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SEMG Based Recognition for Lumbar Muscle Fatigue During Prolonged Driving

机译:基于SEMG的长时间驾驶过程中腰肌疲劳识别

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This study presents a method for supervised classification of multi-channel surface electromyography (SEMG) signals with the aim of recognizing drivers' lumbar muscle fatigue during prolonged driving. An experiment was carried out to investigate the SEMG manifestations of 8 drivers' lumbar muscle fatigue with recording of SEMG from 4 locations over lumbar erector spinae. Based on the wavelet packet transform (WPT) and continuous wavelet transform (CWT) of each SEMG segment, a representation space composed of 176-dimension features was extracted to classify three muscle fatigue statuses. The 176D features were calculated from Shannon entropy and relative energy of wavelet packets, along with instantaneous median frequency (IMDF), mean frequency (IMNF), and energy (IE) from CWT of wavelet packet (4, 15). The classification was performed by a C typed support vector machine (SVM) with a radial basis function (RBF) kernel, which was compared with a linear kernel. Parameters of SVM were optimized with the grid search method. Results: Correct classification rate (CCR) of the testing set was around 82.69 % (1.46 %)-an average (STD) value from 10 successive tests using a RBF-SVC, while the accuracy dropped to 78.94 % (1.63 %) with a linear kernel. Optimum parameters (c, gamma) for the RBF kernel were identified to be (110, 0.082), which affected the classification capacity in a serious way. The AUC (normalized area under the curve) values (0-1) of receiver operating characteristic (ROC) curves for the 10 successive tests were all above 0.9, which proved our method to be reliable and promising in a detection system of drivers' lumbar muscle fatigue.
机译:这项研究提出了一种对多通道表面肌电图(SEMG)信号进行监督分类的方法,旨在识别长时间驾驶过程中驾驶员的腰部肌肉疲劳。进行了一项实验,研究了8个驾驶员腰部肌肉疲劳的SEMG表现,并记录了来自腰直肌脊柱4个位置的SEMG。基于每个SEMG段的小波包变换(WPT)和连续小波变换(CWT),提取了由176维特征组成的表示空间,以对三种肌肉疲劳状态进行分类。根据小波包的Shannon熵和相对能量,以及小波包的CWT的瞬时中值频率(IMDF),平均频率(IMNF)和能量(IE),计算176D特征(4、15)。通过具有径向基函数(RBF)核的C型支持向量机(SVM)进行分类,并将其与线性核进行比较。支持向量机的参数用网格搜索法进行了优化。结果:测试集的正确分类率(CCR)约为82.69%(1.46%)-使用RBF-SVC进行的10次连续测试的平均值(STD)值,而准确度降至78.94%(1.63%),线性核。确定RBF内核的最佳参数(c,gamma)为(110,0.082),这严重影响了分类能力。连续10次测试的接收器工作特性(ROC)曲线的AUC(曲线下的标准化面积)值(0-1)均在0.9以上,这证明了我们的方法在驾驶员腰部检测系统中是可靠且有前途的肌肉疲劳。

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