Title :
Stress Recognition Using Wearable Sensors and Mobile Phones
Author :
Sano, Akihide ; Picard, Rosalind W.
Author_Institution :
Affective Comput. Group, Massachusetts Inst. of Technol. Media Lab., Cambridge, MA, USA
Abstract :
In this study, we aim to find physiological or behavioral markers for stress. We collected 5 days of data for 18 participants: a wrist sensor (accelerometer and skin conductance), mobile phone usage (call, short message service, location and screen on/off) and surveys (stress, mood, sleep, tiredness, general health, alcohol or caffeinated beverage intake and electronics usage). We applied correlation analysis to find statistically significant features associated with stress and used machine learning to classify whether the participants were stressed or not. In comparison to a baseline 87.5% accuracy using the surveys, our results showed over 75% accuracy in a binary classification using screen on, mobility, call or activity level information (some showed higher accuracy than the baseline). The correlation analysis showed that the higher-reported stress level was related to activity level, SMS and screen on/off patterns.
Keywords :
emotion recognition; learning (artificial intelligence); neurophysiology; pattern classification; sensors; smart phones; wearable computers; SMS; behavioral marker; binary classification; correlation analysis; higher-reported stress level; machine learning; mobile phone usage; mobile phones; mobility; physiological marker; screen on/off pattern; stress recognition; wearable sensors; wrist sensor; Accuracy; Biomedical monitoring; Feature extraction; Mobile handsets; Mood; Skin; Stress; accelerometer; classification; machine learning; mobile phone; skin conductance; smart phone; stress; wearable sensor;
Conference_Titel :
Affective Computing and Intelligent Interaction (ACII), 2013 Humaine Association Conference on
Conference_Location :
Geneva
DOI :
10.1109/ACII.2013.117