A Real-time Hand Gesture Recognition System using 24 GHz Radar Array

Guiyuan Zhang, Kang Zhang, Shengchang Lan, Yuan-Xun Liu, Lijia Chen
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Abstract

This paper presents a description of a real-time hand gesture recognition system. This system consists of three commercial modules perpendicular mounted in an three-dimensional array to provide six-channel baseband I/Q signals. The I/Q signals are pre-processed by the doppler signal amplitude threshold detection and spectral analysis. A convolutional neural network consisting in two convolutional layers and two fully connected layers is constructed as the recognition classifier with less dependence of feature extraction. The network is trained with 1000 groups of datasets and verified by testing recognized results as the customized shortcut keys. Results show that this system could achieve a high recognition accuracy rate higher than 95% in the real-time test.
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基于24ghz雷达阵列的实时手势识别系统
本文介绍了一种实时手势识别系统。该系统由三个商业模块组成,垂直安装在三维阵列中,提供六通道基带I/Q信号。通过多普勒信号幅度阈值检测和频谱分析对I/Q信号进行预处理。构造了一个由两个卷积层和两个全连接层组成的卷积神经网络作为识别分类器,对特征提取的依赖性较小。该网络使用1000组数据集进行训练,并通过测试识别结果作为自定义快捷键进行验证。结果表明,该系统在实时测试中取得了95%以上的识别率。
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