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Surface Electrical Impedance Myography Measurements for Recognition of Numbers in American Sign Language

机译:用于识别美国手语中数字的表面电阻抗Myography测量

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Surface Electrical Impedance Myograghy (sEIM) is one of the newest methods to study muscle contraction state. Essentially sEIM consists of the application of a low intensity sinusoidal electrical current, injected into the body at a set of frequencies in which the impedance of muscle is calculated based on the measured resulting voltage. This impedance is estimated to presents relevant data for hand gesture recognition. In this paper, the change of surface electrical impedance in the forearm muscle was collected during performing gestures representing the American Sign Language numbers. The measurements were carried out on the flexor muscle on the right forearm (dominant hand) on a group of 10 healthy subjects of the same age approximately. A four-pole method was considered with an inter-electrodes distance of 6 cm and a current injected amplitude equal to 0.1 mA in the frequency range between 1 kHz and 1 MHz. In order to reach high accuracy, features inspired by the medical use of sEIM for cancer and neuromuscular diseases diagnosis are extracted from the collected measurements in the first step followed by the implementation of an extreme learning machine (ELM) classifier. A five fold cross validation was applied in the training phase of the model and a prediction accuracy of 70,17% was noted during the testing phase.
机译:表面电阻抗Myograghy(sEIM)是研究肌肉收缩状态的最新方法之一。基本上,sEIM包括施加低强度正弦电流,该电流以一组频率注入人体,在该一组频率中,根据测得的合成电压来计算肌肉的阻抗。估计该阻抗以提供用于手势识别的相关数据。在本文中,在执行代表美国手语数字的手势时,收集了前臂肌肉表面电阻抗的变化。测量是在大约10个年龄相同的健康受试者的一组上,对右前臂(优势手)的屈肌进行的。考虑了四极方法,电极间距离为6 cm,在1 kHz至1 MHz的频率范围内,电流注入幅度等于0.1 mA。为了达到较高的准确性,第一步需要从收集的测量中提取受sEIM在癌症和神经肌肉疾病诊断中的医学应用启发的功能,然后实施极限学习机(ELM)分类器。在模型的训练阶段进行了五次交叉验证,在测试阶段发现了70.17%的预测准确性。

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