People identification using shadow dynamics

Y. Iwashita, A. Stoica, R. Kurazume
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引用次数: 15

Abstract

People identification has numerous applications, ranging from surveillance/security to robotics. Face and body movement/ gait biometrics are the most important tools for this task. Traditional biometrics use direct observation of the body, yet in some situations a projection may offer more information than the direct signal, for example the shadow of a person observed from overhead, e.g. from an unmanned aerial vehicle, may contain more detail than the top view of the head/body. We introduced the idea of shadow biometrics, exploiting biometrics information in human shadow silhouettes as derived from video imagery; this enables “overhead biometrics”, for recognition of human identity and behavior from high altitude airborne platforms using overhead video sequences. In this paper, we provide a demonstration of person identification based on gait recognition from shadow analysis. We describe compensation steps to address shadow variation with conditions of observation (sun position, etc). We define measures of shape variation, such as horizontal stripes on the silhouette, their length change in time determines frequency components (here spherical harmonics) for each gait cycle, which are used for classification by a k-nearest neighbor classifier. A correct classification rate (CCR) of 95 % was obtained. A degradation of CCR from 95 % to 75 % was observed when reduced spatial and temporal resolution from 1cm to 2cm, and from 30fps to 15fps.
使用阴影动态识别人物
人员识别有许多应用,从监视/安全到机器人。面部和身体运动/步态生物识别技术是这项任务最重要的工具。传统的生物识别技术使用对身体的直接观察,然而在某些情况下,投影可能比直接信号提供更多的信息,例如,从头顶(例如从无人驾驶飞行器上)观察到的人的阴影可能比头部/身体的俯视图包含更多的细节。我们引入了阴影生物识别的概念,利用来自视频图像的人体阴影轮廓中的生物识别信息;这使“头顶生物识别”成为可能,利用头顶视频序列从高空机载平台识别人类身份和行为。本文给出了一种基于阴影分析的步态识别的人脸识别方法。我们描述了补偿步骤,以解决随观测条件(太阳位置等)的阴影变化。我们定义了形状变化的度量,例如轮廓上的水平条纹,它们的长度随时间的变化决定了每个步态周期的频率成分(这里是球面谐波),这些频率成分被k近邻分类器用于分类。正确分类率(CCR)为95%。当空间和时间分辨率从1cm降低到2cm,从30fps降低到15fps时,CCR从95%下降到75%。
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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