Optimal weighted parameters of ensemble convolutional neural networks based on a differential evolution algorithm for enhancing pornographic image classification

Use of ensemble convolutional neural networks (CNNs) has become a more robust strategy to improve image classification performance. However, the success of the ensemble method depends on appropriately selecting the optimal weighted parameters. This paper aims to automatically optimize the weighted p...

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Main Authors: Sarayut Gonwirat, Olarik Surinta
Format: Article
Language:English
Published: Khon Kaen University 2021-07-01
Series:Engineering and Applied Science Research
Subjects:
Online Access:https://ph01.tci-thaijo.org/index.php/easr/article/download/243592/166484/
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spelling doaj-4cff056d758142c7849c163c750b39ce2021-07-12T04:10:03ZengKhon Kaen UniversityEngineering and Applied Science Research2539-61612539-62182021-07-01485560569Optimal weighted parameters of ensemble convolutional neural networks based on a differential evolution algorithm for enhancing pornographic image classificationSarayut GonwiratOlarik SurintaUse of ensemble convolutional neural networks (CNNs) has become a more robust strategy to improve image classification performance. However, the success of the ensemble method depends on appropriately selecting the optimal weighted parameters. This paper aims to automatically optimize the weighted parameters using the differential evolution (DE) algorithm. The DE algorithm is applied to the weighted parameters and then assigning the optimal weighted to the ensemble method and stacked ensemble method. For the ensemble method, the weighted average ensemble method is applied. For the stacked ensemble method, we use the support vector machine for the second-level classifier. In the experiments, firstly, we experimented with discovering the baseline CNN models and found the best models on the pornographic image dataset were NASNetLarge with an accuracy of 93.63%. Additionally, three CNN models, including EfficientNetB1, InceptionResNetV2, and MobileNetV2, also obtained an accuracy above 92%. Secondly, we generated two ensemble CNN frameworks; the ensemble learning method, called Ensemble-CNN and the stacked ensemble learning method, called StackedEnsemble-CNN. In the framework, we optimized the weighted parameter using the DE algorithm with six mutation strategies containing rand/1, rand/2, best/1, best/2, current to best/1, and random to best/1. Therefore, the optimal weighted was given to classify using ensemble and stacked ensemble methods. The result showed that the Ensemble-3CNN and StackedEnsemble-3CNN, when optimized using the best/2 mutation strategy, surpassed other mutation strategies with an accuracy of 96.83%. The results indicated that we could create the learning method framework with only 3 CNN models, including NASNetLarge, EfficientNetB1, and InceptionResNetV2.https://ph01.tci-thaijo.org/index.php/easr/article/download/243592/166484/pornographic image classificationdifferential evolution algorithmmutation strategyconvolutional neural networksensemble convolutional neural networksstacked ensemble learning methodensemble learning method
collection DOAJ
language English
format Article
sources DOAJ
author Sarayut Gonwirat
Olarik Surinta
spellingShingle Sarayut Gonwirat
Olarik Surinta
Optimal weighted parameters of ensemble convolutional neural networks based on a differential evolution algorithm for enhancing pornographic image classification
Engineering and Applied Science Research
pornographic image classification
differential evolution algorithm
mutation strategy
convolutional neural networks
ensemble convolutional neural networks
stacked ensemble learning method
ensemble learning method
author_facet Sarayut Gonwirat
Olarik Surinta
author_sort Sarayut Gonwirat
title Optimal weighted parameters of ensemble convolutional neural networks based on a differential evolution algorithm for enhancing pornographic image classification
title_short Optimal weighted parameters of ensemble convolutional neural networks based on a differential evolution algorithm for enhancing pornographic image classification
title_full Optimal weighted parameters of ensemble convolutional neural networks based on a differential evolution algorithm for enhancing pornographic image classification
title_fullStr Optimal weighted parameters of ensemble convolutional neural networks based on a differential evolution algorithm for enhancing pornographic image classification
title_full_unstemmed Optimal weighted parameters of ensemble convolutional neural networks based on a differential evolution algorithm for enhancing pornographic image classification
title_sort optimal weighted parameters of ensemble convolutional neural networks based on a differential evolution algorithm for enhancing pornographic image classification
publisher Khon Kaen University
series Engineering and Applied Science Research
issn 2539-6161
2539-6218
publishDate 2021-07-01
description Use of ensemble convolutional neural networks (CNNs) has become a more robust strategy to improve image classification performance. However, the success of the ensemble method depends on appropriately selecting the optimal weighted parameters. This paper aims to automatically optimize the weighted parameters using the differential evolution (DE) algorithm. The DE algorithm is applied to the weighted parameters and then assigning the optimal weighted to the ensemble method and stacked ensemble method. For the ensemble method, the weighted average ensemble method is applied. For the stacked ensemble method, we use the support vector machine for the second-level classifier. In the experiments, firstly, we experimented with discovering the baseline CNN models and found the best models on the pornographic image dataset were NASNetLarge with an accuracy of 93.63%. Additionally, three CNN models, including EfficientNetB1, InceptionResNetV2, and MobileNetV2, also obtained an accuracy above 92%. Secondly, we generated two ensemble CNN frameworks; the ensemble learning method, called Ensemble-CNN and the stacked ensemble learning method, called StackedEnsemble-CNN. In the framework, we optimized the weighted parameter using the DE algorithm with six mutation strategies containing rand/1, rand/2, best/1, best/2, current to best/1, and random to best/1. Therefore, the optimal weighted was given to classify using ensemble and stacked ensemble methods. The result showed that the Ensemble-3CNN and StackedEnsemble-3CNN, when optimized using the best/2 mutation strategy, surpassed other mutation strategies with an accuracy of 96.83%. The results indicated that we could create the learning method framework with only 3 CNN models, including NASNetLarge, EfficientNetB1, and InceptionResNetV2.
topic pornographic image classification
differential evolution algorithm
mutation strategy
convolutional neural networks
ensemble convolutional neural networks
stacked ensemble learning method
ensemble learning method
url https://ph01.tci-thaijo.org/index.php/easr/article/download/243592/166484/
work_keys_str_mv AT sarayutgonwirat optimalweightedparametersofensembleconvolutionalneuralnetworksbasedonadifferentialevolutionalgorithmforenhancingpornographicimageclassification
AT olariksurinta optimalweightedparametersofensembleconvolutionalneuralnetworksbasedonadifferentialevolutionalgorithmforenhancingpornographicimageclassification
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