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EPILEPTIC WAVEFORM RECOGNITION USING WAVELET DECOMPOSITION AND ARTIFICIAL NEURAL NETWORKS

机译:使用小波分解和人工神经网络的癫痫波形识别

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The recognition of epileptic waveforms from the electroencephalogram is an important physiological signal processing task, as epilepsy is still one of the most frequent brain disorders. The main goal of this paper is to present a new method to diagnose the epileptic waveforms directly from EEG, by performing a quick signal processing, which makes it possible to apply in on-line monitoring systems. The EEG signal processing is performed in two steps. In the first step, by using the multi-resolution wavelet decomposition, we obtain different spectral components (α, β, δ, θ) of the measured signal. These components serve as input signals for the artificial neural network (ANN), which accomplishes the recognition of epileptic waves. The recognition rate for all test signals turned out to be over 95%.
机译:来自脑电图的癫痫波形的识别是一个重要的生理信号处理任务,因为癫痫仍然是最常见的脑疾病之一。本文的主要目的是通过执行快速信号处理,提出一种新方法,可以直接从脑电图诊断脑电图,这使得可以在在线监测系统中应用。 EEG信号处理以两个步骤执行。在第一步中,通过使用多分辨率小波分解,我们获得测量信号的不同光谱分量(α,β,Δ,θ)。这些组件用作人工神经网络(ANN)的输入信号,这实现了癫痫波的识别。所有测试信号的识别率都超过95%。

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