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Kernel Function Studies on the Support Vector Machine in Lower Limb Motion Pattern Recognition of Stoke Patients

机译:支持向量机在卒中患者下肢运动模式识别中的核函数研究

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Learning algorithms of the support vector machine is to map the input vector to a high dimensional space through certain kernel function and separate the image of the original linear input vector with the maximum of interval under consideration. This paper is about the limb motion recognition problem of stroke patients, mapping the input vector to the reproducing kernel RKHS (reproducing Kernel Hilbert space) space and using the methods in linear space to solve nonlinear problems. Meanwhile, feature transformation is achieved by defining the inner product of samples in the feature space after its characteristics are changed. Experimental results show that the support vector machine which is made up of new Kernel function can greatly improve the recognition rate of action under the conditions of Mercer, providing theoretical basis for modeling of lower limb rehabilitation training system of stroke patients.
机译:支持向量机的学习算法是通过某些核函数将输入向量映射到高维空间,并以考虑的最大间隔将原始线性输入向量的图像分开。本文研究中风患者的肢体运动识别问题,将输入向量映射到再现核RKHS(再现核Hilbert空间)空间,并使用线性空间中的方法解决非线性问题。同时,通过在特征空间改变后在特征空间中定义样本的内积来实现特征变换。实验结果表明,由新的核函数组成的支持向量机可以大大提高Mercer条件下的动作识别率,为中风患者下肢康复训练系统的建模提供理论依据。

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