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Hierarchical Self-organizing Maps of NIRS and EEG Signals for Recognition of Brain States

机译:识别脑状态的网德和脑电图信号的分层自组织地图

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Recent advances in temporal data mining of brain activity with NIRS and EEG signals allow us to recognize brain states in higher resolution. However, brain states are not always distinct from each other and often differ in temporal granularity. This paper revisits Dennett's three levels of stance, the DIKW model for the design of two self-organizing maps (SOMs), which contributes to recognition of a hierarchy of brain states with finer granularities. The experimental results show that two brain states at different levels can be accurately identified by applying different training data for each level of SOM.
机译:NIR和EEG信号临时数据挖掘临时数据挖掘的最新进展使我们能够以更高的分辨率识别脑状态。然而,脑状态并不总是彼此不同,并且通常在时间粒度不同。本文重新审视了Dennett的三个姿势,Dikw模型为两个自组织地图(SOM),这有助于识别脑状态的粒度与更精细的粒度。实验结果表明,可以通过对每个级别的SOM应用不同的训练数据来准确地识别出不同水平的两个脑状态。

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