx1, 0], [0, sy1]]
br_cov = [[sx2, 0], [0, sy2]]
pd_insts.append(PBoxDetInst([1.0], [x1, y1, x2, y2], [tl_cov, br_cov]))
else:
pd_boxes = pd_data[['x', 'y', 'w', 'h']].values
pd_boxes[:, 2:4] += pd_boxes[:, 0:2]
pd_boxes[:, [0, 2]] = np.clip(pd_boxes[:, [0, 2]], 0, imgW - 1)
pd_boxes[:, [1, 3]] = np.clip(pd_boxes[:, [1, 3]], 0, imgH - 1)
pd_insts = []
for x1, y1, x2, y2 in pd_boxes:
pd_insts.append(BBoxDetInst([1.0], [x1, y1, x2, y2]))
N, M = len(gt_insts), len(pd_insts)
costs = _gen_cost_tables(gt_insts, pd_insts, False)
dist = costs['spatial']
dist = dist.reshape(max(N, M), max(N, M))
dist = dist[:N, :M]
return dist
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