Determining Correlation Between Video Stimulus and Electrodermal Activity

With the growth of wearable devices capable of measuring physiological signals, affective computing is becoming more popular than before that gradually will remove our cognitive approach. One of the physiological signals is the electrodermal activities (EDA) signal. We explore how video stimulus th...

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Bibliographic Details
Main Author: Tasooji, Reza
Other Authors: Computer Science
Format: Others
Published: Virginia Tech 2018
Subjects:
Online Access:http://hdl.handle.net/10919/84509
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spelling ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-845092020-09-29T05:46:24Z Determining Correlation Between Video Stimulus and Electrodermal Activity Tasooji, Reza Computer Science Knapp, R. Benjamin Gracanin, Denis Martin, Thomas L. Emotion Recognition Affective Computing Human Computer Interaction Electrodermal Activity Fear With the growth of wearable devices capable of measuring physiological signals, affective computing is becoming more popular than before that gradually will remove our cognitive approach. One of the physiological signals is the electrodermal activities (EDA) signal. We explore how video stimulus that might arouse fear affect the EDA signal. To better understand EDA signal, two different medians, a scene from a movie and a scene from a video game, were selected to arouse fear. We conducted a user study with 20 participants and analyzed the differences between medians and proposed a method capable of detecting the highlights of the stimulus using only EDA signals. The study results show that there are no significant differences between two medians except that users are more engaged with the content of the video game. From gathered data, we propose a similarity measurement method for clustering different users based on how common they reacted to different highlights. The result shows for 300 seconds stimulus, using a window size of 10 seconds, our approach for detecting highlights of the stimulus has the precision of one for both medians, and F1 score of 0.85 and 0.84 for movie and video game respectively. Master of Science 2018-08-07T08:00:15Z 2018-08-07T08:00:15Z 2018-08-06 Thesis vt_gsexam:16000 http://hdl.handle.net/10919/84509 In Copyright http://rightsstatements.org/vocab/InC/1.0/ ETD application/pdf Virginia Tech
collection NDLTD
format Others
sources NDLTD
topic Emotion Recognition
Affective Computing
Human Computer Interaction
Electrodermal Activity
Fear
spellingShingle Emotion Recognition
Affective Computing
Human Computer Interaction
Electrodermal Activity
Fear
Tasooji, Reza
Determining Correlation Between Video Stimulus and Electrodermal Activity
description With the growth of wearable devices capable of measuring physiological signals, affective computing is becoming more popular than before that gradually will remove our cognitive approach. One of the physiological signals is the electrodermal activities (EDA) signal. We explore how video stimulus that might arouse fear affect the EDA signal. To better understand EDA signal, two different medians, a scene from a movie and a scene from a video game, were selected to arouse fear. We conducted a user study with 20 participants and analyzed the differences between medians and proposed a method capable of detecting the highlights of the stimulus using only EDA signals. The study results show that there are no significant differences between two medians except that users are more engaged with the content of the video game. From gathered data, we propose a similarity measurement method for clustering different users based on how common they reacted to different highlights. The result shows for 300 seconds stimulus, using a window size of 10 seconds, our approach for detecting highlights of the stimulus has the precision of one for both medians, and F1 score of 0.85 and 0.84 for movie and video game respectively. === Master of Science
author2 Computer Science
author_facet Computer Science
Tasooji, Reza
author Tasooji, Reza
author_sort Tasooji, Reza
title Determining Correlation Between Video Stimulus and Electrodermal Activity
title_short Determining Correlation Between Video Stimulus and Electrodermal Activity
title_full Determining Correlation Between Video Stimulus and Electrodermal Activity
title_fullStr Determining Correlation Between Video Stimulus and Electrodermal Activity
title_full_unstemmed Determining Correlation Between Video Stimulus and Electrodermal Activity
title_sort determining correlation between video stimulus and electrodermal activity
publisher Virginia Tech
publishDate 2018
url http://hdl.handle.net/10919/84509
work_keys_str_mv AT tasoojireza determiningcorrelationbetweenvideostimulusandelectrodermalactivity
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