Statistical gait description via temporal moments

J. Shutler, M. Nixon, Christopher J. Harris
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引用次数: 50

Abstract

Statistical recognition techniques have already been shown to achieve good performance in automatic gait recognition. However, the metrics were only statistical in nature and did not describe the intimate nature of gait. Accordingly, new velocity moments have been developed to describe an object and its motion throughout an image sequence. These moments are an extended form of centralised moments and compute descriptions of the object and its behaviour evaluation shows that the velocity moments have the required descriptive capability and analysis on synthetic imagery shows that the velocity moments are less sensitive to noise than an averaged comparator moment. This is largely due to the integration of data from the whole sequence. An extraction procedure has been developed to find moving human subjects and we are currently evaluating the performance of this promising new approach in automatic gait recognition.
基于时间矩的统计步态描述
统计识别技术已经在自动步态识别中取得了很好的效果。然而,指标只是统计性质,并没有描述步态的亲密性质。因此,新的速度矩被发展用来描述一个物体及其在整个图像序列中的运动。这些矩是集中矩的扩展形式,计算对象及其行为的描述,评估表明速度矩具有所需的描述能力,对合成图像的分析表明,速度矩对噪声的敏感性低于平均比较矩。这在很大程度上是由于整合了整个序列的数据。已经开发了一种提取程序来寻找移动的人类受试者,我们目前正在评估这种有前途的新方法在自动步态识别中的性能。
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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