A Smile Recognition Method

碩士 === 義守大學 === 工業管理學系 === 102 === Biometric system will be one of the most important applications of the 21st century technology, biometrics-related industries can imagine an optimistic view. In recent years, with the development of social networking sites, many people will upload their own life bi...

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Main Authors: Ming-Ren Hsu, 許銘仁
Other Authors: Wen-Yen Wu
Format: Others
Language:zh-TW
Published: 2014
Online Access:http://ndltd.ncl.edu.tw/handle/09270777135381195733
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spelling ndltd-TW-102ISU050410592015-10-14T00:23:51Z http://ndltd.ncl.edu.tw/handle/09270777135381195733 A Smile Recognition Method 微笑辨識方法 Ming-Ren Hsu 許銘仁 碩士 義守大學 工業管理學系 102 Biometric system will be one of the most important applications of the 21st century technology, biometrics-related industries can imagine an optimistic view. In recent years, with the development of social networking sites, many people will upload their own life bit by bit to the network. As the saying goes, a picture is worth a thousand words, using photographic images replace text to describe has become a habit of the modern Internet. In order to meet users'' needs, not only the human face detection, facial expression recognition is often on adding features. If you want to express an expression, the face lower half of the mouth is an important message of judgment. Smiling face is the world''s common language, most of the people in the pictures as often photographed with a smile face. Therefore, this study aims to identify and classify the smiling face and no smiling face . Present study is based on the Viola method to face detection and retrieve the mouth area. A small amount of geometric features combined with the Back Propagation Neural Network (BPNN) method of classification smiling face. Use angles as the geometric features of the mouth, then the features input to BPNN neural network for training and classification. Finally, the results of training accuracy rate of 90.0% and classification recognition rate 80.0%. On the results, small amount of angle features used in this study, the samples can be effectively classify most of the faces, and has an ideal smile recognition capability. Wen-Yen Wu 吳文言 2014 學位論文 ; thesis 47 zh-TW
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description 碩士 === 義守大學 === 工業管理學系 === 102 === Biometric system will be one of the most important applications of the 21st century technology, biometrics-related industries can imagine an optimistic view. In recent years, with the development of social networking sites, many people will upload their own life bit by bit to the network. As the saying goes, a picture is worth a thousand words, using photographic images replace text to describe has become a habit of the modern Internet. In order to meet users'' needs, not only the human face detection, facial expression recognition is often on adding features. If you want to express an expression, the face lower half of the mouth is an important message of judgment. Smiling face is the world''s common language, most of the people in the pictures as often photographed with a smile face. Therefore, this study aims to identify and classify the smiling face and no smiling face . Present study is based on the Viola method to face detection and retrieve the mouth area. A small amount of geometric features combined with the Back Propagation Neural Network (BPNN) method of classification smiling face. Use angles as the geometric features of the mouth, then the features input to BPNN neural network for training and classification. Finally, the results of training accuracy rate of 90.0% and classification recognition rate 80.0%. On the results, small amount of angle features used in this study, the samples can be effectively classify most of the faces, and has an ideal smile recognition capability.
author2 Wen-Yen Wu
author_facet Wen-Yen Wu
Ming-Ren Hsu
許銘仁
author Ming-Ren Hsu
許銘仁
spellingShingle Ming-Ren Hsu
許銘仁
A Smile Recognition Method
author_sort Ming-Ren Hsu
title A Smile Recognition Method
title_short A Smile Recognition Method
title_full A Smile Recognition Method
title_fullStr A Smile Recognition Method
title_full_unstemmed A Smile Recognition Method
title_sort smile recognition method
publishDate 2014
url http://ndltd.ncl.edu.tw/handle/09270777135381195733
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AT xǔmíngrén asmilerecognitionmethod
AT mingrenhsu wēixiàobiànshífāngfǎ
AT xǔmíngrén wēixiàobiànshífāngfǎ
AT mingrenhsu smilerecognitionmethod
AT xǔmíngrén smilerecognitionmethod
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