Variance in Classifying Affective State via Electrocardiogram and Photoplethysmography
Advances in wearable technology have significantly increased the sensitivity and accuracy of devices for recording physiological signals. Commercial off-the-shelf wearable devices can gather large quantities of physiological data un-obtrusively. This enables momentary assessments of human physiology, which provide valuable insights into an individual's health and psychological state. Leveraging these insights provides significant benefits for human-to-computer interaction and personalised healthcare. This work contributes an analysis of variance occurring in features representative of affective states extracted from electrocardiograms and photoplethysmography; subsequently identifies the cardiac measures most descriptive of affective states from both signals and provides insights into signal and emotion-specific cardiac measures; finally baseline performance for automated affective state detection from physiological signals is established.
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