基于切比雪夫矩的微多普勒雷达手势特征分类

L. Pallotta, Michela Cauli, C. Clemente, F. Fioranelli, G. Giunta, A. Farina
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引用次数: 6

摘要

本文设计了一种利用微多普勒特征对手势雷达信号进行自动分类的方法。特别是,该方法侧重于从每个记录信号的节奏速度图(CVD)中提取切比雪夫矩。该算法受益于这些矩的有趣性质,例如它们是在离散集合上定义的,因此无需近似计算,以及允许最小化计算时间的对称性。在具有挑战性的DopNet实时记录数据集上进行的实验显示了有趣的结果,证实了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of micro-Doppler radar hand-gesture signatures by means of Chebyshev moments
In this paper a method capable of automatically classify radar signals of human hand-gestures exploiting the micro-Doppler signature is designed. In particular, the methodology focuses on the extraction of the Chebyshev moments from the cadence velocity diagram (CVD) of each recorded signal. The algorithm benefits from interesting properties of these moments such as the fact that they are defined on a discrete set and hence computed without approximations, as well as the symmetry property that allows to minimize the computational time. The experiments computed on the challenging real-recorded DopNet dataset show interesting results that confirm the effectiveness of the approach.
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