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Chronological pattern indexing: An efficient feature extraction method for hand gesture recognition with Leap Motion

机译:按时间顺序索引:利用跳跃运动的手势识别有效特征提取方法

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Recently, Hand-Gesture-Recognition (HGR) systems has appreciably change the way of interaction between humans and computers thanks to advanced sensor technologies like the Leap-Motion-Controller (LMC). Despite the success achieved by many state-of-the-art methods, they have not worked on the rich temporal information existing in the sequential hand gesture data and characterizing the discriminative representation of different hand gesture classes. In this paper, we suggest a novel Chronological-Pattern-Indexing (CPI) approach which encodes the temporal orders of patterns for hand gesture time series data acquired by the LMC sensor. We extract a set of temporal patterns from different optimized projections. Then, we compare their temporal order and we encode the whole sequence with the index of the first coming pattern. We repeat these steps until we generate an efficient feature vector modeling the chronological dynamics of the hand gesture. The experiments demonstrate the potential of the proposed CPI approach for HGR systems. (C) 2020 Elsevier Inc. All rights reserved.
机译:最近,手势识别(HGR)系统明显改变了人类和计算机之间的互动方式,得益于Leap-Motion-Controller(LMC)等先进的传感器技术。尽管通过许多最先进的方法取得了成功,但它们并未在连续手势数据中存在的丰富的时间信息,并表征不同手势课程的鉴别表示。在本文中,我们建议一种新的时间顺序模式索引(CPI)方法,其编码由LMC传感器获取的手势时序列数据的手势时间序列数据的时间顺序。我们从不同的优化投影中提取一组时间模式。然后,我们比较他们的时间顺序,我们将整个序列编码为第一个更新的图案的索引。我们重复这些步骤,直到我们生成有效的特征向量建模手势的时间动态。实验证明了HGR系统所提出的CPI方法的潜力。 (c)2020 Elsevier Inc.保留所有权利。

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