College of Communication Engineering, Hangzhou Dianzi University, Hangzhou 310018, China.
Sensors (Basel). 2021 Jun 3;21(11):3872. doi: 10.3390/s21113872.
Force myography (FMG) is a method that uses pressure sensors to measure muscle contraction indirectly. Compared with the conventional approach utilizing myoelectric signals in hand gesture recognition, it is a valuable substitute. To achieve the aim of gesture recognition at minimum cost, it is necessary to study the minimum sampling frequency and the minimal number of channels. For purpose of investigating the effect of sampling frequency and the number of channels on the accuracy of gesture recognition, a hardware system that has 16 channels has been designed for capturing forearm FMG signals with a maximum sampling frequency of 1 kHz. Using this acquisition equipment, a force myography database containing 10 subjects' data has been created. In this paper, gesture accuracies under different sampling frequencies and channel's number are obtained. Under 1 kHz sampling rate and 16 channels, four of five tested classifiers reach an accuracy up to about 99%. Other experimental results indicate that: (1) the sampling frequency of the FMG signal can be as low as 5 Hz for the recognition of static movements; (2) the reduction of channel number has a large impact on the accuracy, and the suggested channel number for gesture recognition is eight; and (3) the distribution of the sensors on the forearm would affect the recognition accuracy, and it is possible to improve the accuracy via optimizing the sensor position.
力肌电图(FMG)是一种使用压力传感器间接测量肌肉收缩的方法。与传统的利用手动作识别中的肌电信号的方法相比,它是一种很有价值的替代方法。为了以最低的成本实现手势识别的目标,有必要研究最小采样频率和最小通道数。为了研究采样频率和通道数对手势识别精度的影响,设计了一个具有 16 个通道的硬件系统,用于采集最大采样频率为 1 kHz 的前臂 FMG 信号。使用该采集设备,创建了一个包含 10 位受试者数据的力肌电图数据库。本文获得了不同采样频率和通道数量下的手势精度。在 1 kHz 采样率和 16 个通道下,五种测试分类器中的四种达到了约 99%的精度。其他实验结果表明:(1)FMG 信号的采样频率可以低至 5 Hz 以识别静态运动;(2)通道数量的减少对精度有很大影响,建议用于手势识别的通道数为 8;(3)传感器在前臂上的分布会影响识别精度,通过优化传感器位置可以提高精度。