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1、The robustness of myoelectric prosthesis is largely influenced by many factors, which play a prominent role to determine the average accuracy rate of the classified patterns. These factors become more important when mult
2、ifunctional prosthesis with high degrees of freedom (DOF) is constructed.
In this research work, we proposed different optimized pattern recognition (PR) systems in order to accurately classify different patterns of
3、 hand motions, based on the extracted feature vector (FV) of surface electromyographic (sEMG) signal.
The experimental results demonstrate that the combination of the following extracted features achieved the highes
4、t classification rate of 98% using the linear discriminant analysis (LDA) classification algorithm: sample entropy (SampEnt), root mean square(RMS), myopulse percentage rate (MYOP) and difference absolute standard deviat
5、ion value (DASDV).In addition, it was found that the performance of the classifier was improved through the implementation of more than one feature.
Furthermore, the performance of five wavelet families was tested t
6、o select the proper wavelet family that leads to highest classification rate.The results show that the highest average classification accuracy was 97.41% achieved by implementing general neural network (GRNN) classificat
7、ion method based on energy of wavelet coefficients (db10 at sixth decomposition level).In addition, the results of our experiment demonstrated that the use of wavelet families at a high decomposition level increases the
8、recognition rate of hand motions.
In this study, we also investigated the performance of three kernels functions of support vector machine (SVM) classifier.The result shows that polynomial kernel function is the opt
9、imal choice in most cases.The highest achieved classification accuracy was 93% using extracted wavelet coefficients.Moreover, we investigated the best value of K that should be used as an input parameter in the K-nearest
10、 neighbor (K-NN) algorithm.The result demonstrates that k =5 is the optimal choice in most cases.
In addition, we proposed two intelligent hybrid pattern recognition systems based on swarm intelligence and evolution
11、ary algorithm.Artificial bee colony (ABC) was proposed as an alternative solution to overcome the weak point caused by back propagation (BP) algorithm, and to improve the learning algorithm of multilayer perceptron (MLP)
12、 neural network.An obvious improvement of the average accuracy rate was achieved by 2% based on ABC-MLPNN.In addition, genetic algorithm (GA) was recruited to solve the problem of selecting the optimal parameters of supp
13、ort vector machine (LibSVM).Choosing parameters (c: constant, g: gamma) plays a major role in determination of the performance of the selected classifier.The experimental results reveal that our proposed pattern recognit
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