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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.

Abstract

Electrodermal Activity (EDA) is a non-invasive physiological signal widely available in wearable devices and reflects sympathetic nervous system (SNS) activation. Prior multi-modal studies have demonstrated robust performance in distinguishing stress and exercise states when EDA is combined with complementary signals such as heart rate and accelerometry. However, the ability of EDA to independently distinguish sustained aerobic exercise from low-arousal states under subject-independent evaluation remains insufficiently characterized. This study investigates whether features derived exclusively from EDA can reliably differentiate rest from sustained aerobic exercise. Using a publicly available dataset collected from thirty healthy individuals, EDA features were evaluated using benchmark machine learning models with leave-one-subject-out (LOSO) validation. Across models, EDA-only classifiers achieved moderate subject-independent performance, with phasic temporal dynamics and event timing contributing to class separation. Rather than proposing EDA as a replacement for multimodal sensing, this work provides a conservative benchmark of the discriminative power of EDA alone and clarifies its role as a unimodal input for wearable activity-state inference.