Department of Electrical Engineering, Faculty of Engineering, Prince of Songkla University, 15 Kanjanavanich Road, Kho Hong, Hat Yai, Songkhla, 90112, Thailand.
Med Biol Eng Comput. 2018 Jun;56(6):1041-1051. doi: 10.1007/s11517-017-1723-x. Epub 2017 Nov 14.
In this paper, we present a performance comparison of 14 feature evaluation criteria and 4 classifiers for isolated Thai word classification based on electromyography signals (EMG) to find a near-optimal criterion and classifier. Ten subjects spoke 11 Thai number words in both audible and silent modes while the EMG signal from five positions of the facial and neck muscles were captured. After signal collection and preprocessing, 22 EMG features widely used in the EMG recognition field were computed and were then evaluated based on 14 evaluation criteria including both independent criteria (IC) and dependent criteria (DC) for feature evaluation and selection. Subsequently, the top nine features were selected for each criterion, and were used as inputs to classifiers. Four types of classifier were employed with 10-fold cross-validation to estimate classification performance. The results showed that features selected with a DC on a Fisher's least square linear discriminant classifier (D_FLDA) used with a linear Bayes normal classifier (LBN) gave the best average accuracies, of 93.25 and 80.12% in the audible and the silent modes, respectively.
在本文中,我们展示了基于肌电信号 (EMG) 的孤立泰语单词分类的 14 种特征评估标准和 4 种分类器的性能比较,以找到接近最优的标准和分类器。十位受试者在有声和无声模式下分别说出 11 个泰语数字单词,同时记录来自面部和颈部肌肉五个位置的 EMG 信号。在信号采集和预处理之后,计算了 22 种广泛用于 EMG 识别领域的 EMG 特征,并基于包括独立标准 (IC) 和依赖标准 (DC) 的 14 种评估标准对其进行评估,以进行特征评估和选择。随后,为每个标准选择了前九个特征,并将其用作分类器的输入。采用 10 折交叉验证的 4 种分类器来估计分类性能。结果表明,使用 Fisher 最小二乘线性判别分类器 (D_FLDA) 的 DC 选择的特征与线性贝叶斯正态分类器 (LBN) 一起使用,在有声和无声模式下的平均准确率分别为 93.25%和 80.12%。