A Multi-Column Deep Framework for Recognizing Artistic Media
We present a multi-column structured framework for recognizing artistic media from artwork images. We design the column of our framework using a deep neural network. Our key idea is to recognize the distinctive stroke texture of an artistic medium, which plays a key role in distinguishing artistic m...
Main Authors: | , |
---|---|
Format: | Article |
Language: | English |
Published: |
MDPI AG
2019-11-01
|
Series: | Electronics |
Subjects: | |
Online Access: | https://www.mdpi.com/2079-9292/8/11/1277 |
id |
doaj-61027e3ee85d4538a632248bc68eece2 |
---|---|
record_format |
Article |
spelling |
doaj-61027e3ee85d4538a632248bc68eece22020-11-25T02:36:22ZengMDPI AGElectronics2079-92922019-11-01811127710.3390/electronics8111277electronics8111277A Multi-Column Deep Framework for Recognizing Artistic MediaHeekyung Yang0Kyungha Min1Industry-Academy Collaboration Foundation, Sangmyung University, Seoul 03016, KoreaDepartment of Computer Science, Sangmyung University, Seoul 0306, KoreaWe present a multi-column structured framework for recognizing artistic media from artwork images. We design the column of our framework using a deep neural network. Our key idea is to recognize the distinctive stroke texture of an artistic medium, which plays a key role in distinguishing artistic media. Since stroke texture is in a local scale, the whole image is not proper for recognizing the texture. Therefore, we devise two ideas for our framework: Sampling patches from an input image and employing a Gram matrix to extract the texture. The patches sampled from an input artwork image are processed in the columns of our framework to make local decisions on the patch, and the local decisions from the patches are merged to make a final decision for the input artwork image. Furthermore, we employ a Gram matrix, which is known to effectively capture texture information, to improve the accuracy of recognition. Our framework is trained and tested using two real artwork image datasets: <i>WikiSet</i> of traditional artwork images and <i>YMSet</i> of contemporary artwork images. Finally, we build <i>SynthSet</i>, which is a collection of synthesized artwork images from many computer graphics literature, and propose a guideline for evaluating the synthesized artwork images.https://www.mdpi.com/2079-9292/8/11/1277media recognitionmulti-column frameworkcnndeep learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Heekyung Yang Kyungha Min |
spellingShingle |
Heekyung Yang Kyungha Min A Multi-Column Deep Framework for Recognizing Artistic Media Electronics media recognition multi-column framework cnn deep learning |
author_facet |
Heekyung Yang Kyungha Min |
author_sort |
Heekyung Yang |
title |
A Multi-Column Deep Framework for Recognizing Artistic Media |
title_short |
A Multi-Column Deep Framework for Recognizing Artistic Media |
title_full |
A Multi-Column Deep Framework for Recognizing Artistic Media |
title_fullStr |
A Multi-Column Deep Framework for Recognizing Artistic Media |
title_full_unstemmed |
A Multi-Column Deep Framework for Recognizing Artistic Media |
title_sort |
multi-column deep framework for recognizing artistic media |
publisher |
MDPI AG |
series |
Electronics |
issn |
2079-9292 |
publishDate |
2019-11-01 |
description |
We present a multi-column structured framework for recognizing artistic media from artwork images. We design the column of our framework using a deep neural network. Our key idea is to recognize the distinctive stroke texture of an artistic medium, which plays a key role in distinguishing artistic media. Since stroke texture is in a local scale, the whole image is not proper for recognizing the texture. Therefore, we devise two ideas for our framework: Sampling patches from an input image and employing a Gram matrix to extract the texture. The patches sampled from an input artwork image are processed in the columns of our framework to make local decisions on the patch, and the local decisions from the patches are merged to make a final decision for the input artwork image. Furthermore, we employ a Gram matrix, which is known to effectively capture texture information, to improve the accuracy of recognition. Our framework is trained and tested using two real artwork image datasets: <i>WikiSet</i> of traditional artwork images and <i>YMSet</i> of contemporary artwork images. Finally, we build <i>SynthSet</i>, which is a collection of synthesized artwork images from many computer graphics literature, and propose a guideline for evaluating the synthesized artwork images. |
topic |
media recognition multi-column framework cnn deep learning |
url |
https://www.mdpi.com/2079-9292/8/11/1277 |
work_keys_str_mv |
AT heekyungyang amulticolumndeepframeworkforrecognizingartisticmedia AT kyunghamin amulticolumndeepframeworkforrecognizingartisticmedia AT heekyungyang multicolumndeepframeworkforrecognizingartisticmedia AT kyunghamin multicolumndeepframeworkforrecognizingartisticmedia |
_version_ |
1724800557220102144 |