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Decode Brain System: A Dynamic Adaptive Convolutional Quorum Voting Approach for Variable-Length EEG Data

机译:解码脑系统:可变长度EEG数据的动态自适应卷积仲裁法

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摘要

The brain is a complex and dynamic system, consisting of interacting sets and the temporal evolution of these sets. Electroencephalogram (EEG) recordings of brain activity play a vital role to decode the cognitive process of human beings in learning research and application areas. In the real world, people react to stimuli differently, and the duration of brain activities varies between individuals. Therefore, the length of EEG recordings in trials gathered in the experiment is variable. However, current approaches either fix the length of EEG recordings in each trial which would lose information hidden in the data or use the sliding window which would consume large computation on overlapped parts of slices. In this paper, we propose TOO (Traverse Only Once), a new approach for processing variable-length EEG trial data. TOO is a convolutional quorum voting approach that breaks the fixed structure of the model through convolutional implementation of sliding windows and the replacement of the fully connected layer by the 1?×?1 convolutional layer. Each output cell generated from 1?×?1 convolutional layer corresponds to each slice created by a sliding time window, which reflects changes in cognitive states. Then, TOO employs quorum voting on output cells and determines the cognitive state representing the entire single trial. Our approach provides an adaptive model for trials of different lengths with traversing EEG data of each trial only once to recognize cognitive states. We design and implement a cognitive experiment and obtain EEG data. Using the data collecting from this experiment, we conducted an evaluation to compare TOO with a state-of-art sliding window end-to-end approach. The results show that TOO yields a good accuracy (83.58%) at the trial level with a much lower computation (11.16%). It also has the potential to be used in variable signal processing in other application areas.
机译:大脑是一种复杂和动态的系统,包括相互作用和这些集合的时间演变。脑活动的脑电图(EEG)录音发挥着对学习研究和应用领域的人类的认知过程发挥着重要作用。在现实世界中,人们对刺激反应不同,大脑活动的持续时间在个人之间变化。因此,在实验中收集的试验中的脑电图记录的长度是可变的。但是,目前的方法要么修复每个试验中的EEG记录的长度,它会丢失隐藏在数据中的信息或使用将在切片的重叠部分上消耗大计算的滑动窗口。在本文中,我们也提出(仅遍历一次),这是一种处理可变长度EEG试验数据的新方法。也是卷积法定投票方法,通过滑动窗口的卷积实现和1?×1卷积层的卷积和替换完全连接的层的卷积实现来打破模型的固定结构。从1?×1卷积层产生的每个输出单元对应于由滑动时间窗口创建的每个切片,这反映了认知状态的变化。然后,在输出单元上使用法定投票并确定代表整个单一试验的认知状态。我们的方法为不同长度的试验提供了一种自适应模型,其次仅遍历每个试验的EEG数据一次以识别认知状态。我们设计并实施认知实验并获得EEG数据。使用从该实验中收集的数据,我们进行了评估,以便与最先进的滑动窗口端到端方法进行比较。结果表明,在试验水平上产生了良好的准确度(83.58%),计算得多(11.16%)。它还具有在其他应用领域的可变信号处理中使用的可能性。

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