Using multiple physiological features from embedded sensors significantly improved the recognition performance of driver stress patterns compared to the best single feature performance.
Observational
Driver stress
Multiple physiological sensors (ECG, EMG, respiration, skin conductance) vs Single physiological feature
Recognition performance of driver stress patterns
Smart physiological sensors embedded in an automobile afford a novel opportunity to capture naturally occurring episodes of driver stress. In a series of ten ninety minute drives on public roads and highways, ECG, EMG, respiration and skin conductance sensors were used to measure the autonomic nervous system activation. The signals were digitized in real time and stored on the SmartCar's Pentium class computer. Each drive followed a pre-specified route through fifteen different events, from which four stress level categories were created according to the results of the subjects self report questionnaires. In total, 545 one minute segments were classified. A linear discriminant function was used to rank each feature individually based on the recognition performance, and a sequential forward floating selection algorithm was used to find an optimal set of features for recognizing patterns of driver stress. Using multiple features improved performance significantly over the best single feature performance.
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John H. Healey
University of Southern California
Rosalind W. Picard
Brigham and Women's Hospital
Massachusetts Institute of Technology
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Healey et al. (Mon,) conducted a observational in Driver stress. Multiple physiological sensors (ECG, EMG, respiration, skin conductance) vs. Single physiological feature was evaluated on Recognition performance of driver stress patterns. Using multiple physiological features from embedded sensors significantly improved the recognition performance of driver stress patterns compared to the best single feature performance.
synapsesocial.com/papers/6a16da2eb13aec50ea6b949d — DOI: https://doi.org/10.1109/icpr.2000.902898