Computer Vision-Based Gait Recognition on the Edge: A Survey on Feature Representations, Models, and Architectures.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Edwin Salcedo
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Abstract

Computer vision-based gait recognition (CVGR) is a technology that has gained considerable attention in recent years due to its non-invasive, unobtrusive, and difficult-to-conceal nature. Beyond its applications in biometrics, CVGR holds significant potential for healthcare and human-computer interaction. Current CVGR systems often transmit collected data to a cloud server for machine learning-based gait pattern recognition. While effective, this cloud-centric approach can result in increased system response times. Alternatively, the emerging paradigm of edge computing, which involves moving computational processes to local devices, offers the potential to reduce latency, enable real-time surveillance, and eliminate reliance on internet connectivity. Furthermore, recent advancements in low-cost, compact microcomputers capable of handling complex inference tasks (e.g., Jetson Nano Orin, Jetson Xavier NX, and Khadas VIM4) have created exciting opportunities for deploying CVGR systems at the edge. This paper reports the state of the art in gait data acquisition modalities, feature representations, models, and architectures for CVGR systems suitable for edge computing. Additionally, this paper addresses the general limitations and highlights new avenues for future research in the promising intersection of CVGR and edge computing.

基于计算机视觉的边缘步态识别:特征表示、模型和体系结构综述。
基于计算机视觉的步态识别(CVGR)由于其非侵入性、不突兀性和难以隐藏性等特点,近年来受到了广泛的关注。除了在生物识别方面的应用之外,CVGR在医疗保健和人机交互方面也具有巨大的潜力。目前的CVGR系统经常将收集到的数据传输到云服务器,用于基于机器学习的步态模式识别。虽然有效,但这种以云为中心的方法可能会增加系统响应时间。或者,新兴的边缘计算范式,包括将计算过程移动到本地设备,提供了减少延迟、实现实时监控和消除对互联网连接依赖的潜力。此外,能够处理复杂推理任务的低成本、紧凑型微型计算机(例如Jetson Nano Orin、Jetson Xavier NX和Khadas VIM4)的最新进展,为在边缘部署CVGR系统创造了令人兴奋的机会。本文报告了适合边缘计算的CVGR系统的步态数据采集方式、特征表示、模型和体系结构的最新进展。此外,本文解决了一般的局限性,并强调了CVGR和边缘计算有前途的交叉点的未来研究的新途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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