UltraGesture: Fine-Grained Gesture Sensing and Recognition

Kang Ling, Haipeng Dai, Yuntang Liu, A. Liu
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引用次数: 80

Abstract

With the rising of AR/VR technology and miniaturization of mobile devices, gesture is becoming an increasingly popular means of interacting with smart devices. Some pioneer ultrasound based human gesture recognition systems have been proposed. They mostly rely on low resolution Doppler Effect, and hence focus on whole hand motion and cannot deal with minor finger motions. In this paper, we present UltraGesture, a Channel Impulse Response (CIR) based ultrasonic finger motion perception and recognition system. CIR measurements can provide with 7 mm resolution, rendering it sufficient for minor finger motion recognition. UltraGesture encapsulates CIR measurements into an image, and builds a Convolutional Neural Network model to classify these images into different categories, which corresponding to distinct gestures. Our system runs on commercial speakers and microphones that already exist on most mobile devices without hardware modification. Our results show that UltraGesture achieves an average accuracy of greater than 97% for 12 gestures including finger click and rotation.
超手势:细粒度手势感知和识别
随着AR/VR技术的兴起和移动设备的小型化,手势正在成为一种越来越流行的与智能设备交互的方式。一些基于超声波的人体手势识别系统已经被提出。它们大多依赖于低分辨率多普勒效应,因此关注整个手的运动,而不能处理手指的微小运动。在本文中,我们提出了一种基于通道脉冲响应(CIR)的超声波手指运动感知和识别系统UltraGesture。CIR测量可以提供7毫米的分辨率,使其足以用于小手指运动识别。UltraGesture将CIR测量值封装到图像中,并构建卷积神经网络模型,将这些图像分为不同的类别,对应不同的手势。我们的系统运行在大多数移动设备上已经存在的商业扬声器和麦克风上,无需硬件修改。我们的研究结果表明,UltraGesture在包括手指点击和旋转在内的12种手势上的平均准确率超过97%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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