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Expanding gait identification methods from straight to curved trajectories

机译:将步态识别方法从直线轨迹扩展到曲线轨迹

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Conventional methods of gait analysis for person identification use features extracted from a sequence of camera images taken during one or more gait cycles. An implicit assumption is made that the walking direction does not change. However, cameras deployed in real-world environments (and often placed at corners) capture images of humans who walk on paths that, for a variety of reasons, such as turning corners or avoiding obstacles, are not straight but curved. This change of the direction of the velocity vector causes a decrease in performance for conventional methods. In this paper we address this aspect, and propose a method that offers improved identification results for people walking on curved trajectories. The large diversity of curved trajectories makes the collection of complete real world data infeasible. The proposed method utilizes a 4D gait database consisting of multiple 3D shape models of walking subjects and adaptive virtual image synthesis. Each frame, for the duration of a gait cycle, is used to estimate a walking direction for the subject, and consequently a virtual image corresponding to this estimated direction is synthesized from the 4D gait database. The identification uses affine moment invariants as gait features. Experiments using the 4D gait database of 21 subjects show that the proposed method has a higher recognition performance than conventional methods.
机译:用于人识别的常规步态分析方法使用从一个或多个步态周期中拍摄的一系列摄像机图像中提取的特征。隐式假设步行方向不会改变。但是,部署在现实环境中(通常放置在拐角处)的摄像机捕获的人类图像由于各种原因(例如转弯或避开障碍物)而走的路径不是笔直而是弯曲的。速度矢量方向的这种变化导致传统方法的性能下降。在本文中,我们解决了这一方面,并​​提出了一种方法,该方法可为在弯曲轨迹上行走的人们提供改进的识别结果。弯曲轨迹的多样性很大,因此无法收集完整的现实世界数据。该方法利用了一个4D步态数据库,该数据库包含多个3D步行对象的3D形状模型和自适应虚拟图像合成。在步态周期的持续时间内,每个帧都用于估计对象的步行方向,因此,从4D步态数据库中合成了与该估计方向相对应的虚拟图像。识别使用仿射矩不变性作为步态特征。使用21个受试者的4D步态数据库进行的实验表明,该方法具有比常规方法更高的识别性能。

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