Recognizing product emotions using deep learning for subtle expression recognition

A variety of products are designed and manufactured depending on the demands of the consumers. To further develop better products to the increasing wants and needs of the society, insights regarding these products were collected and analyzed. One aspect of these consumer insights is commonly known a...

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Main Author: Abergos, Renz Paolo M.
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Language:English
Published: Animo Repository 2017
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Online Access:https://animorepository.dlsu.edu.ph/etd_masteral/5834
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Institution: De La Salle University
Language: English
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spelling oai:animorepository.dlsu.edu.ph:etd_masteral-126722021-02-11T02:01:34Z Recognizing product emotions using deep learning for subtle expression recognition Abergos, Renz Paolo M. A variety of products are designed and manufactured depending on the demands of the consumers. To further develop better products to the increasing wants and needs of the society, insights regarding these products were collected and analyzed. One aspect of these consumer insights is commonly known as product emotion. It is the study of customer's behavior and appreciation when interacting with a product. One notable system had explored product emotion recognition via facial expression recognition. However, a traditional machine learning approach was used which utilized distances of facial points as features. Throughout his research, it has been observed that product emotions are difficult to recognize. These expressions show low intensity of emotions called, subtle expressions. Deep learning, on the other hand, had proven to be a powerful approach in image classification because it learns multiple representations of patterns which make it different from using a specific hand-crafted feature: distances of facial points. For this reason, a best performing convolutional neural network was developed which is a product of extensive experiments to recognize subtle expressions from product emotions. Best results came from a 10 layer deep network. The final results are 70.69% top-3 accuracy, 60.08% top-1 accuracy, and 82.46% top-1 accuracy using 7, 3, and 2 emotion labels respectively. Moreover, this research compared the performance of the model with humans. The model performed better than humans which achieved 75% against 62.5%. 2017-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/etd_masteral/5834 Master's Theses English Animo Repository Consumers' preferences Consumer behavior
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
language English
topic Consumers' preferences
Consumer behavior
spellingShingle Consumers' preferences
Consumer behavior
Abergos, Renz Paolo M.
Recognizing product emotions using deep learning for subtle expression recognition
description A variety of products are designed and manufactured depending on the demands of the consumers. To further develop better products to the increasing wants and needs of the society, insights regarding these products were collected and analyzed. One aspect of these consumer insights is commonly known as product emotion. It is the study of customer's behavior and appreciation when interacting with a product. One notable system had explored product emotion recognition via facial expression recognition. However, a traditional machine learning approach was used which utilized distances of facial points as features. Throughout his research, it has been observed that product emotions are difficult to recognize. These expressions show low intensity of emotions called, subtle expressions. Deep learning, on the other hand, had proven to be a powerful approach in image classification because it learns multiple representations of patterns which make it different from using a specific hand-crafted feature: distances of facial points. For this reason, a best performing convolutional neural network was developed which is a product of extensive experiments to recognize subtle expressions from product emotions. Best results came from a 10 layer deep network. The final results are 70.69% top-3 accuracy, 60.08% top-1 accuracy, and 82.46% top-1 accuracy using 7, 3, and 2 emotion labels respectively. Moreover, this research compared the performance of the model with humans. The model performed better than humans which achieved 75% against 62.5%.
format text
author Abergos, Renz Paolo M.
author_facet Abergos, Renz Paolo M.
author_sort Abergos, Renz Paolo M.
title Recognizing product emotions using deep learning for subtle expression recognition
title_short Recognizing product emotions using deep learning for subtle expression recognition
title_full Recognizing product emotions using deep learning for subtle expression recognition
title_fullStr Recognizing product emotions using deep learning for subtle expression recognition
title_full_unstemmed Recognizing product emotions using deep learning for subtle expression recognition
title_sort recognizing product emotions using deep learning for subtle expression recognition
publisher Animo Repository
publishDate 2017
url https://animorepository.dlsu.edu.ph/etd_masteral/5834
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