A Hybrid of Fuzzy Integral and Convolution Neural Networks for Facial Image Classification

碩士 === 國立勤益科技大學 === 資訊工程系 === 106 === This paper proposed Evolutional Fuzzy Integral to promote the accuracy by combining several Convolution Neural Networks. And solve the problem of how to choice witch modle or optimization to use when you’re facing a classification issue. the input of Evolutional...

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Main Authors: Wei-Yu Tseng, 曾韋諭
Other Authors: Cheng-Jian Lin
Format: Others
Language:zh-TW
Published: 2018
Online Access:http://ndltd.ncl.edu.tw/handle/94p3tx
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spelling ndltd-TW-106NCIT53920262019-07-04T05:59:50Z http://ndltd.ncl.edu.tw/handle/94p3tx A Hybrid of Fuzzy Integral and Convolution Neural Networks for Facial Image Classification 演化式模糊積分結合多元深度學習網路 於人臉影像分類應用 Wei-Yu Tseng 曾韋諭 碩士 國立勤益科技大學 資訊工程系 106 This paper proposed Evolutional Fuzzy Integral to promote the accuracy by combining several Convolution Neural Networks. And solve the problem of how to choice witch modle or optimization to use when you’re facing a classification issue. the input of Evolutional Fuzzy Integral is the output of Convolution Neural Networks. The result will be compute by the rule of Sugeno or Choqute. Evolutional Fuzzy Integral can analysis the advantage of Convolution Neural Networks. And based on it to compute the output. So it can achieve purpose of Combining the each Convolution Neural Network according to the past experience. Which means it can automatically evaluate the advantage of each Convolution Neural Network. Cheng-Jian Lin 林正堅 2018 學位論文 ; thesis 35 zh-TW
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language zh-TW
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description 碩士 === 國立勤益科技大學 === 資訊工程系 === 106 === This paper proposed Evolutional Fuzzy Integral to promote the accuracy by combining several Convolution Neural Networks. And solve the problem of how to choice witch modle or optimization to use when you’re facing a classification issue. the input of Evolutional Fuzzy Integral is the output of Convolution Neural Networks. The result will be compute by the rule of Sugeno or Choqute. Evolutional Fuzzy Integral can analysis the advantage of Convolution Neural Networks. And based on it to compute the output. So it can achieve purpose of Combining the each Convolution Neural Network according to the past experience. Which means it can automatically evaluate the advantage of each Convolution Neural Network.
author2 Cheng-Jian Lin
author_facet Cheng-Jian Lin
Wei-Yu Tseng
曾韋諭
author Wei-Yu Tseng
曾韋諭
spellingShingle Wei-Yu Tseng
曾韋諭
A Hybrid of Fuzzy Integral and Convolution Neural Networks for Facial Image Classification
author_sort Wei-Yu Tseng
title A Hybrid of Fuzzy Integral and Convolution Neural Networks for Facial Image Classification
title_short A Hybrid of Fuzzy Integral and Convolution Neural Networks for Facial Image Classification
title_full A Hybrid of Fuzzy Integral and Convolution Neural Networks for Facial Image Classification
title_fullStr A Hybrid of Fuzzy Integral and Convolution Neural Networks for Facial Image Classification
title_full_unstemmed A Hybrid of Fuzzy Integral and Convolution Neural Networks for Facial Image Classification
title_sort hybrid of fuzzy integral and convolution neural networks for facial image classification
publishDate 2018
url http://ndltd.ncl.edu.tw/handle/94p3tx
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