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Review on Vision-Based Gait Recognition: Representations,Classification Schemes and Datasets

机译:基于视觉的步态识别综述:表征,分类方案和数据集

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摘要

Gait has unique advantage at a distance when other biometrics cannot be used since they are at too low resolution or obscured, as commonly observed in visual surveillance systems. This paper provides a survey of the technical advancements in vision-based gait recognition. A wide range of publications are discussed in this survey embracing different perspectives of the research in this area, including gait feature extraction, classification schemes and standard gait databases. There are two major groups of the state-of-the-art techniques in characterizing gait: Model-based and motion-free. The model-based approach obtains a set of body or motion parameters via human body or motion modeling. The model-free approach, on the other hand, derives a description of the motion without assuming any model. Each major category is further organized into several subcategories based on the nature of gait representation. In addition, some widely used classification schemes and benchmark databases for evaluating performance are also discussed.
机译:步态在无法使用其他生物识别技术的情况下在远处具有独特的优势,因为它们的分辨率太低或模糊不清,如在视觉监视系统中通常会看到的那样。本文概述了基于视觉的步态识别技术的进步。本次调查讨论了各种各样的出版物,涵盖了该领域研究的不同观点,包括步态特征提取,分类方案和标准步态数据库。表征步态有两种主要的最新技术:基于模型和无运动。基于模型的方法通过人体或运动建模获得一组身体或运动参数。另一方面,无模型方法无需任何模型即可得出运动的描述。根据步态表示的性质,每个主要类别进一步分为几个子类别。此外,还讨论了一些用于评估性能的广泛使用的分类方案和基准数据库。

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