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Blurred Palmprint Recognition Based on Stable-Feature Extraction Using a Vese–Osher Decomposition Model

As palmprints are captured using non-contact devices, image blur is inevitably generated because of the defocused status. This degrades the recognition performance of the system. To solve this problem, we propose a stable-feature extraction method based on a Vese–Osher (VO) decomposition model to re...

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Autores principales: Hong, Danfeng, Su, Jian, Hong, Qinggen, Pan, Zhenkuan, Wang, Guodong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4081781/
https://www.ncbi.nlm.nih.gov/pubmed/24992328
http://dx.doi.org/10.1371/journal.pone.0101866
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author Hong, Danfeng
Su, Jian
Hong, Qinggen
Pan, Zhenkuan
Wang, Guodong
author_facet Hong, Danfeng
Su, Jian
Hong, Qinggen
Pan, Zhenkuan
Wang, Guodong
author_sort Hong, Danfeng
collection PubMed
description As palmprints are captured using non-contact devices, image blur is inevitably generated because of the defocused status. This degrades the recognition performance of the system. To solve this problem, we propose a stable-feature extraction method based on a Vese–Osher (VO) decomposition model to recognize blurred palmprints effectively. A Gaussian defocus degradation model is first established to simulate image blur. With different degrees of blurring, stable features are found to exist in the image which can be investigated by analyzing the blur theoretically. Then, a VO decomposition model is used to obtain structure and texture layers of the blurred palmprint images. The structure layer is stable for different degrees of blurring (this is a theoretical conclusion that needs to be further proved via experiment). Next, an algorithm based on weighted robustness histogram of oriented gradients (WRHOG) is designed to extract the stable features from the structure layer of the blurred palmprint image. Finally, a normalized correlation coefficient is introduced to measure the similarity in the palmprint features. We also designed and performed a series of experiments to show the benefits of the proposed method. The experimental results are used to demonstrate the theoretical conclusion that the structure layer is stable for different blurring scales. The WRHOG method also proves to be an advanced and robust method of distinguishing blurred palmprints. The recognition results obtained using the proposed method and data from two palmprint databases (PolyU and Blurred–PolyU) are stable and superior in comparison to previous high-performance methods (the equal error rate is only 0.132%). In addition, the authentication time is less than 1.3 s, which is fast enough to meet real-time demands. Therefore, the proposed method is a feasible way of implementing blurred palmprint recognition.
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spelling pubmed-40817812014-07-10 Blurred Palmprint Recognition Based on Stable-Feature Extraction Using a Vese–Osher Decomposition Model Hong, Danfeng Su, Jian Hong, Qinggen Pan, Zhenkuan Wang, Guodong PLoS One Research Article As palmprints are captured using non-contact devices, image blur is inevitably generated because of the defocused status. This degrades the recognition performance of the system. To solve this problem, we propose a stable-feature extraction method based on a Vese–Osher (VO) decomposition model to recognize blurred palmprints effectively. A Gaussian defocus degradation model is first established to simulate image blur. With different degrees of blurring, stable features are found to exist in the image which can be investigated by analyzing the blur theoretically. Then, a VO decomposition model is used to obtain structure and texture layers of the blurred palmprint images. The structure layer is stable for different degrees of blurring (this is a theoretical conclusion that needs to be further proved via experiment). Next, an algorithm based on weighted robustness histogram of oriented gradients (WRHOG) is designed to extract the stable features from the structure layer of the blurred palmprint image. Finally, a normalized correlation coefficient is introduced to measure the similarity in the palmprint features. We also designed and performed a series of experiments to show the benefits of the proposed method. The experimental results are used to demonstrate the theoretical conclusion that the structure layer is stable for different blurring scales. The WRHOG method also proves to be an advanced and robust method of distinguishing blurred palmprints. The recognition results obtained using the proposed method and data from two palmprint databases (PolyU and Blurred–PolyU) are stable and superior in comparison to previous high-performance methods (the equal error rate is only 0.132%). In addition, the authentication time is less than 1.3 s, which is fast enough to meet real-time demands. Therefore, the proposed method is a feasible way of implementing blurred palmprint recognition. Public Library of Science 2014-07-03 /pmc/articles/PMC4081781/ /pubmed/24992328 http://dx.doi.org/10.1371/journal.pone.0101866 Text en © 2014 Hong et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Hong, Danfeng
Su, Jian
Hong, Qinggen
Pan, Zhenkuan
Wang, Guodong
Blurred Palmprint Recognition Based on Stable-Feature Extraction Using a Vese–Osher Decomposition Model
title Blurred Palmprint Recognition Based on Stable-Feature Extraction Using a Vese–Osher Decomposition Model
title_full Blurred Palmprint Recognition Based on Stable-Feature Extraction Using a Vese–Osher Decomposition Model
title_fullStr Blurred Palmprint Recognition Based on Stable-Feature Extraction Using a Vese–Osher Decomposition Model
title_full_unstemmed Blurred Palmprint Recognition Based on Stable-Feature Extraction Using a Vese–Osher Decomposition Model
title_short Blurred Palmprint Recognition Based on Stable-Feature Extraction Using a Vese–Osher Decomposition Model
title_sort blurred palmprint recognition based on stable-feature extraction using a vese–osher decomposition model
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4081781/
https://www.ncbi.nlm.nih.gov/pubmed/24992328
http://dx.doi.org/10.1371/journal.pone.0101866
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