TL;DR
This study demonstrates that smart watch sensor data can effectively be used to detect emotional states, achieving over 78% accuracy in classifying happiness versus sadness through personalized models.
Contribution
The paper introduces a novel approach using smartwatch sensor data and mixed-design analysis to accurately recognize emotions, outperforming baseline models.
Findings
Participants felt less negative after sad stimuli (P < .006)
Personalized classifiers achieved median accuracy >78% in emotion recognition
Smartwatch data successfully detected emotional state changes
Abstract
This study investigates the use of movement sensor data from a smart watch to infer an individual's emotional state. We present our findings on a user study with 50 participants. The experimental design is a mixed-design study; within-subjects (emotions; happy, sad, neutral) and between-subjects (stimulus type: audio-visual "movie clips", audio "music clips"). Each participant experienced both emotions in a single stimulus type. All participants walked 250m while wearing a smart watch on one wrist and a heart rate monitor strap on their chest. They also had to answer a short questionnaire (20 items; PANAS) before and after experiencing each emotion. The heart rate monitor served as supplementary information to our data. We performed time-series analysis on the data from the smart watch and a t-test on the questionnaire items to measure the change in emotional state. The heart rate data…
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