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A class selection method based on a partial Kullback-Leibler information measure for biological signal classification

机译:一种基于生物信号分类的部分Kullback-Leibler信息测量的类选择方法

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This paper proposes a novel class selection method based on the Kullback-Leibler (KL) information measure and outlines its application to optimal motion selection for bioelectric signal classification. When a user has no experience of controlling devices using bioelectric signals, for instance controlling a prosthetic hand using EMG signals, it is well known that voluntary generation of such signals might be difficult, so that the classification issue of multiple motions thus becomes problematic as the number of motions increases. An effective selection method for motions (classes) is needed for accurate classification. In the proposed method, the probability density functions (pdfs) of measured data are estimated through learning involving a multidimensional probabilistic neural network (PNN) based on the KL information theory. A partial KL information measure is then defined to evaluate the contribution of each class for classification. Effective classes can be selected by eliminating ineffective ones based on the partial KL information one by one. In the experiments performed, the proposed method was applied to motion selection with three subjects, and effective classes were selected from all motions measured in advance. The average classification rate using selected motions under the proposed method was 92.5 ± 0.9 %. These outcomes indicate that the proposed method can be used to select effective motions for accurate classification.
机译:本文提出了一种基于Kullback-Leibler(KL)信息测量的新型类别选择方法,并概述其在生物电信号分类的最佳运动选择中的应用。当用户没有使用生物电信号控制设备的经验时,例如使用EMG信号控制假肢手,众所周知,这种信号的自愿产生可能是困难的,因此因此多个动作的分类问题变得有问题运动数量增加。准确分类需要一种有效的运动方法(类)。在所提出的方法中,通过基于KL信息理论涉及多维概率神经网络(PNN)的学习来估计测量数据的概率密度函数(PDF)。然后定义部分KL信息测量以评估每个类进行分类的贡献。可以通过将基于部分KL信息逐一的部分KL信息消除无效的类来选择有效类。在进行的实验中,将所提出的方法应用于三个受试者的运动选择,并且从预先测量的所有运动中选择有效类。在所提出的方法下使用所选运动的平均分类率为92.5±0.9%。这些结果表明,该方法可用于选择有效的案例来精确分类。

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