Exploring BCI Control in Smart Environments: Intention Recognition Via EEG Representation Enhancement Learning

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Yue, L
Shen, H
Wang, S
Boots, R
Long, G
Chen, W
Zhao, X
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2021
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Abstract

The brain-computer interface (BCI) control technology that utilizes motor imagery to perform the desired action instead of manual operation will be widely used in smart environments. However, most of the research lacks robust feature representation of multi-channel EEG series, resulting in low intention recognition accuracy. This article proposes an EEG2Image based Denoised-ConvNets (called EID) to enhance feature representation of the intention recognition task. Specifically, we perform signal decomposition, slicing, and image mapping to decrease the noise from the irrelevant frequency bands. After that, we construct the Denoised-ConvNets structure to learn the colorspace and spatial variations of image objects without cropping new training images precisely. Toward further utilizing the color and spatial transformation layers, the colorspace and colored area of image objects have been enhanced and enlarged, respectively. In the multi-classification scenario, extensive experiments on publicly available EEG datasets confirm that the proposed method has better performance than state-of-the-art methods.

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ACM Transactions on Knowledge Discovery from Data

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15

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5

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Information systems

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Yue, L; Shen, H; Wang, S; Boots, R; Long, G; Chen, W; Zhao, X, Exploring BCI Control in Smart Environments: Intention Recognition Via EEG Representation Enhancement Learning, ACM Transactions on Knowledge Discovery from Data, 2021, 15 (5), pp. 1-20

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