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Deep feature learnt by conventional deep neural network

•As the pornographic sources have been proliferated on the Internet, it is needed to provide a system to detect and filter them accurately.•A new framework has been introduced to make use of the benefits of deep convolutional neural network and ensemble learning.•We show experimentally that the prop...

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Published in:Computers & electrical engineering 2020-06, Vol.84, p.106656-11, Article 106656
Main Authors: Niu, Huan, Xu, Wei, Akbarzadeh, Hamidreza, Parvin, Hamid, Beheshti, Amin, Alinejad-Rokny, Hamid
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container_title Computers & electrical engineering
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creator Niu, Huan
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description •As the pornographic sources have been proliferated on the Internet, it is needed to provide a system to detect and filter them accurately.•A new framework has been introduced to make use of the benefits of deep convolutional neural network and ensemble learning.•We show experimentally that the proposed model outperforms the state of the art.•The proposed approach may be used in different applications such as intelligent filtering of unconventional images or medical images analysis. In this paper, we introduce an approach to discriminate unconventional images and their intelligent filtering. As the target data to this issue are huge and consequently, a handling approach might potentially be a very time consuming one, one of the major challenges to be solved by this introduced approach is its ability for dealing with large-scale datasets. A deep neural network might be a good option to resolve this challenge. It can provide a good accuracy while dealing with huge databases. In the proposed approach, the new architecture is introduced using a combination of AlexNet and LeNet architectures. It uses convolutional, polling and fully-connected layers. The results are tested on two large-scale datasets. These tests show that the introduced architecture is more accurate than the other recently developed methods in identifying unconventional images. The proposed approach may be used in different applications such as intelligent filtering of unconventional images or medical images analysis. [Display omitted]
doi_str_mv 10.1016/j.compeleceng.2020.106656
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subjects Artificial neural networks
Convolutional neural network
Data analytics
Datasets
Deep feature
Deep neural network
Image classification
Image filters
Intelligent filtering system
Medical imaging
Neural networks
title Deep feature learnt by conventional deep neural network
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