Stress Detection Using Wearable Physiological and Sociometric Sensors

arXiv cs.LG / 4/15/2026

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Key Points

  • The paper proposes a machine-learning method to detect stress in social settings by fusing wearable physiological signals with sociometric/social sensor data.
  • It evaluates multiple classifiers (SVM, AdaBoost, and k-NN) and shows that multimodal sensor fusion can distinguish stressful versus neutral conditions in a controlled Trier Social Stress Test (TSST).
  • The authors benchmark each sensor modality separately to quantify how much each contributes to discriminative performance and suitability for real-time use.
  • The study analyzes which extracted features are most informative for stress detection, aiming to improve interpretability and guide future system design.

Abstract

Stress remains a significant social problem for individuals in modern societies. This paper presents a machine learning approach for the automatic detection of stress of people in a social situation by combining two sensor systems that capture physiological and social responses. We compare the performance using different classifiers including support vector machine, AdaBoost, and k-nearest neighbor. Our experimental results show that by combining the measurements from both sensor systems, we could accurately discriminate between stressful and neutral situations during a controlled Trier social stress test (TSST). Moreover, this paper assesses the discriminative ability of each sensor modality individually and considers their suitability for real-time stress detection. Finally, we present an study of the most discriminative features for stress detection.