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Gesture Recognition Using Reflected Visible and Infrared Lightwave Signals

机译:使用反射可见光和红外光波信号的手势识别

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摘要

In this article, we demonstrate the ability to recognize hand gestures in a noncontact wireless fashion using only incoherent light signals reflected from a human subject. Fundamentally distinguished from radar, lidar, and camera-based sensing systems, this sensing modality uses only a low-cost light source (e.g., LED) and a sensor (e.g., photodetector). The lightwave-based gesture recognition system identifies different gestures from the variations in light intensity reflected from the subject's hand within a short (20–35 cm) range. As users perform different gestures, scattered light forms unique, statistically repeatable, time-domain signatures. These signatures can be learned by repeated sampling to obtain the training model against which unknown gesture signals are tested and categorized. These time-domain variations of the lightwave signals reflected from hand are denoised, standardized, and then classified by using machine learning classification tools such as $K$ -nearest neighbors and support vector machine. Performance evaluations have been conducted with eight gestures, five subjects, different distances and lighting conditions, and visible and infrared light sources. The results demonstrate the best hand gesture recognition performance of infrared sensing at 20 cm with an average of 96% accuracy. The developed gesture recognition system is low-cost, effective, and noncontact technology for numerous human–computer interaction applications.
机译:在本文中,我们展示了仅使用从人类主体反射的不连贯的光信号来识别非接触无线方式以非接触无线方式识别手势的能力。基本上与基于雷达和基于相机的传感系统的基本区别,该感测模式仅使用低成本光源(例如,LED)和传感器(例如,光电探测器)。基于光文的手势识别系统识别来自在短(20-35cm)范围内的受试者手中的光强度的变化的不同手势。随着用户执行不同的手势,散射光形成唯一,统计上可重复的时域签名。这些签名可以通过重复采样来学习,以获得测试和分类未知手势信号的培训模型。从手中反射的光波信号的这些时间域变化是通过使用机器学习分类工具(如<内联公式XMLNS:MML =“)http://www.w3.org/1998/math的机器学习分类工具进行分类/ mathml“xmlns:xlink =”http://www.w3.org/1999/xlink“> $ k $ -nealest邻居和支持向量机。绩效评估已经用八个手势,五个受试者,不同的距离和照明条件进行,可见和红外光源。结果展示了20厘米的红外传感的最佳手势识别性能,平均精度为96%。开发的手势识别系统是众多人机交互应用的低成本,有效和非接触技术。

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