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Isolated Sign Language Recognition with Depth Cameras

机译:与深度照相机的孤立的手语识别

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In this paper, an approach to isolated sign language recognition with data provided by a depth camera is presented. In the introduced method, sequences of depth maps of dynamic sign language gestures are divided into smaller regions (cells). Then, statistical information is used to describe the cells. Since gesture executions have different lengths, the dynamic time warping (DTW) technique with the nearest neighbor (NN) rule is often employed for their comparison. However, due to time-consuming computations, the DTW limits the usability of the classifier. Therefore, in this paper, a selection of representative depth maps using statistics for cells is proposed. It is shown that such gesture representation can be successfully employed for isolated sign language recognition with the NN classifier using the city block distance. Furthermore, the NN rule with the DTW and the introduced statistics for cells provides superior gesture recognition performance.
机译:在本文中,提出了一种与深度相机提供的数据分离的标志语言识别的方法。 在引入的方法中,动态标志语言手势的深度图序列被分成较小的区域(小区)。 然后,使用统计信息来描述细胞。 由于手势执行具有不同的长度,因此具有最近邻居(NN)规则的动态时间翘曲(DTW)技术通常用于其比较。 然而,由于耗时的计算,DTW限制了分类器的可用性。 因此,在本文中,提出了一种选择使用细胞统计的代表性深度图。 结果表明,使用城市块距离可以成功地用于与NN分类器的隔离标志语言识别成功使用。 此外,具有DTW的NN规则和电池的引入统计数据提供了卓越的手势识别性能。

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