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Spatio-temporal EEG Data Classification in the NeuCube 3D SNN Environment: Methodology and Examples

机译:NeuCube 3D SNN环境中的时空EEG数据分类:方法和示例

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A vast amount of complex spatio-temporal brain data, such as EEG-, have been accumulated. Technological advances in many disciplines rely on the proper analysis, understanding and utilisation of these data. In order to address this great challenge, the paper utilizes the recently introduced by one of the authors 3D spiking neural network environment called NeuCube for spatio-temporal EEG data classification. A methodology is proposed and illustrated on two small-scale examples: classifying EEG data for music- versus noise perception, and person identification based on music perception. Future development and usage of the NeuCube environment can be expected to significantly further the creation of novel brain-computer interfaces, cognitive robotics and medical engineering devices.
机译:已经积累了大量复杂的时空大脑数据,例如EEG-。许多学科的技术进步取决于对这些数据的正确分析,理解和利用。为了解决这一巨大挑战,本文利用了作者之一最近提出的称为NeuCube的3D尖峰神经网络环境进行时空EEG数据分类。提出了一种方法论,并在两个小规模的示例中进行了说明:将EEG数据分类为音乐与噪声感知,以及基于音乐感知的人识别。预计NeuCube环境的未来开发和使用将大大促进新型脑计算机接口,认知机器人技术和医学工程设备的创建。

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