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Identification of a feature selection based pattern recognition scheme for finger movement recognition from multichannel EMG signals

机译:识别基于特征选择的模式识别方案,用于从多通道EMG信号中识别手指运动

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This paper focuses on identification of an effective pattern recognition scheme with the least number of time domain features for dexterous control of prosthetic hand to recognize the various finger movements from surface electromyogram (EMG) signals. Eight channels EMG from 8 able-bodied subjects for 15 individuals and combined finger activities have been considered in this work. In this work, an attempt has been made to recognize a number of classes with the least number of features. Therefore, EMG signals are pre-processed using dual tree complex wavelet transform to improve the discriminating capability of features and time domain features such as zero crossing, slope sign change, mean absolute value, and waveform length is extracted from the pre-processed data. The performance of extracted features is studied with different classifiers such as linear discriminant analysis, naive Bayes classifier, quadratic support vector machine and cubic support vector machine with and without feature selection algorithms. The feature selection has been studied using particle swarm optimization (PSO) and ant colony optimization (ACO) with different number of features to identify the effect of features. The results demonstrated that naive Bayes classifier with ant colony optimization shows an average classification accuracy of 88.89% with a response time of 0.058025 ms for recognizing the 15 different finger movements with 16 features with significant difference in accuracy compared to SVM classifier with feature selection for a significance level of 0.05. There is no significant difference in the accuracy, specificity and sensitivity of an SVM classifier with and without feature selection. But the processing time is significantly more than the LDA and NB classifier. The PSO and ACO results revealed that slope sign changes contribute to recognizing the activity. In PSO, mean absolute value has been found to be effective compared to waveform length, contradictory with ACO. Further, the zero crossings have been found to be not effective in classification of finger movements in both the methods.
机译:本文着重于识别一种有效的模式识别方案,该方案具有最少数量的时域特征,可以灵巧地控制假肢,以从表面肌电图(EMG)信号识别各种手指运动。这项工作考虑了来自15位个体的8位健全受试者的8个通道肌电图。在这项工作中,已尝试识别功能最少的多个类。因此,使用双树复数小波变换对EMG信号进行预处理,以提高特征的识别能力,并从预处理数据中提取时域特征(如零交叉,斜率符号变化,平均绝对值和波形长度)。使用不同的分类器研究提取的特征的性能,例如线性判别分析,朴素贝叶斯分类器,具有和不具有特征选择算法的二次支持向量机和三次支持向量机。已经使用具有不同数量特征的粒子群优化(PSO)和蚁群优化(ACO)研究了特征选择,以识别特征效果。结果表明,与采用SVM分类器进行特征选择的SVM分类器相比,采用蚁群优化的朴素贝叶斯分类器显示出平均分类准确度为88.89%,响应时间为0.058025毫秒,可识别具有16个特征的15种不同手指运动。显着性水平为0.05。带有和不带有特征选择的SVM分类器的准确性,特异性和敏感性都没有显着差异。但是处理时间大大超过了LDA和NB分类器。 PSO和ACO结果表明,坡度符号变化有助于识别活动。在PSO中,发现平均绝对值与波形长度相比是有效的,这与ACO相矛盾。此外,已经发现过零在两种方法中对手指运动的分类均无效。

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