A Knowledge Distillation Framework For Enhancing Ear-EEG Based Sleep
Staging With Scalp-EEG Data
- URL: http://arxiv.org/abs/2211.02638v1
- Date: Thu, 27 Oct 2022 01:32:58 GMT
- Title: A Knowledge Distillation Framework For Enhancing Ear-EEG Based Sleep
Staging With Scalp-EEG Data
- Authors: Mithunjha Anandakumar, Jathurshan Pradeepkumar, Simon L. Kappel,
Chamira U. S. Edussooriya, Anjula C. De Silva
- Abstract summary: Sleep studies using Polysomnography are associated with discomfort and often lower sleep quality.
Previous works have focused on developing less obtrusive methods to conduct high-quality sleep studies.
We propose a cross-modal knowledge distillation strategy, which is a domain adaptation approach.
- Score: 3.382472583898067
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Sleep plays a crucial role in the well-being of human lives. Traditional
sleep studies using Polysomnography are associated with discomfort and often
lower sleep quality caused by the acquisition setup. Previous works have
focused on developing less obtrusive methods to conduct high-quality sleep
studies, and ear-EEG is among popular alternatives. However, the performance of
sleep staging based on ear-EEG is still inferior to scalp-EEG based sleep
staging. In order to address the performance gap between scalp-EEG and ear-EEG
based sleep staging, we propose a cross-modal knowledge distillation strategy,
which is a domain adaptation approach. Our experiments and analysis validate
the effectiveness of the proposed approach with existing architectures, where
it enhances the accuracy of the ear-EEG based sleep staging by 3.46% and
Cohen's kappa coefficient by a margin of 0.038.
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