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USING COMPACT DISTANCE ENERGY MODEL TO RECOVER HUMAN POSE IN MARKERLESS MOTION CAPTURE

机译:使用紧凑距离能量模型恢复无运动捕捉中的人姿

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摘要

Much of the research on markerless model-based human body motion capture always tries hard to construct accurate human body model and precise surface contour (e.g. using super-quadrics or ellipsoids to represent model limbs). Unfortunately, because of the main challenges of human body motion capture such as loose clothing, selfocclusion, image noise and background segmentation error, there are lots of error messages in the 3D reconstruct result of human body, which makes the efforts of these methods get very limited effects. In this paper, we propose a novel algorithm that uses a compact distance energy model (DEM) to recover the human pose which is robust to the inaccurate human body reconstruction caused by the factors mentioned above, and the DEM will be updated in EM framework in the process of motion capture to ensure that the DEM is compact to the body at any time. Experiments show the effectiveness of the proposed method.
机译:基于无标记模型的人体运动捕捉的许多研究总是试图构建准确的人体模型和精确的表面轮廓(例如使用超二次方或椭球体来代表模型肢体)。不幸的是,由于人体运动捕捉的主要挑战,如衣服松动,自我遮挡,图像噪声和背景分割错误,在人体的3D重建结果中存在许多错误信息,这使得这些方法的工作变得非常艰巨。效果有限。在本文中,我们提出了一种新颖的算法,该算法使用紧凑距离能量模型(DEM)来恢复人体姿势,该姿势对于上述因素导致的不准确的人体重建具有鲁棒性,并将在EM框架中更新DEM。运动捕捉的过程,以确保DEM随时随地紧贴身体。实验证明了该方法的有效性。

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