Systematic Evaluation of Self-Supervised Learning Approaches for Wearable-Based Fatigue Recognition


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Date

2024

Publication Type

Conference Paper

ETH Bibliography

yes

Citations

Altmetric

Data

Abstract

Fatigue is one of the most prevalent symptoms of chronic diseases, such as Multiple Sclerosis, Alzheimer’s, and Parkinson’s. Recently researchers have explored unobtrusive and continuous ways of fatigue monitoring using mobile and wearable devices. However, data quality and limited labeled data availability in the wearable health domain pose significant challenges to progress in the field. In this work, we perform a systematic evaluation of self-supervised learning (SSL) tasks for fatigue recognition using wearable sensor data. To establish our benchmark, we use Homekit2020, which is a large-scale dataset collected using Fitbit devices in everyday life settings. Our results show that the majority of the SSL tasks outperform fully supervised baselines for fatigue recognition, even in limited labeled data scenarios. In particular, the domain features and multi-task learning achieve 0.7371 and 0.7323 AUROC, which are higher than the other SSL tasks and supervised learning baselines. In most of the pre-training tasks, the performance is higher when using at least one data augmentation that reflects the potentially low quality of wearable data (e.g., missing data). Our findings open up promising opportunities for continuous assessment of fatigue in real settings and can be used to guide the design and development of health monitoring systems.

Publication status

published

Book title

Proceedings of the fifth Conference on Health, Inference, and Learning

Volume

248

Pages / Article No.

582 - 596

Publisher

PMLR

Event

5th Conference on Health, Inference, and Learning (CHIL 2024)

Edition / version

Methods

Software

Geographic location

Date collected

Date created

Subject

Wearable sensing; Self-supervised learning; Fatigue monitoring

Organisational unit

09649 - Holz, Christian / Holz, Christian check_circle
02219 - ETH AI Center / ETH AI Center

Notes

Funding

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