Gait recognition aims at identifying a person at a distance through visual cameras. With the emergence of deep learning, significant advancements in gait recognition have achieved inspiring success in many scenarios by utilizing deep learning techniques. Nevertheless, the increasing need for video surveillance introduces more challenges, including robust recognition under various variances, modeling motion information in gait sequences, unfair performance comparison due to protocol variances, biometrics security, and privacy prevention. This paper provides a comprehensive survey of deep learning for gait recognition. We first present the odyssey of gait recognition from traditional algorithms to deep models, providing explicit knowledge of the whole workflow of a gait recognition system. Then deep learning for gait recognition is discussed from the perspective of deep representations and architecture with an in-depth summary. Specifically, deep gait representations are categorized into static and dynamic features, while deep architectures include single-stream and multi-stream architecture. Following our proposed taxonomy with novelty, it can be beneficial for providing inspiration and promoting the perception of deep gait recognition. Besides, we also present a comprehensive summary of all vision-based gait datasets and the performance analysis. Finally, the article discusses some open issues with significant potential prospects.
翻译:Gait承认的目的是通过视觉照相机在距离上识别一个人。随着深层学习的出现,在动作承认方面取得的重大进步在许多情景中都取得了令人鼓舞的成功。然而,对视频监视的日益需要带来了更多的挑战,包括在各种差异下大力认识,在动作顺序上建模,由于协议差异、生物鉴别安全和隐私预防而导致的不合理的性能比较;本文件对深度学习进行综合调查,以利体格识别。我们首先介绍了从传统算法到深层模型对动作承认的常识,为剧目识别系统的整个工作流程提供了明确知识。然后,从深层表达和结构的角度深入总结了对动作承认的深入学习。具体地说,深度表达被归类为静态和动态特征,而深层结构包括单流和多流结构。继我们提议的具有新意的分类之后,它可能有益于提供灵感,并促进对剧目认知的深刻认识。此外,我们还全面概述了所有基于视觉的剧场数据集和业绩分析。最后,文章讨论了一些具有重要前景的开放问题。