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  4. Orthogonal features-based EEG signal denoising using fractionally compressed autoencoder

Publication:
Orthogonal features-based EEG signal denoising using fractionally compressed autoencoder

Date

01-11-2021

Authors

Nagar, Subham
Kumar, Ahlad
Swamy, M N S
Kumar, Ahlad
Kumar, Ahlad
Kumar, Ahlad
Kumar, Ahlad
Kumar, Ahlad

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Elsevier

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Abstract

A fractional-based compressed auto-encoder architecture has been introduced to solve the problem of denoising�electroencephalogram�(EEG) signals. The architecture makes use of�fractional calculus�to calculate the gradients during the back-propagation process, as a result of which a new hyper-parameter in the form of fractional order��has been introduced which can be tuned to get the best denoising performance. Additionally, to avoid substantial use of memory resources, the model makes use of orthogonal features in the form of Tchebichef moments as input. The orthogonal features have been used in achieving compression at the input stage. Considering the growing use of low energy devices, compression of�neural networks�becomes imperative. Here, the auto-encoder�s weights are compressed using the randomized�singular value decomposition�(RSVD) algorithm during training while evaluation is performed using various compression ratios. The experimental results show that the proposed fractionally compressed architecture provides improved denoising results on the standard datasets when compared with the existing methods.

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Nagar, Subham, Kumar, Ahlad, and M.N.S. Swamy"Orthogonal features-based EEG signal denoising using fractionally compressed autoencoder," Signal Processing, ScienceDirect, ISSN: 0165-1684, vol. 188, pp. 108225, Nov. 2021 doi: 10.1016/j.sigpro.2021.108225

URI

https://ir.daiict.ac.in/handle/dau.ir/2078

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