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Dynamic hand gesture recognition using motion pattern and shape descriptors

机译:使用运动模式和形状描述符的动态手势识别

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The key problems of dynamic hand gesture recognition are large intra-class (gesture types, without considering hand configuration) spatial-temporal variability and similar inter-class (gesture types, only considering hand configuration) motion pattern. Firstly, for intra-class spatial-temporal variability, the key is to reduce the spatial-temporal variability. Due to the average operation can improve the robustness very well, we propose a motion pattern descriptor, Time-Wise Histograms of Oriented Gradients (TWHOG), which extracts the average spatial-temporal information in the space-time domain from three orthogonal projection views (XY, YT, XT). Secondly, for similar inter-class motion pattern, accurate representation of hand configuration is especially important. Therefore, the difference in detail needs to be fully captured, and the shape descriptor can amplify subtle differences. Specifically, we introduce Depth Motion Maps-based Histograms of Oriented Gradients (DMM-HOG) to capture subtle differences in hand configurations between different types of gestures with similar motion patterns. Finally, we concatenate TWHOG and DMM-HOG to form the final feature vector Time-Shape Histograms of Oriented Gradients (TSHOG) and verify the effectiveness of the connection from quantitative and qualitative perspective. Comparison study with the state-of-the-art approaches are conducted on two challenge depth gesture datasets (MSRGesture3D, SKIG). The experiment result shows that TSHOG can achieve satisfactory performance while keeping a relative simple model with lower complexity as well as higher generality.
机译:动态手势识别的关键问题是大的类内(手势类型,不考虑手的配置)时空变化和类似的类间(手势类型,仅考虑手的配置)运动模式。首先,对于类内时空变异,关键是要降低时空变异。由于平均操作可以很好地改善鲁棒性,因此我们提出了一种运动模式描述符-定向梯度时变直方图(TWHOG),它从三个正交投影视图中提取时空域中的平均时空信息( XY,YT,XT)。其次,对于类似的类间运动模式,手形的准确表示尤为重要。因此,需要充分捕捉细节上的差异,并且形状描述符可以放大细微的差异。具体来说,我们介绍了基于深度运动图的定向梯度直方图(DMM-HOG),以捕获具有类似运动模式的不同类型手势之间的手形之间的细微差异。最后,我们将TWHOG和DMM-HOG连接起来,形成最终的特征向量定向梯度时间形状直方图(TSHOG),并从定量和定性的角度验证了连接的有效性。在两个挑战深度手势数据集(MSRGesture3D,SKIG)上进行了与最新方法的比较研究。实验结果表明,TSHOG可以保持令人满意的性能,同时保持相对简单的模型,具有较低的复杂度和较高的通用性。

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