Detection and Estimation of Omni-Directional Pointing Gestures Using Multiple Cameras

Hiroki Watanabe, H. Hongo, M. Yasumoto, Kazuhiko Yamamoto
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引用次数: 10

Abstract

We propose a multi-camera system that can detect omni-directional pointing gestures and estimate the direction of pointing. In general, when a human points at something, their target exists directly in front of the direction they are facing. Therefore, we regard the direction of pointing as the direction represented by the straight line that connects the face position with the hand position. First, the multiple cameras detect the face region by skin colors and estimate the face direction with the discrete face direction feature classes. Second, we estimate the precise direction that the subject is facing with the integrated information from multiple cameras and decide which camera captures the frontal view of the face the best. This camera is labeled the center camera. Third, we select a pair of cameras on both sides of the center camera as a stereo camera and detect the spatial positions of the face and hand. Finally, the target that the subject is pointing to is found on the straight line that connects the face position with the hand position. Experiments show that out system can achieve a mean error of 1.94" with a variance of 4.37 throughout the pointing direction.
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多摄像头全方位指向手势的检测与估计
我们提出了一种能够检测全方位指向手势并估计指向方向的多摄像头系统。一般来说,当一个人指着某物时,他们的目标就在他们面对的方向的正前方。因此,我们将指向的方向视为连接脸位置和手位置的直线所表示的方向。首先,多摄像机通过肤色检测人脸区域,并利用离散的人脸方向特征类估计人脸方向;其次,我们利用多个摄像头的综合信息来估计被摄对象所面对的精确方向,并决定哪个摄像头能最好地捕捉人脸的正面视图。这台相机被标为中央相机。第三,在中心摄像头两侧选择一对摄像头作为立体摄像头,检测人脸和手的空间位置。最后,受试者指向的目标位于连接脸位置和手位置的直线上。实验表明,该系统在整个指向方向上的平均误差为1.94”,方差为4.37。
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