首页> 外文会议>International conference on neural information processing;ICONIP 2011 >EEG Classification with BSA Spike Encoding Algorithm and Evolving Probabilistic Spiking Neural Network
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EEG Classification with BSA Spike Encoding Algorithm and Evolving Probabilistic Spiking Neural Network

机译:基于BSA Spike编码算法和演化概率尖峰神经网络的脑电分类

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摘要

This study investigates the feasibility of Bens Spike Algorithm (BSA) to encode continuous EEG spatio-temporal data into input spike streams for a classification in a spiking neural network classifier. A novel evolving probabilistic spiking neural network reservoir (epSNNr) architecture is used for the purpose of learning and classifying the EEG signals after the BSA transformation. Experiments are conducted with EEG data measuring a cognitive state of a single individual under 4 different stimuli. A comparison is drawn between using traditional machine learning algorithms and using BSA plus epSNNr, when different probabilistic models of neurons are utilised. The comparison demonstrates that: (1) The BSA is a suitable transformation for EEG data into spike trains; (2) The performance of the epSNNr improves when a probabilistic model of a neuron is used, compared to the use of a deterministic LIF model of a neuron; (3) The classification accuracy of the EEG data in an epSNNr depends on the type of the probabilistic neuronal model used. The results suggest that an epSNNr can be optimised in terms of neuronal models used and parameters that would better match the noise and the dynamics of EEG data. Potential applications of the proposed method for BCI and medical studies are briefly discussed.
机译:这项研究调查了本斯派克算法(BSA)将连续EEG时空数据编码为输入峰值流以进行峰值神经网络分类器分类的可行性。为了对BSA变换后的EEG信号进行学习和分类,采用了一种新颖的概率峰值神经网络存储库(epSNNr)。用EEG数据进行实验,测量4种不同刺激下单个人的认知状态。当使用不同的神经元概率模型时,使用传统的机器学习算法与使用BSA和epSNNr进行比较。比较表明:(1)BSA是将EEG数据转换为峰值序列的合适方法; (2)与使用神经元的确定性LIF模型相比,使用神经元的概率模型时epSNNr的性能有所提高; (3)epSNNr中EEG数据的分类准确性取决于所使用的概率神经元模型的类型。结果表明,可以根据所使用的神经元模型和参数来优化epSNNr,以更好地匹配EEG数据的噪声和动态。简要讨论了该方法在BCI和医学研究中的潜在应用。

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