基于深度q -网络的脑电图通道选择

Abdullah, I. Faye, Md Rafiqul Islam
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摘要

在脑机接口中,脑电图通道选择选择信息量最大的通道。通过选择少量的最优通道来加快模型的训练速度,提高准确率。在这项研究中,我们训练了一个智能体,即使没有人工工程,它也能从给定的EEG数据中自动学习策略来选择最优通道。我们将脑电信号通道选择问题描述为一个马尔可夫决策过程(MDP),提出了一种有效的参数化方法,然后应用深度强化学习(DRL)对其进行求解。在智能体被训练后,它尝试学习一种通道选择策略,该策略指导它在利用EEG信号和先前选择的轨道的同时顺序选择通道。本文还为DRL环境仿真提供了两种奖励机制,并对其进行了试验分析。这是第一个研究脑电图数据解释的DRL模型的工作,开辟了一个新的研究领域,并突出了DRL在脑机接口方面的巨大潜力。
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Electroencephalogram Channel Selection using Deep Q-Network
In brain-computer interfaces, electroencephalogram channel selection picks the most informative channels. To speed up the model training and improve accuracy by selecting a small number of optimal channels. In this study, we trained an agent that automatically learned the policy to choose an optimal channel, from given EEG data, even without hand engineering. We frame the problem of EEG channel selection as a Markov decision process (MDP), offer a productive method for parameterizing it, and then apply deep reinforcement learning (DRL) to solve it. After the agent has been trained, it tries to learn a policy for channel selection that directs it to choose channels sequentially while leveraging EEG signals and previously selected tracks. The study also offers two reward systems for the DRL environment simulation and analyzes them in trials. This is the first work to look at a DRL model for EEG data interpretation, opening up a new field of study and highlighting DRL’s immense potential in the brain-computer interface.
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