基于改进CNN的SEED数据集脑电信号分类

B. Ramar, R. Ramalakshmi, Vaibhav Gandhi, P. Pandiselvam
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引用次数: 0

摘要

本研究引入了一种改进的卷积神经网络(ICNN)来构建基于脑电图的情感检测模型。本研究利用了BCMI实验室提供的15名受试者的脑电图数据集。在我们的工作中,利用从多通道脑电图数据中获得的微分熵特征来训练改进的CNN。最佳分类准确率为95.67%,显著高于原有62个通道的分类准确率。通过改进的CNN识别出最重要的信道和频段。我们的研究结果还证明了与各种情绪相关的神经元特征的存在,这些特征在会议和人之间是一致的。最后,比较了深层和浅层模型的有效性,并将改进后的CNN与基准算法的性能进行了比较。
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Classification of EEG Signals on SEED Dataset Using Improved CNN
The proposed research introduces an Improved Convolutional Neural Network (ICNN) to construct EEG-based emotion detection models. This study has utilized an EEG dataset of 15 subjects available from a BCMI laboratory. In our work, differential entropy characteristics obtained from multichannel EEG data are used to train the Improved CNN. The best classification accuracy is 95.67% which is significantly higher than that of the original 62 channels. The most important channels and frequency bands are identified by Improved CNN. The outcomes of our study also demonstrate the existence of neuronal signatures linked to various emotions, which are consistent between sessions and people. Finally, the effectiveness of deep and shallow models are compared and also the performance of improved CNN is compared with benchmark algorithms.
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