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Wavelet Shrinkage and Thresholding Based Robust Classification for Brain-Computer Interface

机译:基于小波收缩和基于脑电电脑界面的鲁棒分类的阈值分类

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A macaque monkey is trained to perform two different kinds of tasks, memory aided and visually aided. In each task, the monkey saccades to eight possible target locations. A classifier is proposed for direction decoding and task decoding based on local field potentials (LFP) collected from the prefrontal cortex. The LFP time-series data is modeled in a nonparametric regression framework, as a function corrupted by Gaussian noise. It is shown that if the function belongs to Besov bodies, then the proposed wavelet shrinkage and thresholding based classifier is robust and consistent. The classifier is then applied to the LFP data to achieve high decoding performance. The proposed classifier is also quite general and can be applied for the classification of other types of time-series data as well, not necessarily brain data.
机译:训练猕猴训练,以执行两种不同类型的任务,内存辅助和视觉辅助。在每个任务中,猴子扫视到八个可能的目标位置。基于从预前沿CORTEX收集的本地场电位(LFP),提出了分类器的方向解码和任务解码。 LFP时间序列数据在非参数回归框架中建模,作为高斯噪声损坏的函数。结果表明,如果该功能属于BESOV体,则所提出的小波收缩和基于阈值的分类器是坚固且一致的。然后将分类器应用于LFP数据以实现高解码性能。所提出的分类器也是相当一般的,并且可以应用于其他类型的时间序列数据的分类,而不一定是脑数据。

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