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Speech Imagery Classification using Length-Wise Training based on Deep Learning

Authors :
Lee, Byeong-Hoo
Kwon, Byeong-Hee
Lee, Do-Yeun
Jeong, Ji-Hoon
Publication Year :
2020

Abstract

Brain-computer interface uses brain signals to control external devices without actual control behavior. Recently, speech imagery has been studied for direct communication using language. Speech imagery uses brain signals generated when the user imagines speech. Unlike motor imagery, speech imagery still has unknown characteristics. Additionally, electroencephalography has intricate and non-stationary properties resulting in insufficient decoding performance. In addition, speech imagery is difficult to utilize spatial features. In this study, we designed length-wise training that allows the model to classify a series of a small number of words. In addition, we proposed hierarchical convolutional neural network structure and loss function to maximize the training strategy. The proposed method showed competitive performance in speech imagery classification. Hence, we demonstrated that the length of the word is a clue at improving classification performance.<br />Comment: Submitted IEEE The 9th International Winter Conference on Brain-Computer Interface

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2012.03632
Document Type :
Working Paper