EigenGait空间中基于动作的人识别

Chiraz BenAbdelkader, L. Davis, Ross Cutler
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引用次数: 210

摘要

提出了一种基于运动的、无对应的单目视频人体步态识别技术。我们认为,行走的人的平面动力学被编码在一个二维图中,该二维图由人的图像序列的成对图像相似性组成,并且可以通过这些图的标准模式分类来实现步态识别。我们使用背景建模来跟踪人的许多帧,并提取一系列的分割图像的人。通过序列中每对图像的相关性计算自相似图。在识别方面,该方法采用主成分分析对图进行降维,然后在降维后的空间中使用k近邻规则对未知人物进行分类。该方法对跟踪和分割误差以及服装和背景的变化具有较强的鲁棒性。它对摄像机视点和行走速度的微小变化也是不变的。该方法对44人的户外序列进行了测试,每个序列在两个不同的日期拍摄4个序列,分类率达到77%。它还在7个人在跑步机上行走的室内序列中进行了测试,这些人在7个不同的日子里从8个不同的角度拍摄。近正面平行视图的分类率为78%,所有视图的平均分类率为65%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Motion-based recognition of people in EigenGait space
A motion-based, correspondence-free technique or human gait recognition in monocular video is presented. We contend that the planar dynamics of a walking person are encoded in a 2D plot consisting of the pairwise image similarities of the sequence of images of the person, and that gait recognition can be achieved via standard pattern classification of these plots. We use background modelling to track the person for a number of frames and extract a sequence of segmented images of the person. The self-similarity plot is computed via correlation of each pair of images in this sequence. For recognition, the method applies principal component analysis to reduce the dimensionality of the plots, then uses the k-nearest neighbor rule in this reduced space to classify an unknown person. This method is robust to tracking and segmentation errors, and to variation in clothing and background. It is also invariant to small changes in camera viewpoint and walking speed. The method is tested on outdoor sequences of 44 people with 4 sequences of each taken on two different days, and achieves a classification rate of 77%. It is also tested on indoor sequences of 7 people walking on a treadmill, taken from 8 different viewpoints and on 7 different days. A classification rate of 78% is obtained for near-fronto-parallel views, and 65% on average over all view.
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