tongue -n-cheek:非接触的舌头手势识别

Zheng Li, R. Robucci, Nilanjan Banerjee, C. Patel
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引用次数: 25

摘要

舌头手势是语言障碍和全身瘫痪患者辅助和替代沟通的关键方式。然而,识别舌头手势的系统是高度侵入性的。它们要么依靠内置在假牙或患者口腔内的假牙中的磁传感器,要么需要使用肌电图(EMG)传感器与皮肤接触。在患者口腔内放置传感器长期使用可能会不舒服,而肌电图电极等接触式传感器可能会导致皮肤磨损。为了解决这个问题,我们提出了一种新型的非接触式传感器,称为tongue -n- cheek,它使用一组微型雷达来捕捉舌头的手势。微雷达阵列充当接近传感器,当病人做舌头手势时捕捉肌肉运动。Tongue-n-Cheek使用一种新的信号处理算法将这些动作转换成手势。我们证明了舌吻的有效性,并表明我们的系统可以可靠地以95%的准确率和低延迟推断手势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tongue-n-cheek: non-contact tongue gesture recognition
Tongue gestures are a key modality for augmentative and alternative communication in patients suffering from speech impairments and full-body paralysis. Systems for recognizing tongue gestures, however, are highly intrusive. They either rely on magnetic sensors built into dentures or artificial teeth deployed inside a patient's mouth or require contact with the skin using electromyography (EMG) sensors. Deploying sensors inside a patient's mouth can be uncomfortable for long-term use and contact-based sensors like EMG electrodes can cause skin abrasion. To address this problem, we present a novel contact-less sensor, called Tongue-n-Cheek, that captures tongue gestures using an array of micro-radars. The array of micro-radars act as proximity sensors and capture muscle movements when the patient performs the tongue gesture. Tongue-n-Cheek converts these movements into gestures using a novel signal processing algorithm. We demonstrate the efficacy of Tongue-n-Cheek and show that our system can reliably infer gestures with 95% accuracy and low latency.
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