基于毫米波雷达的实时数字手势识别系统

Chun Yuan, Youxuan Zhong, Jiake Tian, Y. Zou
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引用次数: 0

摘要

手势交流是世界上最普遍的交流方式之一,它的优点是可以交换信息而不用担心不同语言的界限。因此,建立一种具有成本效益的捕获和理解人类手势的方法一直是人机交互领域的热门研究课题,特别是在智能城市等新兴场景中。在本文中,我们提出了一个基于市售毫米波雷达的系统,该系统使用特殊设计的卷积神经网络(CNN)算法来识别由人手移动路径表示的数字。我们说明了所提出的系统能够实时记录移动的手的路径,而代价是1个发射器,2个接收器和来自毫米波雷达的2.78 GHz带宽。实验结果表明,在现有数据中以7:3的比例分割的验证测试中,平均预测准确率为98.8%,在使用新数据的泛化测试中,平均预测准确率为95.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Real-time Digit Gesture Recognition System Based on mmWave Radar
Gesture communication is one of the most general communication methods in the world, with the obvious advantage of exchanging information without worrying about the borderline of different languages. Therefore, establishing a cost-effective way of capturing and understanding human gestures has long been a popular research topic regarding human-machine interaction, particularly in emerging scenarios such as smart cities, etc. In this paper, we propose a system based on a commercially available mmWave radar to recognize digits represented by the travel path of the human hand using a specially designed convolutional neural network (CNN) algorithm. We illustrate the proposed system is capable of recording the path of the moving hand in real-time at the cost of 1 transmitter, 2 receivers, and 2.78 GHz bandwidth from the mmWave radar. Our experimental results show that an average prediction accuracy of 98.8% is achieved in a validation test based on a 7:3 ratio split from existing dataset and an average prediction accuracy of 95.3% in generalization test using fresh data.
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