Predicting the Valence of a Scene from Observers' Eye Movements.

Multimedia analysis benefits from understanding the emotional content of a scene in a variety of tasks such as video genre classification and content-based image retrieval. Recently, there has been an increasing interest in applying human bio-signals, particularly eye movements, to recognize the emo...

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Main Authors: Hamed R-Tavakoli, Adham Atyabi, Antti Rantanen, Seppo J Laukka, Samia Nefti-Meziani, Janne Heikkilä
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4583411?pdf=render
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spelling doaj-9d2c3c164a514420b2fb36abab9d57c12020-11-25T01:50:15ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-01109e013819810.1371/journal.pone.0138198Predicting the Valence of a Scene from Observers' Eye Movements.Hamed R-TavakoliAdham AtyabiAntti RantanenSeppo J LaukkaSamia Nefti-MezianiJanne HeikkiläMultimedia analysis benefits from understanding the emotional content of a scene in a variety of tasks such as video genre classification and content-based image retrieval. Recently, there has been an increasing interest in applying human bio-signals, particularly eye movements, to recognize the emotional gist of a scene such as its valence. In order to determine the emotional category of images using eye movements, the existing methods often learn a classifier using several features that are extracted from eye movements. Although it has been shown that eye movement is potentially useful for recognition of scene valence, the contribution of each feature is not well-studied. To address the issue, we study the contribution of features extracted from eye movements in the classification of images into pleasant, neutral, and unpleasant categories. We assess ten features and their fusion. The features are histogram of saccade orientation, histogram of saccade slope, histogram of saccade length, histogram of saccade duration, histogram of saccade velocity, histogram of fixation duration, fixation histogram, top-ten salient coordinates, and saliency map. We utilize machine learning approach to analyze the performance of features by learning a support vector machine and exploiting various feature fusion schemes. The experiments reveal that 'saliency map', 'fixation histogram', 'histogram of fixation duration', and 'histogram of saccade slope' are the most contributing features. The selected features signify the influence of fixation information and angular behavior of eye movements in the recognition of the valence of images.http://europepmc.org/articles/PMC4583411?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Hamed R-Tavakoli
Adham Atyabi
Antti Rantanen
Seppo J Laukka
Samia Nefti-Meziani
Janne Heikkilä
spellingShingle Hamed R-Tavakoli
Adham Atyabi
Antti Rantanen
Seppo J Laukka
Samia Nefti-Meziani
Janne Heikkilä
Predicting the Valence of a Scene from Observers' Eye Movements.
PLoS ONE
author_facet Hamed R-Tavakoli
Adham Atyabi
Antti Rantanen
Seppo J Laukka
Samia Nefti-Meziani
Janne Heikkilä
author_sort Hamed R-Tavakoli
title Predicting the Valence of a Scene from Observers' Eye Movements.
title_short Predicting the Valence of a Scene from Observers' Eye Movements.
title_full Predicting the Valence of a Scene from Observers' Eye Movements.
title_fullStr Predicting the Valence of a Scene from Observers' Eye Movements.
title_full_unstemmed Predicting the Valence of a Scene from Observers' Eye Movements.
title_sort predicting the valence of a scene from observers' eye movements.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description Multimedia analysis benefits from understanding the emotional content of a scene in a variety of tasks such as video genre classification and content-based image retrieval. Recently, there has been an increasing interest in applying human bio-signals, particularly eye movements, to recognize the emotional gist of a scene such as its valence. In order to determine the emotional category of images using eye movements, the existing methods often learn a classifier using several features that are extracted from eye movements. Although it has been shown that eye movement is potentially useful for recognition of scene valence, the contribution of each feature is not well-studied. To address the issue, we study the contribution of features extracted from eye movements in the classification of images into pleasant, neutral, and unpleasant categories. We assess ten features and their fusion. The features are histogram of saccade orientation, histogram of saccade slope, histogram of saccade length, histogram of saccade duration, histogram of saccade velocity, histogram of fixation duration, fixation histogram, top-ten salient coordinates, and saliency map. We utilize machine learning approach to analyze the performance of features by learning a support vector machine and exploiting various feature fusion schemes. The experiments reveal that 'saliency map', 'fixation histogram', 'histogram of fixation duration', and 'histogram of saccade slope' are the most contributing features. The selected features signify the influence of fixation information and angular behavior of eye movements in the recognition of the valence of images.
url http://europepmc.org/articles/PMC4583411?pdf=render
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