论文标题
SEMG电极(RE)放置和特征集大小对手运动识别的影响
Effect of the sEMG electrode (re)placement and feature set size on the hand movement recognition
论文作者
论文摘要
重新定位在重复的肌电图测量中记录电极阵列可能会导致手运动分类系统的位移误差。为了检查当电极阵列沿着受试者的前臂翻译或旋转不同的特征数量时,分类器的重新训练是否可以达到令人满意的结果,我们记录了10位健康志愿者的表面肌电图信号,用于三种类型的掌握和6个腕部运动。对于特征提取,我们应用主组件分析和特征集大小从一个到8个主组件不等。我们将重新训练的分类器的结果与三个分类器的剩余交叉验证分类程序的结果进行了比较:LDA(线性判别分析),QDA(二次判别分析)和ANN(人工神经网络)。我们的结果表明,当对阵列电极进行重新定位时,分类精度没有显着差异,表明分类成功训练和最佳特征集选择。结果还指出,主体的数量对于可接受的分类精度〜90%起关键作用。对于最大的数据集(9手移动),LDA和QDA的表现优于ANN,而对于三个握把动作,ANN显示出令人鼓舞的结果。有趣的是,我们表明电极阵列位置与特征集大小之间的相互作用在统计上不显着。这项研究强调了测试影响分类准确性和分类器选择的因素相互作用的重要性,并独立地影响其影响,以建立指导性的手机运动识别系统的指导原则。该研究记录的数据存储在Zenodo存储库(DOI:10.5281/Zenodo.4039550)上。
Repositioning of recording electrode array across repeated electromyography measurements may result in a displacement error in hand movement classification systems. In order to examine if the classifier re-training could reach satisfactory results when electrode array is translated along or rotated around subject's forearm for varying number of features, we recorded surface electromyography signals in 10 healthy volunteers for three types of grasp and 6 wrist movements. For feature extraction we applied principal component analysis and the feature set size varied from one to 8 principal components. We compared results of re-trained classifier with results from leave-one-out cross-validation classification procedure for three classifiers: LDA (Linear Discriminant Analysis), QDA (Quadratic Discriminant Analysis), and ANN (Artificial Neural Network). Our results showed that there was no significant difference in classification accuracy when the array electrode was repositioned indicating successful classification re-training and optimal feature set selection. The results also indicate expectedly that the number of principal components plays a key role for acceptable classification accuracy ~90 %. For the largest dataset (9 hand movements), LDA and QDA outperformed ANN, while for three grasping movements ANN showed promising results. Interestingly, we showed that interaction between electrode array position and the feature set size is not statistically significant. This study emphasizes the importance of testing the interaction of factors that influence classification accuracy and classifier selection altogether with their impact independently in order to establish guiding principles for design of hand movement recognition system. Data recorded for this study are stored on Zenodo repository (doi: 10.5281/zenodo.4039550).