THE FOURIER TRANSFORM BASED DESCRIPTOR FOR VISUAL OBJECT CLASSIFICATION

Most of the state-of-arts visual object classification methods use image representations such as bag of words (BoW) or Fisher vector (FV) models, which are built depend on encoding local features. In that context, local patches sampled from images are represented by different shape and texture descr...

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Main Authors: Hakan CEVIKALP, Zuhal KURT
Format: Article
Language:English
Published: Anadolu University 2017-03-01
Series:Anadolu University Journal of Science and Technology. A : Applied Sciences and Engineering
Online Access:http://dergipark.gov.tr/aubtda/issue/28283/300419?publisher=anadolu
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spelling doaj-7e8992917b6b46a69639bcab1c061ec82020-11-24T22:34:55ZengAnadolu UniversityAnadolu University Journal of Science and Technology. A : Applied Sciences and Engineering1302-31602146-02052017-03-0118124726110.18038/aubtda.30041926THE FOURIER TRANSFORM BASED DESCRIPTOR FOR VISUAL OBJECT CLASSIFICATIONHakan CEVIKALPZuhal KURTMost of the state-of-arts visual object classification methods use image representations such as bag of words (BoW) or Fisher vector (FV) models, which are built depend on encoding local features. In that context, local patches sampled from images are represented by different shape and texture descriptors such as SIFT, LBP, SURF, etc. In this study, we define a new descriptor depend on weighted histograms of phase angles of local 2-D discrete Fourier transform (FT). We make comparison with the classification accuracies achieved by using the proposed descriptor to the ones obtained by other commonly used descriptors on Caltech 4, Caltech-101, Coil-100 and PASCAL VOC 2007 data sets. Experimental results show that our proposed descriptor provides good accuracies (the best results on Caltech-4 and Coil-100, and the second best result on Caltech-101 and PASCAL VOC 2007 datasets) reporting that FT based local descriptor obtain major belongings of images that are valuable for visual object classification. The combination of image representations resulting from FT descriptor with the representations is achieved by other descriptors, results even get better put forwarding that tested descriptors encode different supplementary knowledge.http://dergipark.gov.tr/aubtda/issue/28283/300419?publisher=anadolu
collection DOAJ
language English
format Article
sources DOAJ
author Hakan CEVIKALP
Zuhal KURT
spellingShingle Hakan CEVIKALP
Zuhal KURT
THE FOURIER TRANSFORM BASED DESCRIPTOR FOR VISUAL OBJECT CLASSIFICATION
Anadolu University Journal of Science and Technology. A : Applied Sciences and Engineering
author_facet Hakan CEVIKALP
Zuhal KURT
author_sort Hakan CEVIKALP
title THE FOURIER TRANSFORM BASED DESCRIPTOR FOR VISUAL OBJECT CLASSIFICATION
title_short THE FOURIER TRANSFORM BASED DESCRIPTOR FOR VISUAL OBJECT CLASSIFICATION
title_full THE FOURIER TRANSFORM BASED DESCRIPTOR FOR VISUAL OBJECT CLASSIFICATION
title_fullStr THE FOURIER TRANSFORM BASED DESCRIPTOR FOR VISUAL OBJECT CLASSIFICATION
title_full_unstemmed THE FOURIER TRANSFORM BASED DESCRIPTOR FOR VISUAL OBJECT CLASSIFICATION
title_sort fourier transform based descriptor for visual object classification
publisher Anadolu University
series Anadolu University Journal of Science and Technology. A : Applied Sciences and Engineering
issn 1302-3160
2146-0205
publishDate 2017-03-01
description Most of the state-of-arts visual object classification methods use image representations such as bag of words (BoW) or Fisher vector (FV) models, which are built depend on encoding local features. In that context, local patches sampled from images are represented by different shape and texture descriptors such as SIFT, LBP, SURF, etc. In this study, we define a new descriptor depend on weighted histograms of phase angles of local 2-D discrete Fourier transform (FT). We make comparison with the classification accuracies achieved by using the proposed descriptor to the ones obtained by other commonly used descriptors on Caltech 4, Caltech-101, Coil-100 and PASCAL VOC 2007 data sets. Experimental results show that our proposed descriptor provides good accuracies (the best results on Caltech-4 and Coil-100, and the second best result on Caltech-101 and PASCAL VOC 2007 datasets) reporting that FT based local descriptor obtain major belongings of images that are valuable for visual object classification. The combination of image representations resulting from FT descriptor with the representations is achieved by other descriptors, results even get better put forwarding that tested descriptors encode different supplementary knowledge.
url http://dergipark.gov.tr/aubtda/issue/28283/300419?publisher=anadolu
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