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A comparative study on PCA and LDA based EMG pattern recognition for anthropomorphic robotic hand

机译:基于PCA和LDA的拟人化机器人手肌电模式识别的比较研究。

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A multifunctional myoelectric prosthetic hand is a perfect gift for an upper-limb amputee, however, the myoelectric control for a prosthetic hand is not so good now. Here, the paper presents a comparative study on electromyography (EMG) pattern recognition based on PCA and LDA for an anthropomorphic robotic hand. Four channels of surface EMG (sEMG) signals were recorded from the subject's forearm. Time-domain analysis, frequency-domain analysis, wavelet transform analysis, nonlinear entropy analysis and fractal analysis were done and fourteen kinds of features were extracted from sEMG signals. The features were divided into four groups, and the performances of the four groups were compared and analyzed. In the feature projection stage, three schemes were proposed and their performances were compared with each other. The first one only used the principal component analysis (PCA) for dimension reduction. And the second one only used the linear discriminant analysis (LDA) for dimension reduction. The third one used PCA for the first step of dimensionality reduction, and then used LDA for the next step of dimensionality reduction. In the classification stage, minimum distance classifier (MDC) was employed for identifying nine kinds of hand/wrist motions in the projected space. Comparative experiments of four groups of features and three projection schemes were done and evaluated. The online experiment of real-time myoelectric control for an anthropomorphic robotic hand was done as well.
机译:多功能肌电假肢手是上肢截肢者的完美礼物,但是,目前对于假肢手的肌电控制还不是很好。在这里,本文提出了基于模拟PCA和LDA的拟人化机器人手肌电(EMG)模式识别的比较研究。从受试者的前臂记录了四个表面肌电图(sEMG)信号通道。进行了时域分析,频域分析,小波变换分析,非线性熵分析和分形分析,并从sEMG信号中提取了14种特征。将特征分为四组,并对四组的性能进行比较和分析。在特征投影阶段,提出了三种方案,并对其性能进行了比较。第一个仅使用主成分分析(PCA)进行尺寸缩减。第二种方法仅使用线性判别分析(LDA)进行尺寸缩减。第三个使用PCA进行降维的第一步,然后使用LDA进行下一步的降维。在分类阶段,采用最小距离分类器(MDC)来识别投影空间中的9种手/腕运动。完成并评估了四组特征和三种投影方案的对比实验。还完成了拟人化机器人手实时肌电控制的在线实验。

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