基于Wi-Fi信号的手语估计方案

C. Liu, Jiang Liu, S. Shimamoto
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引用次数: 1

摘要

手语识别系统在人机交互领域中占有重要地位。在听障人士的日常生活中,手语是他们与外界交流的主要工具。虽然手语可以满足简单的对话,但在一些需要大量对话的情况下,如医疗紧急情况或教育咨询,手语很难处理。本文提出了一种基于Wi-Fi的手语识别系统,以改善残疾人的生活。该系统收集由于手部运动变化而产生的通道状态信息(CSI)。通过对所有子载波的分析,确定CSI的幅值以反映不同手语的特征,去除CSI幅值中的一些高频噪声,得到更平滑的信号手势特征。提出了一种基于时间序列方差的手势特征提取方法,并利用DTW算法对9种常见的日语手语手势进行了识别。我们设置了两个日常条件对系统进行测试,实验结果表明,系统在不同的条件下表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sign Language Estimation Scheme Employing Wi-Fi Signal
The sign language recognition system plays an important role in the field of human-computer interaction. In the daily life of hearing-impaired people, sign language is used as the main tool to communicate with the world. Although sign language can satisfy simple conversation, it is difficult to deal with in some situations where a lot of conversation is required such as medical emergencies or educational consultation. This paper proposes a sign language recognition system based on Wi-Fi to improve the life of the disabled. The proposed system collects the Channel State Information (CSI) due to the change of hand movement. Through the analysis of all subcarriers, the amplitude of CSI is determined to reflect the characteristics of different sign languages, some high-frequency noise is removed in the amplitude of CSI to obtain a smoother signal Gesture feature. We propose a gesture feature extraction method based on the variance of time series and DTW algorithm is used to recognize nine common Japanese sign language gestures. We set two daily conditions to test the system, and the experimental results show that the system performs well in different conditions.
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