Title
Low illumination person re-identification.
Abstract
Low illumination is a common problem for recognition and tracking. Low illumination video-based person re identification (re-id) is an important application in practice. Low illumination usually results in severe loss of visual appearance and space-time information contained in pedestrian image or video, which brings large difficulty to re-identification. However, the problem of low illumination video-based person re-id (LIVPR) has not been well studied. In this paper, we propose a novel triplet-based manifold discriminative distance learning (TMD2L) approach for LIVPR. By regarding each video as an image set, TMD2L aims to learn a manifold-based distance metric, under which the intrinsic structure of image sets can be preserved, and the distance between truly matching sets is smaller than that between wrong matching sets. Experiment results on the new collected low illumination person sequence (LIPS) dataset, as well as two simulated datasets LI-PRID 2011 and LI-iLIDS-VID show that our proposed approach TMD2L outperforms existing representative person re-id methods.
Year
DOI
Venue
2019
10.1007/s11042-018-6239-3
Multimedia Tools Appl.
Keywords
Field
DocType
Low illumination, Person re-identification, Local linear model, Discriminative distance learning
Computer vision,Pattern recognition,Computer science,Distance education,Metric (mathematics),Artificial intelligence,Discriminative model,Manifold,Visual appearance
Journal
Volume
Issue
ISSN
78
1
1573-7721
Citations 
PageRank 
References 
3
0.39
33
Authors
6
Name
Order
Citations
PageRank
Fei Ma15213.61
Xiaoke Zhu21196.59
Xinyu Zhang32412.48
Liang Yang412042.20
Mei Zuo530.39
Xiao-Yuan Jing676955.18