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首页> 外文期刊>Biomedical and Health Informatics, IEEE Journal of >Development of a Wearable Electrical Impedance Tomographic Sensor for Gesture Recognition With Machine Learning
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Development of a Wearable Electrical Impedance Tomographic Sensor for Gesture Recognition With Machine Learning

机译:用机器学习的手势识别开发可穿戴电气阻抗断层传感器

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摘要

A wearable electrical impedance tomographic (wEIT) sensor with 8 electrodes is developed to realize gesture recognition with machine learning algorithms. To optimize the wEIT sensor, gesture recognition rates are compared by using a series of electrodes with different materials and shapes. To improve the gesture recognition rates, several Machine Learning algorithms are used to recognize three different gestures with the obtained voltage data. To clarify the gesture recognition mechanism, an electrical model of the electrode-skin contact impedance is established. Experimental results show that: rectangular copper electrodes realize the highest recognition rate; the existence of the electrode-skin contact impedance could improve the gesture recognition rate; Medium Gaussian SVM (Support Vector Machine) algorithm is the optimal algorithm with an average recognition rate of 95%.
机译:具有8个电极的可穿戴电气阻抗断层(Weit)传感器以实现与机器学习算法的手势识别。为了优化Weit传感器,通过使用具有不同材料和形状的一系列电极来比较手势识别率。为了提高手势识别速率,使用几种机器学习算法用于识别具有所获得的电压数据的三种不同的手势。为了阐明手势识别机制,建立了电极 - 皮肤接触阻抗的电模型。实验结果表明:矩形铜电极实现最高识别率;电极 - 皮肤接触阻抗的存在可以提高手势识别率;媒体高斯SVM(支持向量机)算法是最佳算法,平均识别率为95%。

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