Comparative Analysis of Electrodermal activity Decomposition Methods in Emotion Detection using Machine Learning Passed
Thursday May 25, 2023 13:15 - 13:30 G1
Lecturers: Praveen Kumar Govarthan, SRIRAM KUMAR P, Tikaram
Track: MIE: Special Topic: Caring is Sharing - exploiting value in data for health and innovation
Electrodermal activity (EDA) reflects sympathetic nervous system activity
through sweating-related changes in skin conductance. Decomposition analysis
is used to deconvolve the EDA into slow and fast varying tonic and phasic
activity, respectively. In this study, we used machine learning models to compare
the performance of two EDA decomposition algorithms to detect emotions such as
amusing, boring, relaxing, and scary. The EDA data considered in this study were
obtained from the publicly available Continuously Annotated Signals of Emotion
(CASE) dataset. Initially, we pre-processed and deconvolved the EDA data into
tonic and phasic components using decomposition methods such as cvxEDA and
BayesianEDA. Further, twelve-time domain features were extracted from the phasic
component of EDA data. Finally, we applied machine learning techniques such
as logistic regression (LR) and support vector machine (SVM), to evaluate the performance
of the decomposition method. Our results imply that the BayesianEDA
decomposition method outperforms the cvxEDA. The mean of first derivative feature
discriminated all the considered emotional pairs with high statistical significance
(p<0.05). SVM was able to detect emotions better than the LR classifier.
We achieved a 10-fold average classification accuracy, sensitivity, specificity, precision,
and f1-score of 88.2%, 76.25%, 92.08%, 76.16%, and 76.15% respectively,
using BayesianEDA and SVM classifier. The proposed framework can be utilized
to detect emotional states for the early diagnosis of psychological conditions.
Language
English
Seminar type
Pre-recorded + On-site
Level of knowledge
Advanced
Conference
MIE
Authors
SRIRAM KUMAR P, Praveen Kumar Govarthan, Nagarajan Ganapathy, A. R. Jac Fredo
Lecturers
Praveen Kumar Govarthan Lecturer
Student
Indian Institute of Technology (BHU), Varanasi
SRIRAM KUMAR P Lecturer
Research Scholar
Indian Institute of Technology (BHU) Varanasi
I am Sriram Kumar, a Ph.D. candidate at School of Bio-Medical Engineering of IIT (BHU) Varanasi, specializing in emotion detection, machine learning, and signal processing. Passionate about leveraging these fields to develop innovative solutions. Seeking collaborations and opportunities to contribute to the advancement of emotion detection technologies.
Tikaram Lecturer
Indian Institute of Technology (BHU), Varanasi