by Haleem, MS, Liangxiu Han, van Hemert, J, Baihua Li and Fleming, A
Abstract:
Scanning laser ophthalmoscopes (SLOs) can be used for early detection of retinal diseases. With the advent of latest screening technology, the advantage of using SLO is its wide field of view, which can image a large part of the retina for better diagnosis of the retinal diseases. On the other hand, during the imaging process, artefacts such as eyelashes and eyelids are also imaged along with the retinal area. This brings a big challenge on how to exclude these artefacts. In this paper, we propose a novel approach to automatically extract out true retinal area from an SLO image based on image processing and machine learning approaches. To reduce the complexity of image processing tasks and provide a convenient primitive image pattern, we have grouped pixels into different regions based on the regional size and compactness, called superpixels. The framework then calculates image based features reflecting textural and structural information and classifies between retinal area and artefacts. The experimental evaluation results have shown good performance with an overall accuracy of 92%.
Reference:
Retinal Area Detector From Scanning Laser Ophthalmoscope Images for Diagnosing Retinal Diseases (Haleem, MS, Liangxiu Han, van Hemert, J, Baihua Li and Fleming, A), In IEEE J Biomed Health Inform, volume 19, 2015.
Bibtex Entry:
@article{Haleem2015aa,
abstract = {Scanning laser ophthalmoscopes (SLOs) can be used for early detection of retinal diseases. With the advent of latest screening technology, the advantage of using SLO is its wide field of view, which can image a large part of the retina for better diagnosis of the retinal diseases. On the other hand, during the imaging process, artefacts such as eyelashes and eyelids are also imaged along with the retinal area. This brings a big challenge on how to exclude these artefacts. In this paper, we propose a novel approach to automatically extract out true retinal area from an SLO image based on image processing and machine learning approaches. To reduce the complexity of image processing tasks and provide a convenient primitive image pattern, we have grouped pixels into different regions based on the regional size and compactness, called superpixels. The framework then calculates image based features reflecting textural and structural information and classifies between retinal area and artefacts. The experimental evaluation results have shown good performance with an overall accuracy of 92\%.},
author = {Haleem, MS and Liangxiu Han and van Hemert, J and Baihua Li and Fleming, A},
doi = {10.1109/JBHI2014.2352271},
issn = {2168-94},
journal = {IEEE J Biomed Health Inform},
keywords = {retinal imaging},
number = {4},
pages = {1472--82},
title = {Retinal Area Detector From Scanning Laser Ophthalmoscope Images for Diagnosing Retinal Diseases},
volume = {19},
year = {2015},
bdsk-url-1 = {http://dx.doi.org/10.1109/JBHI2014.2352271}}