TL;DR
XSleepNet is a novel multi-view sequential model that learns from raw polysomnography signals and time-frequency images, adaptively balancing their contributions to improve automatic sleep staging accuracy.
Contribution
This work introduces a joint learning framework with adaptive view-specific training pace, enhancing multi-view sleep staging performance over existing methods.
Findings
Outperforms single-view baselines
Achieves state-of-the-art results on multiple databases
Demonstrates robustness to training data size
Abstract
Automating sleep staging is vital to scale up sleep assessment and diagnosis to serve millions experiencing sleep deprivation and disorders and enable longitudinal sleep monitoring in home environments. Learning from raw polysomnography signals and their derived time-frequency image representations has been prevalent. However, learning from multi-view inputs (e.g., both the raw signals and the time-frequency images) for sleep staging is difficult and not well understood. This work proposes a sequence-to-sequence sleep staging model, XSleepNet, that is capable of learning a joint representation from both raw signals and time-frequency images. Since different views may generalize or overfit at different rates, the proposed network is trained such that the learning pace on each view is adapted based on their generalization/overfitting behavior. In simple terms, the learning on a particular…
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