基于三维模式组合轨迹的动态手势识别

Said Yacine Boulahia, É. Anquetil, F. Multon, R. Kulpa
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引用次数: 41

摘要

在过去的几年里,商用3D传感器的进步极大地推动了动态手势识别的研究。另一方面,自Kinect类传感器出现以来,全身手势识别也引起了越来越多的关注。人们可能会注意到,这两个研究主题都涉及人造运动,并且可能面临类似的挑战。因此,在本文中,我们的目的是评估动作识别特征集使用骨架数据建模动态手势的适用性。此外,现有的数据集通常由预分割的手势组成,这些手势仅由单手执行。因此,我们收集了一个更具挑战性的数据集,其中包含13个手势类的未分割流,用单手或双手执行。我们的方法首先在现有的数据集上进行评估,即DHG数据集,然后使用我们收集的数据集。与以前的方法相比,报告了更好的结果。
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Dynamic hand gesture recognition based on 3D pattern assembled trajectories
Over the past few years, advances in commercial 3D sensors have substantially promoted the research of dynamic hand gesture recognition. On a other side, whole body gestures recognition has also attracted increasing attention since the emergence of Kinect like sensors. One may notice that both research topics deal with human-made motions and are likely to face similar challenges. In this paper, our aim is thus to evaluate the applicability of an action recognition feature-set to model dynamic hand gestures using skeleton data. Furthermore, existing datasets are often composed of pre-segmented gestures that are performed with a single hand only. We collected therefore a more challenging dataset, which contains unsegmented streams of 13 hand gesture classes, performed with either a single hand or two hands. Our approach is first evaluated on an existing dataset, namely DHG dataset, and then using our collected dataset. Better results compared to previous approaches are reported.
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