Beyond Hearing: Learning Task-Agnostic ExG Representations from Earphones via Physiology-Informed Tokenization
Abstract
Electrophysiological (ExG) signals offer valuable insights into human physiology, yet building foundation models that generalize across everyday tasks remains challenging due to two key limitations: (i) insufficient data diversity, as most ExG recordings are collected in controlled labs with bulky, expensive devices; and (ii) task-specific model designs that require tailored processing (i.e., targeted frequency filters) and architectures, which limit generalization across tasks. To address these challenges, we introduce an approach for scalable, task-agnostic ExG monitoring in the wild. We collected 50 hours of unobtrusive free-living ExG data with an earphone-based hardware prototype to narrow the data diversity gap. At the core of our approach is Physiology-informed Multi-band Tokenization (PiMT), which decomposes ExG signals into 12 physiology-informed tokens, followed by a reconstruction task to learn robust representations. This enables adaptive feature recognition across the full frequency spectrum while capturing task-relevant information. Experiments on our new DailySense dataset—the first to enable ExG-based analysis across five human senses—together with four public ExG benchmarks, demonstrate that PiMT consistently outperforms state-of-the-art methods across diverse tasks.
Cite
Text
Yoon et al. "Beyond Hearing: Learning Task-Agnostic ExG Representations from Earphones via Physiology-Informed Tokenization." International Conference on Learning Representations, 2026.Markdown
[Yoon et al. "Beyond Hearing: Learning Task-Agnostic ExG Representations from Earphones via Physiology-Informed Tokenization." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/yoon2026iclr-beyond/)BibTeX
@inproceedings{yoon2026iclr-beyond,
title = {{Beyond Hearing: Learning Task-Agnostic ExG Representations from Earphones via Physiology-Informed Tokenization}},
author = {Yoon, Hyungjun and Lee, Seungjoo and Wu, Yu and Chen, XiaoMeng and Lu, Taiting and Liu, Freddy Yifei and Lee, Taeckyung and Cha, Hyeongheon and Zhao, Haochen and Zhao, Gaoteng and Chen, Dongyao and Mascolo, Cecilia and Lee, Sung-Ju and Qiu, Lili},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/yoon2026iclr-beyond/}
}