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Feature points selection for markerless hand pose estimation

机译:特征点选择,用于无标记手部姿势估计

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One of the conditions for accurate planar pose estimation is that feature points must be both coplanar and noncollinear. Many research on markerless hand tracking and pose estimation as a planar target have been done, however the selection of hand feature points as coplanar but noncollinear points has not been investigated. This paper proposes a novel selection of hand feature points for pose estimation that improves the pose estimation. Markerless hand pose estimation as a continuous tracking of rigid planar object is made possible using robust planar pose (RPP) algorithm implemented on a marker-based Augmented Reality Toolkit (ARToolkit) library. The results obtained show significant improvement over recent approaches on the accuracy of the estimated pose such as in the rotation and the translation parameters and pose ambiguity problems are greatly reduced.
机译:准确的平面姿态估计的条件之一是特征点必须同时处于共面和非共线。已经完成了许多关于无标记手部追踪和姿势估计作为平面目标的研究,但是还没有研究将手部特征点选择为共面但非共线的点。本文提出了一种新颖的手特征点选择用于姿势估计的方法,该方法可以改善姿势估计。使用基于标记的增强现实工具包(ARToolkit)库中实现的鲁棒的平面姿势(RPP)算法,可以实现对连续的刚性平面对象进行无标记手势估计。所获得的结果表明,相对于最近的方法,估计姿势的准确性(例如旋转角度)有了显着改善,并且平移参数和姿势歧义问题大大减少。

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