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Human arm estimation using convex features in depth images

机译:利用深度图像中的凸特征进行人体手臂估计

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Human arm estimation is very important for HCI and human pose estimation, but it remains a challenging problem due to complex environments, various poses, etc. In this paper, an efficient and robust method is presented to estimate human arms from depth images. Firstly, three convex features are explored from depth images for lower/upper arm detection, including convex degree feature (CDF), convex region feature (CRF), and U-type depth feature (UDF). With these effective features, secondly, the upper arm and lower arm candidates are accurately and quickly detected in a parallel and complementary way. Finally, the full arm is estimated based on depth continuity and human configuration constraint. Experiments on lots of test images demonstrate the robustness and efficacy of this approach.
机译:人体手臂估计对于HCI和人体姿势估计非常重要,但是由于复杂的环境,各种姿势等,它仍然是一个具有挑战性的问题。在本文中,本文提出了一种有效且鲁棒的方法,可以从深度图像中估计人体手臂。首先,从深度图像中探索出三个凸特征用于下/上臂检测,包括凸度特征(CDF),凸区域特征(CRF)和U型深度特征(UDF)。其次,借助这些有效功能,可以以平行和互补的方式准确,快速地检测上臂和下臂候选者。最后,基于深度连续性和人为配置约束来估计整个手臂。在大量测试图像上进行的实验证明了这种方法的鲁棒性和有效性。

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