Exudates and Blood Vessel Segmentation in Eye Fundus Images Using the Fourier and Cosine Discrete Transforms
Abstract This paper presents a new method using discrete transforms to segment blood vessels and exudates in eye fundus color images. To obtain the desired segmentation, an illumination correction is previously done based on a homomorphic filter because of the uneven illuminance in the eye fundus image. To distinguish foreground objects from the background, we propose a super-Gaussian bandpass filter in the discrete cosine transform (DCT) domain. These filters are applied on the green channel that contains information to segment pathologies. To segment exudates in the filtered DCT image, a gamma correction is applied to enhance foreground objects; in the resulting image, the Otsu's global threshold method is applied, after which, a masking operation over the effective area of the eye fundus image is performed to obtain the final segmentation of exudates. In the case of blood vessels, the negative of the image filtered with DCT is first calculated, then a median filter is applied to reduce noise and artifacts, followed by a gamma correction. Again, the Otsu's global threshold method is used for binarization, next a morphological closing operation is employed, and a masking operation gives the corresponding final segmentation. Illustrative examples taken from a free clinical database are included to demonstrate the capability of the proposed methods.
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Instituto Politécnico Nacional, Centro de Investigación en Computación
2016
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oai:scielo:S1405-554620160004006972017-11-07Exudates and Blood Vessel Segmentation in Eye Fundus Images Using the Fourier and Cosine Discrete TransformsLara Rodríguez,Luis DavidUrcid Serrano,Gonzalo Discrete cosine transform eye fundus images segmentation super-Gaussian filter Abstract This paper presents a new method using discrete transforms to segment blood vessels and exudates in eye fundus color images. To obtain the desired segmentation, an illumination correction is previously done based on a homomorphic filter because of the uneven illuminance in the eye fundus image. To distinguish foreground objects from the background, we propose a super-Gaussian bandpass filter in the discrete cosine transform (DCT) domain. These filters are applied on the green channel that contains information to segment pathologies. To segment exudates in the filtered DCT image, a gamma correction is applied to enhance foreground objects; in the resulting image, the Otsu's global threshold method is applied, after which, a masking operation over the effective area of the eye fundus image is performed to obtain the final segmentation of exudates. In the case of blood vessels, the negative of the image filtered with DCT is first calculated, then a median filter is applied to reduce noise and artifacts, followed by a gamma correction. Again, the Otsu's global threshold method is used for binarization, next a morphological closing operation is employed, and a masking operation gives the corresponding final segmentation. Illustrative examples taken from a free clinical database are included to demonstrate the capability of the proposed methods.info:eu-repo/semantics/openAccessInstituto Politécnico Nacional, Centro de Investigación en ComputaciónComputación y Sistemas v.20 n.4 20162016-12-01info:eu-repo/semantics/articletext/htmlhttp://www.scielo.org.mx/scielo.php?script=sci_arttext&pid=S1405-55462016000400697en10.13053/cys-20-4-2305 |
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Lara Rodríguez,Luis David Urcid Serrano,Gonzalo |
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Lara Rodríguez,Luis David Urcid Serrano,Gonzalo Exudates and Blood Vessel Segmentation in Eye Fundus Images Using the Fourier and Cosine Discrete Transforms |
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Lara Rodríguez,Luis David Urcid Serrano,Gonzalo |
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Lara Rodríguez,Luis David |
title |
Exudates and Blood Vessel Segmentation in Eye Fundus Images Using the Fourier and Cosine Discrete Transforms |
title_short |
Exudates and Blood Vessel Segmentation in Eye Fundus Images Using the Fourier and Cosine Discrete Transforms |
title_full |
Exudates and Blood Vessel Segmentation in Eye Fundus Images Using the Fourier and Cosine Discrete Transforms |
title_fullStr |
Exudates and Blood Vessel Segmentation in Eye Fundus Images Using the Fourier and Cosine Discrete Transforms |
title_full_unstemmed |
Exudates and Blood Vessel Segmentation in Eye Fundus Images Using the Fourier and Cosine Discrete Transforms |
title_sort |
exudates and blood vessel segmentation in eye fundus images using the fourier and cosine discrete transforms |
description |
Abstract This paper presents a new method using discrete transforms to segment blood vessels and exudates in eye fundus color images. To obtain the desired segmentation, an illumination correction is previously done based on a homomorphic filter because of the uneven illuminance in the eye fundus image. To distinguish foreground objects from the background, we propose a super-Gaussian bandpass filter in the discrete cosine transform (DCT) domain. These filters are applied on the green channel that contains information to segment pathologies. To segment exudates in the filtered DCT image, a gamma correction is applied to enhance foreground objects; in the resulting image, the Otsu's global threshold method is applied, after which, a masking operation over the effective area of the eye fundus image is performed to obtain the final segmentation of exudates. In the case of blood vessels, the negative of the image filtered with DCT is first calculated, then a median filter is applied to reduce noise and artifacts, followed by a gamma correction. Again, the Otsu's global threshold method is used for binarization, next a morphological closing operation is employed, and a masking operation gives the corresponding final segmentation. Illustrative examples taken from a free clinical database are included to demonstrate the capability of the proposed methods. |
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Instituto Politécnico Nacional, Centro de Investigación en Computación |
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2016 |
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http://www.scielo.org.mx/scielo.php?script=sci_arttext&pid=S1405-55462016000400697 |
work_keys_str_mv |
AT lararodriguezluisdavid exudatesandbloodvesselsegmentationineyefundusimagesusingthefourierandcosinediscretetransforms AT urcidserranogonzalo exudatesandbloodvesselsegmentationineyefundusimagesusingthefourierandcosinediscretetransforms |
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