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Surrogate analysis of fractal dimensions from SEMG sensor array as a predictor of chronic low back pain

机译:SEMG传感器阵列的分形维数的替代分析,可预测慢性下腰痛

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In this paper, a method based on nonlinear analysis of sEMG sensor array signals (2 arrays of 5×13 sensors) to detect chronic low back pain is presented. The use of an FFT based surrogate analysis method isolates the nonlinear structure of the signals from the effect of the power spectrum. The fractal dimension is used for the nonlinear characteristic. From the sensor arrays, a certain number of channels which exhibits the most nonlinearity for a subject are kept as input of a small neural network. A leave-one-out type cross-validation method shows a success rate of 80%.
机译:本文提出了一种基于sEMG传感器阵列信号(2个5×13传感器阵列)的非线性分析的方法来检测慢性下腰痛。基于FFT的替代分析方法的使用将信号的非线性结构与功率谱的影响隔离开来。分形维数用于非线性特性。从传感器阵列中,保留一些对受试者表现出最大非线性的通道作为小型神经网络的输入。留一法式交叉验证方法显示出80%的成功率。

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