Physiological Data Processing and Physiology-based Emotion Recognition
Personnel: Dayi Bian, Esube Bekele, Zachary Warren, & Nilanjan Sarkar.
Goals/Objectives:
- Explore physiological response differences when people exposed to various stimuli and use physiological features to build emotional recognition models
Outline:
The physiological signals were collected using the Biopac MP150 physiological data acquisition system with a sampling rate of 1000 Hz. The acquired physiological signals were broadly classified as cardiovascular activities including electrocardiogram (ECG), photoplethysmogram (PPG); electrodermal activities (EDA) including tonic and phasic responses from galvanic skin response (GSR); electromyogram (EMG) activities from Corrugator Supercilii, Zygomaticus Major, and Upper Trapezius muscles; respiration and skin temperature.
The physiological signals were used in several projects for different purposes. Generally, we processed physiological data in two ways: 1) extract features and use standard statistical analysis method to explore differences among different conditions (e.g., pre vs. post, Autism Spectrum Disorder (ASD) group vs. Typically Developing (TD) group, etc.); 2) use extracted features to build machine learning models for predicting different emotion states (e.g., engagement, anxiety, etc.).
Publications:
- D. Bian, Z. Zheng, A. Swanson, A. Weitlauf, Z. Warren, and N. Sarkar, “Physiology-based Affect Recognition during Driving in Virtual Environment for Autism Intervention,” 2nd International Conference on Physiological Computing Systems, 2015.
- L. Zhang, J. Wade, D. Bian, J. Fan, A. Swanson, A. Weitlauf, Z. Warren, and N. Sarkar, “Cognitive load measurement in a Virtual Reality-based Driving System for Autism Intervention,” IEEE Transactions on Affective Computing, 2016.
- D. Bian, J. Wade, Z. Warren, and N. Sarkar, “Online Engagement Detection and Task Adaptation in a Virtual Reality Based Driving Simulator for Autism Intervention,” in International Conference on Universal Access in Human-Computer Interaction, 2016, pp. 538-547.
- E. Bekele, J. Wade, D. Bian, J. Fan, A. Swanson, Z. Warren, and N. Sarkar, “Multimodal adaptive social interaction in virtual environment (MASI-VR) for children with Autism spectrum disorders (ASD),” in Virtual Reality (VR), 2016 IEEE, 2016, pp. 121-130.