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Human Body 3D Posture Estimation Using Significant Points and Two Cameras

机译:人体3D使用重要点和两个相机的姿势估计

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This paper proposes a three-dimensional (3D) human posture estimation system that locates 3D significant body points based on 2D body contours extracted from two cameras without using any depth sensors. The 3D significant body points that are located by this system include the head, the center of the body, the tips of the feet, the tips of the hands, the elbows, and the knees. First, a linear support vector machine- (SVM-) based segmentation method is proposed to distinguish the human body from the background in red, green, and blue (RGB) color space. The SVM-based segmentation method uses not only normalized color differences but also included angle between pixels in the current frame and the background in order to reduce shadow influence. After segmentation, 2D significant points in each of the two extracted images are located. A significant point volume matching (SPVM) method is then proposed to reconstruct the 3D significant body point locations by using 2D posture estimation results. Experimental results show that the proposed SVM-based segmentation method shows better performance than other gray level- and RGB-based segmentation approaches. This paper also shows the effectiveness of the 3D posture estimation results in different postures.
机译:本文提出了一种三维(3D)人姿势估计系统,该系统基于从两个摄像机中提取的2D体轮廓定位3D显着体点而不使用任何深度传感器。由该系统定位的3D重要体点包括头部,主体的中心,脚的尖端,手的尖端,肘部和膝盖。首先,提出了一种基于线性支持向量机 - (SVM-)的分段方法,以将人体与红色,绿色和蓝色(RGB)颜色空间中的背景区分开。基于SVM的分割方法不仅使用标准化的颜色差异,而且使用当前帧中的像素之间的角度和背景,以减少阴影影响。在分割之后,位于两个提取的图像中的每一个中的2D显着点。然后提出了一种显着的点匹配(SPVM)方法通过使用2D姿势估计结果来重建3D显着体点位置。实验结果表明,所提出的基于SVM的分割方法显示出比其他基于灰度和RGB的分段方法更好的性能。本文还展示了3D姿势估计导致不同姿势的有效性。

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