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evaluate_gpu.py
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evaluate_gpu.py
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import scipy.io
import torch
import numpy as np
#import time
import os
#######################################################################
# Evaluate
def evaluate(qf,ql,gf,gl):
query = qf.view(-1,1)
# print(query.shape)
score = torch.mm(gf,query)
score = score.squeeze(1).cpu()
score = score.numpy()
# predict index
index = np.argsort(score) #from small to large
index = index[::-1]
# index = index[0:2000]
# good index
query_index = np.argwhere(gl==ql)
good_index = query_index
#print(good_index)
#print(index[0:10])
junk_index = np.argwhere(gl==-1)
CMC_tmp = compute_mAP(index, good_index, junk_index)
return CMC_tmp
def compute_mAP(index, good_index, junk_index):
ap = 0
cmc = torch.IntTensor(len(index)).zero_()
if good_index.size==0: # if empty
cmc[0] = -1
return ap,cmc
# remove junk_index
mask = np.in1d(index, junk_index, invert=True)
index = index[mask]
# find good_index index
ngood = len(good_index)
mask = np.in1d(index, good_index)
rows_good = np.argwhere(mask==True)
rows_good = rows_good.flatten()
cmc[rows_good[0]:] = 1
for i in range(ngood):
d_recall = 1.0/ngood
precision = (i+1)*1.0/(rows_good[i]+1)
if rows_good[i]!=0:
old_precision = i*1.0/rows_good[i]
else:
old_precision=1.0
ap = ap + d_recall*(old_precision + precision)/2
return ap, cmc
######################################################################
result = scipy.io.loadmat('pytorch_result.mat')
query_feature = torch.FloatTensor(result['query_f'])
query_label = result['query_label'][0]
gallery_feature = torch.FloatTensor(result['gallery_f'])
gallery_label = result['gallery_label'][0]
multi = os.path.isfile('multi_query.mat')
if multi:
m_result = scipy.io.loadmat('multi_query.mat')
mquery_feature = torch.FloatTensor(m_result['mquery_f'])
mquery_label = m_result['mquery_label'][0]
mquery_feature = mquery_feature.cuda()
query_feature = query_feature.cuda()
gallery_feature = gallery_feature.cuda()
print(query_feature.shape)
print(gallery_feature.shape)
#print(gallery_feature[0,:])
CMC = torch.IntTensor(len(gallery_label)).zero_()
ap = 0.0
#print(query_label)
for i in range(len(query_label)):
ap_tmp, CMC_tmp = evaluate(query_feature[i],query_label[i],gallery_feature,gallery_label)
if CMC_tmp[0]==-1:
continue
CMC = CMC + CMC_tmp
ap += ap_tmp
#print(i, CMC_tmp[0])
CMC = CMC.float()
CMC = CMC/len(query_label) #average CMC
print(round(len(gallery_label)*0.01))
print('Recall@1:%.2f Recall@5:%.2f Recall@10:%.2f Recall@top1:%.2f AP:%.2f'%(CMC[0]*100,CMC[4]*100,CMC[9]*100, CMC[round(len(gallery_label)*0.01)]*100, ap/len(query_label)*100))
# multiple-query evaluation is not used.
#CMC = torch.IntTensor(len(gallery_label)).zero_()
#ap = 0.0
#if multi:
# for i in range(len(query_label)):
# mquery_index1 = np.argwhere(mquery_label==query_label[i])
# mquery_index2 = np.argwhere(mquery_cam==query_cam[i])
# mquery_index = np.intersect1d(mquery_index1, mquery_index2)
# mq = torch.mean(mquery_feature[mquery_index,:], dim=0)
# ap_tmp, CMC_tmp = evaluate(mq,query_label[i],query_cam[i],gallery_feature,gallery_label,gallery_cam)
# if CMC_tmp[0]==-1:
# continue
# CMC = CMC + CMC_tmp
# ap += ap_tmp
# #print(i, CMC_tmp[0])
# CMC = CMC.float()
# CMC = CMC/len(query_label) #average CMC
# print('multi Rank@1:%f Rank@5:%f Rank@10:%f mAP:%f'%(CMC[0],CMC[4],CMC[9],ap/len(query_label)))