Title
A location-to-segmentation strategy for automatic exudate segmentation in colour retinal fundus images.
Abstract
The automatic exudate segmentation in colour retinal fundus images is an important task in computer aided diagnosis and screening systems for diabetic retinopathy. In this paper, we present a location-to-segmentation strategy for automatic exudate segmentation in colour retinal fundus images, which includes three stages: anatomic structure removal, exudate location and exudate segmentation. In anatomic structure removal stage, matched filters based main vessels segmentation method and a saliency based optic disk segmentation method are proposed. The main vessel and optic disk are then removed to eliminate the adverse affects that they bring to the second stage. In the location stage, we learn a random forest classifier to classify patches into two classes: exudate patches and exudate-free patches, in which the histograms of completed local binary patterns are extracted to describe the texture structures of the patches. Finally, the local variance, the size prior about the exudate regions and the local contrast prior are used to segment the exudate regions out from patches which are classified as exudate patches in the location stage. We evaluate our method both at exudate-level and image-level. For exudate-level evaluation, we test our method on e-ophtha EX dataset, which provides pixel level annotation from the specialists. The experimental results show that our method achieves 76% in sensitivity and 75% in positive prediction value (PPV), which both outperform the state of the art methods significantly. For image-level evaluation, we test our method on DiaRetDB1, and achieve competitive performance compared to the state of the art methods.
Year
DOI
Venue
2017
10.1016/j.compmedimag.2016.09.001
Computerized Medical Imaging and Graphics
Keywords
Field
DocType
Diabetic retinopathy,Colour retinal fundus image,Optic disk segmentation,Exudate location,Exudate segmentation
Computer vision,Histogram,Segmentation,Computer-aided diagnosis,Local binary patterns,Fundus (eye),Optic disk,Exudate,Artificial intelligence,Random forest,Medicine
Journal
Volume
ISSN
Citations 
55
0895-6111
2
PageRank 
References 
Authors
0.40
0
7
Name
Order
Citations
PageRank
Qing Liu1193.99
Beiji Zou223141.61
Jie Chen31476.37
Wei Ke47112.11
Kejuan Yue520.74
Zailiang Chen6439.10
Guoying Zhao73767166.92