An Investigation of Various Machine and Deep Learning Techniques Applied in Automatic Fear Level Detection and Acrophobia Virtual Therapy

In this paper, we investigate various machine learning classifiers used in our Virtual Reality (VR) system for treating acrophobia. The system automatically estimates fear level based on multimodal sensory data and a self-reported emotion assessment. There are two modalities of expressing fear ratin...

Full description

Bibliographic Details
Main Authors: Oana Bălan, Gabriela Moise, Alin Moldoveanu, Marius Leordeanu, Florica Moldoveanu
Format: Article
Language:English
Published: MDPI AG 2020-01-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/2/496
id doaj-15bd3129bebe4bc4aa33492b26a7b581
record_format Article
spelling doaj-15bd3129bebe4bc4aa33492b26a7b5812020-11-25T02:06:05ZengMDPI AGSensors1424-82202020-01-0120249610.3390/s20020496s20020496An Investigation of Various Machine and Deep Learning Techniques Applied in Automatic Fear Level Detection and Acrophobia Virtual TherapyOana Bălan0Gabriela Moise1Alin Moldoveanu2Marius Leordeanu3Florica Moldoveanu4Faculty of Automatic Control and Computers, University POLITEHNICA of Bucharest, Bucharest 060042, RomaniaDepartment of Computer Science, Information Technology, Mathematics and Physics, Petroleum-Gas University of Ploiesti, Ploiesti 100680, RomaniaFaculty of Automatic Control and Computers, University POLITEHNICA of Bucharest, Bucharest 060042, RomaniaFaculty of Automatic Control and Computers, University POLITEHNICA of Bucharest, Bucharest 060042, RomaniaFaculty of Automatic Control and Computers, University POLITEHNICA of Bucharest, Bucharest 060042, RomaniaIn this paper, we investigate various machine learning classifiers used in our Virtual Reality (VR) system for treating acrophobia. The system automatically estimates fear level based on multimodal sensory data and a self-reported emotion assessment. There are two modalities of expressing fear ratings: the 2-choice scale, where 0 represents relaxation and 1 stands for fear; and the 4-choice scale, with the following correspondence: 0—relaxation, 1—low fear, 2—medium fear and 3—high fear. A set of features was extracted from the sensory signals using various metrics that quantify brain (electroencephalogram—EEG) and physiological linear and non-linear dynamics (Heart Rate—HR and Galvanic Skin Response—GSR). The novelty consists in the automatic adaptation of exposure scenario according to the subject’s affective state. We acquired data from acrophobic subjects who had undergone an in vivo pre-therapy exposure session, followed by a Virtual Reality therapy and an in vivo evaluation procedure. Various machine and deep learning classifiers were implemented and tested, with and without feature selection, in both a user-dependent and user-independent fashion. The results showed a very high cross-validation accuracy on the training set and good test accuracies, ranging from 42.5% to 89.5%. The most important features of fear level classification were GSR, HR and the values of the EEG in the beta frequency range. For determining the next exposure scenario, a dominant role was played by the target fear level, a parameter computed by taking into account the patient’s estimated fear level.https://www.mdpi.com/1424-8220/20/2/496fear classificationemotional assessmentfeature selectionaffective computing
collection DOAJ
language English
format Article
sources DOAJ
author Oana Bălan
Gabriela Moise
Alin Moldoveanu
Marius Leordeanu
Florica Moldoveanu
spellingShingle Oana Bălan
Gabriela Moise
Alin Moldoveanu
Marius Leordeanu
Florica Moldoveanu
An Investigation of Various Machine and Deep Learning Techniques Applied in Automatic Fear Level Detection and Acrophobia Virtual Therapy
Sensors
fear classification
emotional assessment
feature selection
affective computing
author_facet Oana Bălan
Gabriela Moise
Alin Moldoveanu
Marius Leordeanu
Florica Moldoveanu
author_sort Oana Bălan
title An Investigation of Various Machine and Deep Learning Techniques Applied in Automatic Fear Level Detection and Acrophobia Virtual Therapy
title_short An Investigation of Various Machine and Deep Learning Techniques Applied in Automatic Fear Level Detection and Acrophobia Virtual Therapy
title_full An Investigation of Various Machine and Deep Learning Techniques Applied in Automatic Fear Level Detection and Acrophobia Virtual Therapy
title_fullStr An Investigation of Various Machine and Deep Learning Techniques Applied in Automatic Fear Level Detection and Acrophobia Virtual Therapy
title_full_unstemmed An Investigation of Various Machine and Deep Learning Techniques Applied in Automatic Fear Level Detection and Acrophobia Virtual Therapy
title_sort investigation of various machine and deep learning techniques applied in automatic fear level detection and acrophobia virtual therapy
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-01-01
description In this paper, we investigate various machine learning classifiers used in our Virtual Reality (VR) system for treating acrophobia. The system automatically estimates fear level based on multimodal sensory data and a self-reported emotion assessment. There are two modalities of expressing fear ratings: the 2-choice scale, where 0 represents relaxation and 1 stands for fear; and the 4-choice scale, with the following correspondence: 0—relaxation, 1—low fear, 2—medium fear and 3—high fear. A set of features was extracted from the sensory signals using various metrics that quantify brain (electroencephalogram—EEG) and physiological linear and non-linear dynamics (Heart Rate—HR and Galvanic Skin Response—GSR). The novelty consists in the automatic adaptation of exposure scenario according to the subject’s affective state. We acquired data from acrophobic subjects who had undergone an in vivo pre-therapy exposure session, followed by a Virtual Reality therapy and an in vivo evaluation procedure. Various machine and deep learning classifiers were implemented and tested, with and without feature selection, in both a user-dependent and user-independent fashion. The results showed a very high cross-validation accuracy on the training set and good test accuracies, ranging from 42.5% to 89.5%. The most important features of fear level classification were GSR, HR and the values of the EEG in the beta frequency range. For determining the next exposure scenario, a dominant role was played by the target fear level, a parameter computed by taking into account the patient’s estimated fear level.
topic fear classification
emotional assessment
feature selection
affective computing
url https://www.mdpi.com/1424-8220/20/2/496
work_keys_str_mv AT oanabalan aninvestigationofvariousmachineanddeeplearningtechniquesappliedinautomaticfearleveldetectionandacrophobiavirtualtherapy
AT gabrielamoise aninvestigationofvariousmachineanddeeplearningtechniquesappliedinautomaticfearleveldetectionandacrophobiavirtualtherapy
AT alinmoldoveanu aninvestigationofvariousmachineanddeeplearningtechniquesappliedinautomaticfearleveldetectionandacrophobiavirtualtherapy
AT mariusleordeanu aninvestigationofvariousmachineanddeeplearningtechniquesappliedinautomaticfearleveldetectionandacrophobiavirtualtherapy
AT floricamoldoveanu aninvestigationofvariousmachineanddeeplearningtechniquesappliedinautomaticfearleveldetectionandacrophobiavirtualtherapy
AT oanabalan investigationofvariousmachineanddeeplearningtechniquesappliedinautomaticfearleveldetectionandacrophobiavirtualtherapy
AT gabrielamoise investigationofvariousmachineanddeeplearningtechniquesappliedinautomaticfearleveldetectionandacrophobiavirtualtherapy
AT alinmoldoveanu investigationofvariousmachineanddeeplearningtechniquesappliedinautomaticfearleveldetectionandacrophobiavirtualtherapy
AT mariusleordeanu investigationofvariousmachineanddeeplearningtechniquesappliedinautomaticfearleveldetectionandacrophobiavirtualtherapy
AT floricamoldoveanu investigationofvariousmachineanddeeplearningtechniquesappliedinautomaticfearleveldetectionandacrophobiavirtualtherapy
_version_ 1724935172884791296