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A system identification approach to determining listening attention from EEG signals

机译:一种确定脑电图信号听力注意的系统识别方法

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We still have very little knowledge about how our brains decouple different sound sources, which is known as solving the cocktail party problem. Several approaches; including ERP, time-frequency analysis and, more recently, regression and stimulus reconstruction approaches; have been suggested for solving this problem. In this work, we study the problem of correlating of EEG signals to different sets of sound sources with the goal of identifying the single source to which the listener is attending. Here, we propose a method for finding the number of parameters needed in a regression model to avoid overlearning, which is necessary for determining the attended sound source with high confidence in order to solve the cocktail party problem.
机译:我们仍然非常了解我们的大脑如何解散不同的声源,这被称为解决鸡尾酒会问题。几种方法;包括ERP,时频分析,最近,回归和刺激重建方法;已经建议解决这个问题。在这项工作中,我们研究了EEG信号与不同组件源的关联问题,目的是识别侦听器正在参加的单个源。这里,我们提出了一种用于找到回归模型所需的参数数量的方法,以避免重叠,这对于确定具有高置信度的参与的声源,以便解决鸡尾酒会问题。

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