Combining Photometric Features and Relative Position to Detect and Track Target Person

B. S. B. Dewantara, J. Miura
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Abstract

Tracking a target person is a vital job in human-robot interaction. The robot must always notice a particular person as the interaction target partner. However, it is sometimes very hard to distinguish the target person because there are many other persons around the target. In this paper, we propose a target person detection and tracking system by combining person’s frontal photometric features such as face and clothing color, and coordinate of the person’s location in the real world. We apply an illumination invariant face recognition method named OptiFuzz. Hue-Saturation histogram (HS-histogram) is used to obtain the clothing color feature, and a location of the person is acquired from a calibrated single camera view. All these features are then fed into an algorithm of Naive Bayes to discriminate between the target person and others. Our experimental results indicate a successful outcome as it is always possible to detect and track the target person.
结合光度特征和相对位置检测和跟踪目标人
跟踪目标人是人机交互中的一项重要工作。机器人必须始终注意到一个特定的人作为交互目标伙伴。然而,有时很难区分目标人,因为目标周围有很多其他人。本文提出了一种结合人脸、服装颜色等人的正面光度特征和人在现实世界中的位置坐标的目标人检测与跟踪系统。我们应用了一种光照不变的人脸识别方法OptiFuzz。利用色调饱和度直方图(HS-histogram)获得服装颜色特征,并从校准后的单相机视图中获得人物的位置。然后将所有这些特征输入朴素贝叶斯算法,以区分目标人和其他人。我们的实验结果表明了一个成功的结果,因为它总是有可能检测和跟踪目标人。
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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