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metrics.py
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metrics.py
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from collections import defaultdict
import numpy as np
import torch
from sklearn.metrics import average_precision_score
def _unique_sample(ids_dict, num):
mask = np.zeros(num, dtype=np.bool)
for _, indices in ids_dict.items():
i = np.random.choice(indices)
mask[i] = True
return mask
def cmc_map(distmat, query_ids=None, gallery_ids=None,
query_cams=None, gallery_cams=None, topk=100,
separate_camera_set=False,
single_gallery_shot=False,
first_match_break=False):
m, n = distmat.shape
# Fill up default values
if query_ids is None:
query_ids = np.arange(m)
if gallery_ids is None:
gallery_ids = np.arange(n)
if query_cams is None:
query_cams = np.zeros(m).astype(np.int32)
if gallery_cams is None:
gallery_cams = np.ones(n).astype(np.int32)
# Ensure numpy array
query_ids = np.asarray(query_ids)
gallery_ids = np.asarray(gallery_ids)
query_cams = np.asarray(query_cams)
gallery_cams = np.asarray(gallery_cams)
# Sort and find correct matches
indices = np.argsort(distmat, axis=1)
matches = (gallery_ids[indices] == query_ids[:, np.newaxis])
# Compute CMC for each query
ret = np.zeros(topk)
num_valid_queries = 0
#map
aps = []
for i in range(m):
# Filter out the same id and same camera
valid = ((gallery_ids[indices[i]] != query_ids[i]) |
(gallery_cams[indices[i]] != query_cams[i]))
y_true = matches[i, valid]
y_score = -distmat[i][indices[i]][valid]
aps.append(average_precision_score(y_true, y_score))
if separate_camera_set:
# Filter out samples from same camera
valid &= (gallery_cams[indices[i]] != query_cams[i])
if not np.any(matches[i, valid]):
continue
if single_gallery_shot:
repeat = 10
gids = gallery_ids[indices[i][valid]]
inds = np.where(valid)[0]
ids_dict = defaultdict(list)
for j, x in zip(inds, gids):
ids_dict[x].append(j)
else:
repeat = 1
for _ in range(repeat):
if single_gallery_shot:
# Randomly choose one instance for each id
sampled = (valid & _unique_sample(ids_dict, len(valid)))
index = np.nonzero(matches[i, sampled])[0]
else:
index = np.nonzero(matches[i, valid])[0]
delta = 1. / (len(index) * repeat)
for j, k in enumerate(index):
if k - j >= topk:
break
if first_match_break:
ret[k - j] += 1
break
ret[k - j] += delta
num_valid_queries += 1
if num_valid_queries == 0:
raise RuntimeError("No valid query")
return ret.cumsum() / num_valid_queries , np.mean(aps)
def cmc(distmat, query_ids=None, gallery_ids=None,
query_cams=None, gallery_cams=None, topk=100,
separate_camera_set=False,
single_gallery_shot=False,
first_match_break=False):
m, n = distmat.shape
# Fill up default values
if query_ids is None:
query_ids = np.arange(m)
if gallery_ids is None:
gallery_ids = np.arange(n)
if query_cams is None:
query_cams = np.zeros(m).astype(np.int32)
if gallery_cams is None:
gallery_cams = np.ones(n).astype(np.int32)
# Ensure numpy array
query_ids = np.asarray(query_ids)
gallery_ids = np.asarray(gallery_ids)
query_cams = np.asarray(query_cams)
gallery_cams = np.asarray(gallery_cams)
# Sort and find correct matches
indices = np.argsort(distmat, axis=1)
matches = (gallery_ids[indices] == query_ids[:, np.newaxis])
# Compute CMC for each query
ret = np.zeros(topk)
num_valid_queries = 0
for i in range(m):
# Filter out the same id and same camera
valid = ((gallery_ids[indices[i]] != query_ids[i]) |
(gallery_cams[indices[i]] != query_cams[i]))
if separate_camera_set:
# Filter out samples from same camera
valid &= (gallery_cams[indices[i]] != query_cams[i])
if not np.any(matches[i, valid]):
continue
if single_gallery_shot:
repeat = 10
gids = gallery_ids[indices[i][valid]]
inds = np.where(valid)[0]
ids_dict = defaultdict(list)
for j, x in zip(inds, gids):
ids_dict[x].append(j)
else:
repeat = 1
for _ in range(repeat):
if single_gallery_shot:
# Randomly choose one instance for each id
sampled = (valid & _unique_sample(ids_dict, len(valid)))
index = np.nonzero(matches[i, sampled])[0]
else:
index = np.nonzero(matches[i, valid])[0]
delta = 1. / (len(index) * repeat)
for j, k in enumerate(index):
if k - j >= topk:
break
if first_match_break:
ret[k - j] += 1
break
ret[k - j] += delta
num_valid_queries += 1
if num_valid_queries == 0:
raise RuntimeError("No valid query")
return ret.cumsum() / num_valid_queries
def mean_ap(distmat, query_ids=None, gallery_ids=None,
query_cams=None, gallery_cams=None):
m, n = distmat.shape
# Fill up default values
if query_ids is None:
query_ids = np.arange(m)
if gallery_ids is None:
gallery_ids = np.arange(n)
if query_cams is None:
query_cams = np.zeros(m).astype(np.int32)
if gallery_cams is None:
gallery_cams = np.ones(n).astype(np.int32)
# Ensure numpy array
query_ids = np.asarray(query_ids)
gallery_ids = np.asarray(gallery_ids)
query_cams = np.asarray(query_cams)
gallery_cams = np.asarray(gallery_cams)
# Sort and find correct matches
indices = np.argsort(distmat, axis=1)
matches = (gallery_ids[indices] == query_ids[:, np.newaxis])
# Compute AP for each query
aps = []
for i in range(m):
# Filter out the same id and same camera
valid = ((gallery_ids[indices[i]] != query_ids[i]) |
(gallery_cams[indices[i]] != query_cams[i]))
y_true = matches[i, valid]
y_score = -distmat[i][indices[i]][valid]
if not np.any(y_true):
continue
aps.append(average_precision_score(y_true, y_score))
if len(aps) == 0:
raise RuntimeError("No valid query")
return np.mean(aps)