CASTER:用于手势识别的计算机视觉辅助无线通道模拟器

Ren, Zhenyu, Li, Guoliang, Ji, Chenqing, Yu, Chao, Wang, Shuai, Wang, Rui
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引用次数: 0

摘要

针对无线手势识别中的训练数据采集问题,提出了一种计算机视觉辅助仿真方法。在现有文献中,为了通过无线信道估计对手势进行分类,需要在一致的环境中测量大量的训练样本,耗费大量的精力。然而,在提出的CASTER模拟器中,训练数据集可以通过现有的视频进行模拟。特别是,一个手势是由一系列快照表示的,每个快照的通道脉冲响应是通过跟踪从基于原始的手模型散射的光线来计算的。此外,CASTER模拟器依赖于现有的视频来提取手势的运动数据。因此,可以消除无线信道的大量测量。实验表明,模拟到现实推理的平均分类准确率为90.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CASTER: A Computer-Vision-Assisted Wireless Channel Simulator for Gesture Recognition
In this paper, a computer-vision-assisted simulation method is proposed to address the issue of training dataset acquisition for wireless hand gesture recognition. In the existing literature, in order to classify gestures via the wireless channel estimation, massive training samples should be measured in a consistent environment, consuming significant efforts. In the proposed CASTER simulator, however, the training dataset can be simulated via existing videos. Particularly, a gesture is represented by a sequence of snapshots, and the channel impulse response of each snapshot is calculated via tracing the rays scattered off a primitive-based hand model. Moreover, CASTER simulator relies on the existing videos to extract the motion data of gestures. Thus, the massive measurements of wireless channel can be eliminated. The experiments demonstrate a 90.8% average classification accuracy of simulation-to-reality inference.
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