Title
Urgent image-to-video person reidentification by cross-media transfer cycle generative adversarial networks.
Abstract
Recently, image-to-video person reidentification (IVPR) has attracted enormous research interest, and various models are proposed. IVPR is often applied to urgent situations, such as suspect tracking and lost-human locating. Existing IVPR models are under supervised frameworks, which require a large number of labeled image-to-video pairs. This severely limits their real-time efficiency in urgent situations, because annotation is much more time-consuming. To solve the urgent image-to-video person reidentification (UIVPR) problem, we propose a cross-media transfer cycle generative adversarial networks (CTC-GAN) network. Our model aims to alleviate the "media-gap" between image-to-video pairs without newly labeled pairs. We make an existing completely labeled dataset as guidance for CTC-GAN to achieve domain adaptation and make urgent image-to-video matching easier for person reidentification. We introduce cycle GANs for image(video)-to-video (image) translation and extract cross-media features using a triplet constraint in the source domain for different media features. Furthermore, we train the model in the labeled source domain by reconstructing the image (video) as its related video (image). Then, train the model in the unlabeled target domain by reconstructing itself along with source data, so as to ensure that the discriminative model can be used in target domain. Through CTC-GAN, our network can retain pedestrian discriminative information as much as possible, to ensure the matching rate in the target domain. To validate the effectiveness of our approach, we implement substantial experiments on two large-scale person reidentification datasets compared with six existing state-of-the-art unsupervised revised person reidentification models, and experimental results demonstrate that our method can solve UIVPR effectively. (C) 2019 SPIE and IS&T
Year
DOI
Venue
2019
10.1117/1.JEI.28.1.013052
JOURNAL OF ELECTRONIC IMAGING
Keywords
Field
DocType
unsupervised person reidentification,image-to-video,transfer generative adversarial networks,deep learning
Computer vision,Computer science,Cross media,Human–computer interaction,Artificial intelligence,Generative grammar,Adversarial system
Journal
Volume
Issue
ISSN
28
1
1017-9909
Citations 
PageRank 
References 
0
0.34
9
Authors
2
Name
Order
Citations
PageRank
Benzhi Yu100.68
xu ning22515.72