首页> 外文会议>2011 IEEE International Conference on Automatic Face Gesture Recognition and Workshops >Estimating human 3D pose from Time-of-Flight images based on geodesic distances and optical flow
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Estimating human 3D pose from Time-of-Flight images based on geodesic distances and optical flow

机译:根据测地距离和光流从飞行时间图像估计人的3D姿势

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In this paper, we present a method for human full-body pose estimation from Time-of-Flight (ToF) camera images. Our approach consists of robustly detecting anatomical landmarks in the 3D data and fitting a skeleton body model using constrained inverse kinematics. Instead of relying on appearance-based features for interest point detection that can vary strongly with illumination and pose changes, we build upon a graph-based representation of the ToF depth data that allows us to measure geodesic distances between body parts. As these distances do not change with body movement, we are able to localize anatomical landmarks independent of pose. For differentiation of body parts that occlude each other, we employ motion information, obtained from the optical flow between subsequent ToF intensity images. We provide a qualitative and quantitative evaluation of our pose tracking method on ToF sequences containing movements of varying complexity.
机译:在本文中,我们提出了一种基于飞行时间(ToF)相机图像的人体全身姿势估计方法。我们的方法包括稳健地检测3D数据中的解剖学界标,并使用约束逆运动学拟合骨架模型。我们不再依赖于基于外观的特征来进行兴趣点检测,因为兴趣点检测会随着光照和姿势的变化而发生很大变化,而是建立在基于图的ToF深度数据表示之上,从而可以测量人体各部位之间的测地距离。由于这些距离不会随人体运动而变化,因此我们能够独立于姿势来定位解剖学界标。为了区分相互遮挡的身体部位,我们采用了从后续ToF强度图像之间的光流获得的运动信息。我们对包含不同复杂度运动的ToF序列的姿势跟踪方法进行了定性和定量评估。

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