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FastPoseGait: A Toolbox and Benchmark for Efficient Pose-based Gait Recognition

Authors :
Meng, Shibei
Fu, Yang
Hou, Saihui
Cao, Chunshui
Liu, Xu
Huang, Yongzhen
Publication Year :
2023

Abstract

We present FastPoseGait, an open-source toolbox for pose-based gait recognition based on PyTorch. Our toolbox supports a set of cutting-edge pose-based gait recognition algorithms and a variety of related benchmarks. Unlike other pose-based projects that focus on a single algorithm, FastPoseGait integrates several state-of-the-art (SOTA) algorithms under a unified framework, incorporating both the latest advancements and best practices to ease the comparison of effectiveness and efficiency. In addition, to promote future research on pose-based gait recognition, we provide numerous pre-trained models and detailed benchmark results, which offer valuable insights and serve as a reference for further investigations. By leveraging the highly modular structure and diverse methods offered by FastPoseGait, researchers can quickly delve into pose-based gait recognition and promote development in the field. In this paper, we outline various features of this toolbox, aiming that our toolbox and benchmarks can further foster collaboration, facilitate reproducibility, and encourage the development of innovative algorithms for pose-based gait recognition. FastPoseGait is available at https://github.com//BNU-IVC/FastPoseGait and is actively maintained. We will continue updating this report as we add new features.<br />Comment: 10 pages, 4 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.00794
Document Type :
Working Paper