腕力肌图(FMG)在手指符号识别中的应用

Rim Barioul, Sameh Fakhfakh Gharbi, Muhammad Bilal Abbasi, A. Fasih, Houda Ben-Jmeaa-Derbel, O. Kanoun
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引用次数: 3

摘要

力肌图(FMG)是一种非侵入性技术,在皮肤表面使用力敏感电阻(FSRs)来检测底层肌肉和肌腱复合体的体积变化。最近的工作提出了各种FMG系统,用于使用大量传感器或与其他传感器(如肌电图)相结合的系统来识别具有物体相互作用或力水平变化的手势。本文提出了两种最小FSR传感器数量(4个和8个)的FMG检测系统,用于基于原始FMG的美国手语识别,并实现极限学习机(ELM)来评估9个ALS字母识别的准确性。采用FMG系统对一名受试者进行了ALS信号检测的可行性测试,4个传感器的ELM准确率为78%,8个传感器的ELM准确率为97.90%,并初步探讨了最小有效传感器数量在第二波段的可行性。另外9名被试使用视觉传感器带对10名被试的9个ALS标志进行识别,ELM准确率为83,30%,而SVM在相同数据库下的准确率为64,9。
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Wrist Force Myography (FMG) Exploitation for Finger Signs Distinguishing
The Force Myography (FMG) is an non-invasive technique where force sensitive resistors (FSRs) are used on the surface of the skin to detect the volumetric variations in the underlying muscles and tendons complex. Recent works have proposed various FMG systems for gesture recognition with a big number of sensors or combined systems with other sensors such as electromyography to identify gestures with objects interaction or force level variation. This paper propose two FMG detection systems with minimal number of FSR sensors (four and eight) for American sign language recognition based on raw FMG with implementation of Extreme learning machine (ELM) for evaluating the accuracy of nine ALS alphabet recognition. The first feasibility test for ALS sign detection with FMG systems was tested with one subject with an ELM accuracy of 78% with four sensors and 97.90 % with eight and the minimal efficient sensor number was preliminary investigated in the second band. Other nine subjects tested the sight sensor band which resulted an ELM accuracy of 83,30% for identification of nine ALS signs from 10 subjects while the SVM resulted an accuracy of 64,9 with the same database.
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