Deep Learning Based Person Re-Identification Methods: A Survey and
Outlook of Recent Works
- URL: http://arxiv.org/abs/2110.04764v1
- Date: Sun, 10 Oct 2021 11:23:47 GMT
- Title: Deep Learning Based Person Re-Identification Methods: A Survey and
Outlook of Recent Works
- Authors: Zhangqiang Ming, Min Zhu, Xiaoyong Wei, Xiangkun Wang, Jiamin Zhu,
Junlong Cheng and Yong Yang
- Abstract summary: We compare traditional and deep learning-based person Re-ID methods, and present the main contributions of several person Re-ID surveys.
We focus on the current classic deep learning-based person Re-ID methods, including methods for deep metric learning, local feature learning, generate adversarial networks, sequence feature learning, and graph convolutional networks.
- Score: 5.202841879001503
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In recent years, with the increasing demand for public safety and the rapid
development of intelligent surveillance networks, person re-identification
(Re-ID) has become one of the hot research topics in the field of computer
vision. Its main research goal is to retrieve persons with the same identity
from different cameras. However, traditional person Re-ID methods require
manual marking of person targets, which consumes a lot of labor costs. With the
widespread application of deep neural networks in the field of computer vision,
a large number of deep learning-based person Re-ID methods have emerged. To
facilitate researchers to better understand the latest research results and
future development trends in this field. Firstly, we compare traditional and
deep learning-based person Re-ID methods, and present the main contributions of
several person Re-ID surveys, and analyze their focused dimensions and
shortcomings. Secondly, we focus on the current classic deep learning-based
person Re-ID methods, including methods for deep metric learning, local feature
learning, generate adversarial networks, sequence feature learning, and graph
convolutional networks. Furthermore, we subdivide the above five categories
according to their technique types, analyzing and comparing the experimental
performance of part subcategories of the method. Finally, we discuss the
challenges that remain in the field of person Re-ID field and prospects for
future research directions.
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