Electrodermal Activity as a Unimodal Signal for Aerobic Exercise Detection in Wearable Sensors
arXiv cs.LG / 3/18/2026
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Key Points
- EDA-only features were evaluated on a publicly available dataset from thirty healthy individuals using leave-one-subject-out validation to determine their ability to distinguish rest from sustained aerobic exercise.
- Across benchmark ML models, EDA-only classifiers achieved moderate subject-independent performance, with phasic temporal dynamics and event timing contributing to class separation.
- The study frames EDA as a unimodal input that complements, rather than replaces, multimodal sensing for wearable activity-state inference.
- The work provides a conservative benchmark of EDA's discriminative power in isolation, clarifying how it can be used in wearable systems without discarding multimodal approaches.
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