Image database indexing: Emotional impact assessing
The goal of my PhD was to propose an efficient approach for emotional impact recognition based on CBIR techniques (descriptors, image representation). The main idea relies in classifying images according to their emotion which can be "Negative", "Neutral" or "Positive"....
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doaj-1c539ecb68344b4085e56074c99db3952021-09-18T12:39:05ZengComputer Vision Center PressELCVIA Electronic Letters on Computer Vision and Image Analysis1577-50972015-12-0114310.5565/rev/elcvia.709276Image database indexing: Emotional impact assessingSyntyche Gbèhounou0Department SIC of XLIM Laboratory, UMR 7252, University of Poitiers, FranceThe goal of my PhD was to propose an efficient approach for emotional impact recognition based on CBIR techniques (descriptors, image representation). The main idea relies in classifying images according to their emotion which can be "Negative", "Neutral" or "Positive". Emotion is related to the image content and also to the personal feelings. To achieve our goal we firstly need a correct assessed image database. Our first contribution is about this aspect. We proposed a set of 350 diversifed images rated by people around the world. Added to our choice to use CBIR methods, we studied the impact of visual saliency for the subjective evaluations and interest region segmentation for classification. The results are really interesting and prove that the CBIR methods are useful for emotion recognition. The chosen desciptors are complementary and their performance is consistent on the database we have built and on IAPS, reference database for the analysis of the image emotional impact. https://elcvia.cvc.uab.es/article/view/709Computer VisionFeatures and Image DescriptorsOther applications |
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DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Syntyche Gbèhounou |
spellingShingle |
Syntyche Gbèhounou Image database indexing: Emotional impact assessing ELCVIA Electronic Letters on Computer Vision and Image Analysis Computer Vision Features and Image Descriptors Other applications |
author_facet |
Syntyche Gbèhounou |
author_sort |
Syntyche Gbèhounou |
title |
Image database indexing: Emotional impact assessing |
title_short |
Image database indexing: Emotional impact assessing |
title_full |
Image database indexing: Emotional impact assessing |
title_fullStr |
Image database indexing: Emotional impact assessing |
title_full_unstemmed |
Image database indexing: Emotional impact assessing |
title_sort |
image database indexing: emotional impact assessing |
publisher |
Computer Vision Center Press |
series |
ELCVIA Electronic Letters on Computer Vision and Image Analysis |
issn |
1577-5097 |
publishDate |
2015-12-01 |
description |
The goal of my PhD was to propose an efficient approach for emotional impact recognition based on CBIR techniques (descriptors, image representation). The main idea relies in classifying images according to their emotion which can be "Negative", "Neutral" or "Positive". Emotion is related to the image content and also to the personal feelings. To achieve our goal we firstly need a correct assessed image database. Our first contribution is about this aspect. We proposed a set of 350 diversifed images rated by people around the world. Added to our choice to use CBIR methods, we studied the impact of visual saliency for the subjective evaluations and interest region segmentation for classification. The results are really interesting and prove that the CBIR methods are useful for emotion recognition. The chosen desciptors are complementary and their performance is consistent on the database we have built and on IAPS, reference database for the analysis of the image emotional impact.
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topic |
Computer Vision Features and Image Descriptors Other applications |
url |
https://elcvia.cvc.uab.es/article/view/709 |
work_keys_str_mv |
AT syntychegbehounou imagedatabaseindexingemotionalimpactassessing |
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1717376957513990144 |