Sentence-Level Sign Language Recognition Using RF signals

Xianjia Meng, Lin Feng, Xiao Yin, Huanting Zhou, Chang Sheng, Chongyang Wang, A. Du, Linzhi Xu
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引用次数: 3

Abstract

Sign language recognition is emerging as a vital component of our smart life. In addition, commercial RFID shall become a popular technology for sign language recognition. As we all know, there are 70 million deaf people using sign language as their first language and sign language can facilitate communication with deaf people. However, most of the researches are isolated word recognition. There is few researches about sentence-level sign language recognition. More importantly, they are limited and it is difficult to achieve the desired results of realworld applications. So this paper introduces the first sentence-level sign language recognition system based on RFID. It mainly collects the phase sequence of signals received by commercial RFID device. We obtain relatively pure phase characteristics and present a method to carry out sign language segmentation. Effective feature extraction and classifier selection are crucial to sign language recognition. By evaluating our system in real-word environment, we fill in the gaps between corresponding low-cost sentence-level sign language recognition. We implement and evaluate through extensive experiments and the average accuracy of the method are 96% and 98.11% in different multipath scenarios. The results show that our method has high recognition accuracy and robustness.
使用射频信号的句子级手语识别
手语识别正在成为我们智能生活的重要组成部分。此外,商用RFID将成为一种流行的手语识别技术。众所周知,有7000万聋人以手语为第一语言,手语可以方便与聋人交流。然而,大多数研究都是孤立词识别。关于句子级手语识别的研究很少。更重要的是,它们是有限的,很难达到实际应用的预期结果。为此,本文介绍了首个基于RFID的句子级手语识别系统。它主要收集商用RFID设备接收到的信号的相序。我们获得了相对纯粹的相位特征,并提出了一种进行手语分割的方法。有效的特征提取和分类器的选择是手语识别的关键。通过在真实世界环境中对我们的系统进行评估,我们填补了相应的低成本句子级手语识别之间的空白。我们通过大量的实验实现和评估,在不同的多径场景下,该方法的平均准确率分别为96%和98.11%。结果表明,该方法具有较高的识别精度和鲁棒性。
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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