Gait Recognition Based on Deep Learning: A Survey

Claudio Filipi Gonçalves dos Santos, Diego de Souza Oliveira, Leandro A. Passos, Rafael Gonçalves Pires, Daniel Felipe Silva Santos, Lucas Pascotti Valem, Thierry P. Moreira, Marcos Cleison S. Santana, Mateus Roder, Jo Paulo Papa, Danilo Colombo
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引用次数: 34

Abstract

In general, biometry-based control systems may not rely on individual expected behavior or cooperation to operate appropriately. Instead, such systems should be aware of malicious procedures for unauthorized access attempts. Some works available in the literature suggest addressing the problem through gait recognition approaches. Such methods aim at identifying human beings through intrinsic perceptible features, despite dressed clothes or accessories. Although the issue denotes a relatively long-time challenge, most of the techniques developed to handle the problem present several drawbacks related to feature extraction and low classification rates, among other issues. However, deep learning-based approaches recently emerged as a robust set of tools to deal with virtually any image and computer-vision-related problem, providing paramount results for gait recognition as well. Therefore, this work provides a surveyed compilation of recent works regarding biometric detection through gait recognition with a focus on deep learning approaches, emphasizing their benefits and exposing their weaknesses. Besides, it also presents categorized and characterized descriptions of the datasets, approaches, and architectures employed to tackle associated constraints.
基于深度学习的步态识别研究进展
一般来说,基于生物特征的控制系统可能不依赖于个人预期行为或合作来适当运行。相反,这样的系统应该意识到恶意程序的未经授权的访问尝试。文献中的一些工作建议通过步态识别方法来解决这个问题。这种方法的目的是通过内在的可感知特征来识别人,而不管穿着的衣服或配饰。虽然这个问题是一个相对长期的挑战,但大多数为处理这个问题而开发的技术都存在一些缺点,包括特征提取和低分类率等问题。然而,基于深度学习的方法最近作为一套强大的工具出现,几乎可以处理任何图像和计算机视觉相关的问题,也为步态识别提供了重要的结果。因此,这项工作提供了最近关于通过步态识别进行生物特征检测的研究汇编,重点是深度学习方法,强调它们的优点并暴露它们的弱点。此外,它还提供了用于处理相关约束的数据集、方法和体系结构的分类和特征描述。
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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