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首页> 外文期刊>International Journal of Computer Vision >Using Segmented 3D Point Clouds for Accurate Likelihood Approximation in Human Pose Tracking
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Using Segmented 3D Point Clouds for Accurate Likelihood Approximation in Human Pose Tracking

机译:使用分段3D点云在人体姿态跟踪中进行精确的似然近似

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摘要

The observation likelihood approximation is a central problem in stochastic human pose tracking. In this article we present a new approach to quantify the correspondence between hypothetical and observed human poses in depth images. Our approach is based on segmented point clouds, enabling accurate approximations even under conditions of self-occlusion and in the absence of color or texture cues. The segmentation step extracts small regions of high saliency such as hands or arms and ensures that the information contained in these regions is not marginalized by larger, less salient regions such as the chest. To enable the rapid, parallel evaluation of many poses, a fast ellipsoid body model is used which handles occlusion and intersection detection in an integrated manner. The proposed approximation function is evaluated on both synthetic and real camera data. In addition, we compare our approximation function against the corresponding function used by a state-of-the-art pose tracker. The approach is suitable for parallelization on GPUs or multicore CPUs.
机译:观察似然近似是随机的人类姿势跟踪中的中心问题。在本文中,我们提出了一种新的方法来量化深度图像中假设的和观察到的人体姿势之间的对应关系。我们的方法基于分段点云,即使在自遮蔽条件下且没有颜色或纹理提示的情况下,也可以实现精确的逼近。分割步骤提取了高显着性的小区域,例如手或手臂,并确保包含在这些区域中的信息不会被较大而不太明显的区域(例如胸部)边缘化。为了能够快速,并行地评估许多姿势,使用了快速椭圆体模型,该模型以集成方式处理遮挡和相交检测。拟议的逼近函数在合成和真实相机数据上进行评估。此外,我们将逼近函数与最新姿态跟踪器使用的相应函数进行了比较。该方法适用于GPU或多核CPU上的并行化。

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