DTCTH: a discriminative local pattern descriptor for image classification

Abstract Despite lots of effort being exerted in designing feature descriptors, it is still challenging to find generalized feature descriptors, with acceptable discrimination ability, which are able to capture prominent features in various image processing applications. To address this issue, we pr...

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Main Authors: Md. Mostafijur Rahman, Shanto Rahman, Rayhanur Rahman, B. M. Mainul Hossain, Mohammad Shoyaib
Format: Article
Language:English
Published: SpringerOpen 2017-04-01
Series:EURASIP Journal on Image and Video Processing
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13640-017-0178-1
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spelling doaj-a54ad7f0d6224b62af076d7f648a1f8f2020-11-25T00:53:53ZengSpringerOpenEURASIP Journal on Image and Video Processing1687-52812017-04-012017112410.1186/s13640-017-0178-1DTCTH: a discriminative local pattern descriptor for image classificationMd. Mostafijur Rahman0Shanto Rahman1Rayhanur Rahman2B. M. Mainul Hossain3Mohammad Shoyaib4Institute of Information Technology, University of DhakaInstitute of Information Technology, University of DhakaInstitute of Information Technology, University of DhakaInstitute of Information Technology, University of DhakaInstitute of Information Technology, University of DhakaAbstract Despite lots of effort being exerted in designing feature descriptors, it is still challenging to find generalized feature descriptors, with acceptable discrimination ability, which are able to capture prominent features in various image processing applications. To address this issue, we propose a computationally feasible discriminative ternary census transform histogram (DTCTH) for image representation which uses dynamic thresholds to perceive the key properties of a feature descriptor. The code produced by DTCTH is more stable against intensity fluctuation, and it mainly captures the discriminative structural properties of an image by suppressing unnecessary background information. Thus, DTCTH becomes more generalized to be used in different applications with reasonable accuracies. To validate the generalizability of DTCTH, we have conducted rigorous experiments on five different applications considering nine benchmark datasets. The experimental results demonstrate that DTCTH performs as high as 28.08% better than the existing state-of-the-art feature descriptors such as GIST, SIFT, HOG, LBP, CLBP, OC-LBP, LGP, LTP, LAID, and CENTRIST.http://link.springer.com/article/10.1186/s13640-017-0178-1Discrimination abilityEvent classificationExpression recognitionImage classificationLeaf classificationNoise adaptive
collection DOAJ
language English
format Article
sources DOAJ
author Md. Mostafijur Rahman
Shanto Rahman
Rayhanur Rahman
B. M. Mainul Hossain
Mohammad Shoyaib
spellingShingle Md. Mostafijur Rahman
Shanto Rahman
Rayhanur Rahman
B. M. Mainul Hossain
Mohammad Shoyaib
DTCTH: a discriminative local pattern descriptor for image classification
EURASIP Journal on Image and Video Processing
Discrimination ability
Event classification
Expression recognition
Image classification
Leaf classification
Noise adaptive
author_facet Md. Mostafijur Rahman
Shanto Rahman
Rayhanur Rahman
B. M. Mainul Hossain
Mohammad Shoyaib
author_sort Md. Mostafijur Rahman
title DTCTH: a discriminative local pattern descriptor for image classification
title_short DTCTH: a discriminative local pattern descriptor for image classification
title_full DTCTH: a discriminative local pattern descriptor for image classification
title_fullStr DTCTH: a discriminative local pattern descriptor for image classification
title_full_unstemmed DTCTH: a discriminative local pattern descriptor for image classification
title_sort dtcth: a discriminative local pattern descriptor for image classification
publisher SpringerOpen
series EURASIP Journal on Image and Video Processing
issn 1687-5281
publishDate 2017-04-01
description Abstract Despite lots of effort being exerted in designing feature descriptors, it is still challenging to find generalized feature descriptors, with acceptable discrimination ability, which are able to capture prominent features in various image processing applications. To address this issue, we propose a computationally feasible discriminative ternary census transform histogram (DTCTH) for image representation which uses dynamic thresholds to perceive the key properties of a feature descriptor. The code produced by DTCTH is more stable against intensity fluctuation, and it mainly captures the discriminative structural properties of an image by suppressing unnecessary background information. Thus, DTCTH becomes more generalized to be used in different applications with reasonable accuracies. To validate the generalizability of DTCTH, we have conducted rigorous experiments on five different applications considering nine benchmark datasets. The experimental results demonstrate that DTCTH performs as high as 28.08% better than the existing state-of-the-art feature descriptors such as GIST, SIFT, HOG, LBP, CLBP, OC-LBP, LGP, LTP, LAID, and CENTRIST.
topic Discrimination ability
Event classification
Expression recognition
Image classification
Leaf classification
Noise adaptive
url http://link.springer.com/article/10.1186/s13640-017-0178-1
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AT rayhanurrahman dtcthadiscriminativelocalpatterndescriptorforimageclassification
AT bmmainulhossain dtcthadiscriminativelocalpatterndescriptorforimageclassification
AT mohammadshoyaib dtcthadiscriminativelocalpatterndescriptorforimageclassification
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