Enhancing Eye Emotion Recognition with the Haar Classifier Using Co-Evolutionary Hybrid Intelligence

This work explores the challenging task of identifying emotions from the eyes through the analysis of nonverbal cues and facial expressions. The study investigates the various emotions that the eyes can convey and their significance in emotional expression, including happiness, sadness, anger, fear,...

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Main Authors: Grusha G S, Dharani Dharan, Nikhil M, Kirill Krinkin, Yulia shichkina, Nagabhushana T N
Format: Article
Language:English
Published: FRUCT 2023-05-01
Series:Proceedings of the XXth Conference of Open Innovations Association FRUCT
Subjects:
Online Access:https://www.fruct.org/publications/volume-33/acm33/files/Gru.pdf
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author Grusha G S
Dharani Dharan
Nikhil M
Kirill Krinkin
Yulia shichkina
Nagabhushana T N
author_facet Grusha G S
Dharani Dharan
Nikhil M
Kirill Krinkin
Yulia shichkina
Nagabhushana T N
author_sort Grusha G S
collection DOAJ
description This work explores the challenging task of identifying emotions from the eyes through the analysis of nonverbal cues and facial expressions. The study investigates the various emotions that the eyes can convey and their significance in emotional expression, including happiness, sadness, anger, fear, surprise, and contempt. The practical applications of this research include the potential use of computer vision algorithms to analyze images or videos of the eye region to identify emotions. The coevolution theory suggests that humans and robots can collaborate to achieve a shared goal. Therefore, this study aims to develop algorithms that can identify variations in pupil size, eye movements, and other traits linked to various emotional states, such as arousal, surprise, and disgust. The results of the research show that these algorithms can accurately identify emotions from the eyes, and a human expert can validate their interpretations. The methods used in this study include analyzing facial expressions and nonverbal cues, developing computer vision algorithms, and working with human experts to validate the results. The conclusions drawn from this work suggest that emotional identification from the eyes is a promising area of research that has practical applications in various fields, such as robotics, psychology, and human-computer interaction.
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spelling doaj.art-2d074879c45d40e1b7b70ccafd805eeb2023-06-09T11:41:51ZengFRUCTProceedings of the XXth Conference of Open Innovations Association FRUCT2305-72542343-07372023-05-0133235936310.5281/zenodo.8005297Enhancing Eye Emotion Recognition with the Haar Classifier Using Co-Evolutionary Hybrid IntelligenceGrusha G S0Dharani Dharan1Nikhil M2Kirill Krinkin3Yulia shichkina4Nagabhushana T N5East West Institute of TechnologyEastWest Institute of TechnologyEast West Institute of Technologykrinkin.cometuEast West Institute of TechnologyThis work explores the challenging task of identifying emotions from the eyes through the analysis of nonverbal cues and facial expressions. The study investigates the various emotions that the eyes can convey and their significance in emotional expression, including happiness, sadness, anger, fear, surprise, and contempt. The practical applications of this research include the potential use of computer vision algorithms to analyze images or videos of the eye region to identify emotions. The coevolution theory suggests that humans and robots can collaborate to achieve a shared goal. Therefore, this study aims to develop algorithms that can identify variations in pupil size, eye movements, and other traits linked to various emotional states, such as arousal, surprise, and disgust. The results of the research show that these algorithms can accurately identify emotions from the eyes, and a human expert can validate their interpretations. The methods used in this study include analyzing facial expressions and nonverbal cues, developing computer vision algorithms, and working with human experts to validate the results. The conclusions drawn from this work suggest that emotional identification from the eyes is a promising area of research that has practical applications in various fields, such as robotics, psychology, and human-computer interaction.https://www.fruct.org/publications/volume-33/acm33/files/Gru.pdfemotion recognitioneye trackingreal-time detectioncomputer visionmachine learning
spellingShingle Grusha G S
Dharani Dharan
Nikhil M
Kirill Krinkin
Yulia shichkina
Nagabhushana T N
Enhancing Eye Emotion Recognition with the Haar Classifier Using Co-Evolutionary Hybrid Intelligence
Proceedings of the XXth Conference of Open Innovations Association FRUCT
emotion recognition
eye tracking
real-time detection
computer vision
machine learning
title Enhancing Eye Emotion Recognition with the Haar Classifier Using Co-Evolutionary Hybrid Intelligence
title_full Enhancing Eye Emotion Recognition with the Haar Classifier Using Co-Evolutionary Hybrid Intelligence
title_fullStr Enhancing Eye Emotion Recognition with the Haar Classifier Using Co-Evolutionary Hybrid Intelligence
title_full_unstemmed Enhancing Eye Emotion Recognition with the Haar Classifier Using Co-Evolutionary Hybrid Intelligence
title_short Enhancing Eye Emotion Recognition with the Haar Classifier Using Co-Evolutionary Hybrid Intelligence
title_sort enhancing eye emotion recognition with the haar classifier using co evolutionary hybrid intelligence
topic emotion recognition
eye tracking
real-time detection
computer vision
machine learning
url https://www.fruct.org/publications/volume-33/acm33/files/Gru.pdf
work_keys_str_mv AT grushags enhancingeyeemotionrecognitionwiththehaarclassifierusingcoevolutionaryhybridintelligence
AT dharanidharan enhancingeyeemotionrecognitionwiththehaarclassifierusingcoevolutionaryhybridintelligence
AT nikhilm enhancingeyeemotionrecognitionwiththehaarclassifierusingcoevolutionaryhybridintelligence
AT kirillkrinkin enhancingeyeemotionrecognitionwiththehaarclassifierusingcoevolutionaryhybridintelligence
AT yuliashichkina enhancingeyeemotionrecognitionwiththehaarclassifierusingcoevolutionaryhybridintelligence
AT nagabhushanatn enhancingeyeemotionrecognitionwiththehaarclassifierusingcoevolutionaryhybridintelligence