Pedestrian Attribute Recognition: A Survey

Xiao Wang#1,2, Shaofei Zheng#1, Rui Yang#1, Aihua Zheng#1, Zhe Chen#3, Jin Tang#1, Bin Luo#1

1. Anhui University, Hefei, China 2. Pengcheng Lab, Shenzhen, China

3. The University of Sydney, Australia


[Note] More pedestrian attribute recognition related papers will be updated at [GitHub]

Abstract

Recognizing pedestrian attributes is an important task in computer vision community due to it plays an important role in video surveillance. Many algorithms has been proposed to handle this task. The goal of this paper is to review existing works using traditional methods or based on deep learning networks. Firstly, we introduce the background of pedestrian attributes recognition (PAR, for short), including the fundamental concepts of pedestrian attributes and corresponding challenges. Secondly, we introduce existing benchmarks, including popular datasets and evaluation criterion. Thirdly, we analyse the concept of multi-task learning and multi-label learning, and also explain the relations between these two learning algorithms and pedestrian attribute recognition. We also review some popular network architectures which have widely applied in the deep learning community. Fourthly, we analyse popular solutions for this task, such as attributes group, part-based, etc. Fifthly, we shown some applications which takes pedestrian attributes into consideration and achieve better performance. Finally, we summarized this paper and give several possible research directions for pedestrian attributes recognition.



Information of Benchmark Datasets


Structure of this Survey


The Overview of PAR Algorithms

[Note] If you are interested in studying this direction together, you can add my wechat: wangxiao5791509 (Name + School/Company).

If you find this survey useful for your research, please consider to cite our paper:

@article{wang2021pedestrian,

title={Pedestrian attribute recognition: A survey},

author={Wang, Xiao and Zheng, Shaofei and Yang, Rui and Zheng, Aihua and Chen, Zhe and Tang, Jin and Luo, Bin},

journal={Pattern Recognition},

pages={108220},

year={2021},

publisher={Elsevier}

}