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Automatic Hand Detection in RGB-Depth Data Sequences

机译:RGB深度数据序列中的自动手检测

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摘要

Detecting hands in multi-modal RGB-Depth visual data has become a challenging Computer Vision problem with several applications of interest. This task involves dealing with changes in illumination, viewpoint variations, the articulated nature of the human body, the high flexibility of the wrist articulation, and the deformability of the hand itself. In this work, we propose an accurate and efficient automatic hand detection scheme to be applied in Human-Computer Interaction (HCI) applications in which the user is seated at the desk and, thus, only the upper body is visible. Our main hypothesis is that hand landmarks remain at a nearly constant geodesic distance from an automatically located anatomical reference point. In a given frame, the human body is segmented first in the depth image. Then, a graph representation of the body is built in which the geodesic paths are computed from the reference point. The dense optical flow vectors on the corresponding RGB image are used to reduce ambiguities of the geodesic paths' connectivity, allowing to eliminate false edges interconnecting different body parts. Finally, we are able to detect the position of both hands based on invariant geodesic distances and optical flow within the body region, without involving costly learning procedures.
机译:在多模态RGB-Deake Visual数据中检测手已经成为一个充满兴趣的计算机视觉问题。这项任务涉及处理照明的变化,观点变化,人体的铰接性质,手腕铰接的高柔韧性,以及手本身的可变形性。在这项工作中,我们提出了一种准确,有效高效的自动手动检测方案,以便应用于人机交互(HCI)应用中,其中用户坐在桌面上,因此,只有上体可见。我们的主要假设是,手势距离自动定位的解剖学参考点几乎恒定的测地距离。在给定框架中,人体首先在深度图像中分段。然后,建立主体的图形表示,其中从参考点计算测地路径。相应的RGB图像上的致密光学流量矢量用于减少测地路径的连接的模糊,允许消除互连不同体部件的错误边缘。最后,我们能够根据身体区域内的不变的测地距和光学流动来检测双手的位置,而不涉及昂贵的学习程序。

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