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Hand-Gesture Recognition Using Two-Antenna Doppler Radar With Deep Convolutional Neural Networks

机译:深度卷积神经网络的两天线多普勒雷达手势识别

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摘要

Low cost consumer radar integrated circuits combined with recent advances in machine learning have opened up a range of new possibilities in smart sensing. In this paper, we use a miniature radar sensor to capture Doppler signatures of 14 different hand gestures and train a deep convolutional neural network (DCNN) to classify these captured gestures. We utilize two receiving antennas of a continuous-wave Doppler radar capable of producing the in-phase and quadrature components of the heat signals. We map these two heat signals into three input channels of a DCNN as two spectrograms and an angle of arrival matrix. The classification results of the proposed architecture show a gesture classification accuracy exceeding 95% and a very low confusion between different gestures. This is almost 10% improvement over the single-channel Doppler methods reported in the literature.
机译:低成本的消费者雷达集成电路与机器学习的最新进展相结合,为智能传感开辟了一系列新的可能性。在本文中,我们使用微型雷达传感器捕获14种不同手势的多普勒签名,并训练一个深度卷积神经网络(DCNN)对这些捕获的手势进行分类。我们利用连续波多普勒雷达的两个接收天线,能够产生热信号的同相和正交分量。我们将这两个热信号映射到DCNN的三个输入通道中,作为两个频谱图和一个到达角矩阵。所提出的体系结构的分类结果表明手势分类精度超过95%,并且不同手势之间的混淆程度非常低。与文献中报道的单通道多普勒方法相比,这几乎提高了10%。

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