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首页> 外文期刊>Indian Journal of Science and Technology >Prosthetic Arm Control using Clonal Selection Classification Algorithm (CSCA) - A Statistical Learning Approach
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Prosthetic Arm Control using Clonal Selection Classification Algorithm (CSCA) - A Statistical Learning Approach

机译:使用克隆选择分类算法(CSCA)的假肢控制-一种统计学习方法

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Objectives: In monitoring brain activities, Electroencephalogram (EEG) signals play a significant role. As brain activities are many and highly dynamic in nature, processing of EEG signals is a challenging task. Since classification is more accurate when the pattern is simplified through representation by well performing features, feature extraction and selection play an important role in classification systems such as Clonal Selection Classification Algorithm (CSCA) algorithm. Methods/Analysis: This study is one such attempt to perform the prosthetic limb movements using EEG signals. In this research, the performance of CSCA for prosthetic limb movements of EEG signals has been reported. Findings: In this paper, the EEG signals are acquired for four different limb movements like finger open (fopen), finger close (fclose), wrist clockwise (wcw) and wrist counterclock wise (wccw). These EEG signals can be used to build a model to control the prosthetic limb movements using CSCA algorithm. The statistical parameters were extracted from the EEG signals. The best feature set was identified using J48 decision tree classifier. The well performing features were then classified using CSCA algorithm. The classification performance of CSCA has been reported. Novelty/Improvement: Our work is useful for controlling artificial limb with movements using EEG signals. The signal processing of EEG signals is a complex task and requires sophisticated techniques to yield a better classification accuracy.
机译:目标:在监测大脑活动中,脑电图(EEG)信号起着重要作用。由于大脑活动很多并且本质上是高度动态的,因此脑电信号的处理是一项艰巨的任务。由于通过表现良好的特征通过表示简化图案时,分类更加准确,因此特征提取和选择在诸如克隆选择分类算法(CSCA)算法之类的分类系统中起着重要作用。方法/分析:这项研究是利用脑电信号进行假肢运动的一种尝试。在这项研究中,已经报道了CSCA对假肢脑电信号运动的性能。研究结果:在本文中,针对四种不同的肢体运动(例如,手指张开(打开),手指闭合(关闭),手腕顺时针(wcw)和手腕逆时针(wccw))获取EEG信号。这些EEG信号可用于使用CSCA算法构建模型来控制假肢运动。从EEG信号中提取统计参数。使用J48决策树分类器确定了最佳功能集。然后使用CSCA算法对性能良好的特征进行分类。已经报道了CSCA的分类性能。新颖性/改进:我们的工作对于使用EEG信号控制运动的假肢很有帮助。脑电信号的信号处理是一项复杂的任务,需要复杂的技术才能产生更好的分类精度。

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