Muna O. AlMasawa, Lamiaa A. Elrefaei, and Kawthar Moria, " A Survey on Deep Learning Based Person Re-Identification Systems", IEEE Access, Vol.7, No.1, pp. 175228-175247, December 2019, DOI: 10.1109/ACCESS.2019.2957336
IEEE Access • 2019
Publication Information
Authors
Muna O. AlMasawa, Lamiaa A. Elrefaei
Keywords
Not Available
Journal
IEEE Access
Publisher
IEEE
Volume
7
Issue
1
Pages
175228-175247
publication.type
International
Paper Link
Open Link
Supplementary Materials
Not Available
Abstract
Person re-identification systems (person Re-ID) have recently gained more attention between computer vision researchers. They are playing a key role in intelligent visual surveillance systems and have widespread applications like applications for public security. The person Re-ID systems can identify if a person has been seen by a non-overlapping camera over large camera network in an unconstrained environment. It is a challenging issue since a person appears differently under different camera views and faces many challenges such as pose variation, occlusion and illumination changes. Many methods had been introduced for generating handcrafted features aimed to handle the person Re-ID problem. In recent years, many studies have started to apply deep learning methods to enhance the person Re-ID performance due the deep learning yielded significant results in computer vision issues. Therefore, this paper is a survey of the recent studies that proposed to improve the person Re-ID systems using deep learning. The public datasets that are used for evaluating these systems are discussed. Finally, the paper addresses future directions and current issues that must be considered toward improving the person Re-ID systems.
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