Abstract
Retinal fundus images acquired with nonmydriatic digital fundus cameras are versatile tools for the diagnosis of various retinal diseases. Because of the ease of use of newer camera models and their relatively low cost, these cameras can be employed by operators with limited training for telemedicine or point-of-care (PoC) applications. We propose a novel technique that uses uncalibrated multiple-view fundus images to analyze the swelling of the macula. This innovation enables the detection and quantitative measurement of swollen areas by remote ophthalmologists. This capability is not available with a single image and prone to error with stereo fundus cameras. We also present automatic algorithms to measure features from the reconstructed image, which are useful in PoC automated diagnosis of early macular edema, e.g., before the appearance of exudation. The technique presented is divided into three parts: first, a preprocessing technique simultaneously enhances the dark microstructures of the macula and equalizes the image; second, all available views are registered using nonmorphological sparse features; finally, a dense pyramidal optical flow is calculated for all the images and statistically combined to build a naive height map of the macula. Results are presented on three sets of synthetic images and two sets of real-world images. These preliminary tests show the ability to infer a minimum swelling of 300 μ and to correlate the reconstruction with the swollen location.
Original language | English |
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Pages (from-to) | 795-799 |
Number of pages | 5 |
Journal | IEEE Transactions on Biomedical Engineering |
Volume | 58 |
Issue number | 3 PART 2 |
DOIs | |
State | Published - Mar 2011 |
Funding
Manuscript received July 13, 2010; revised October 7, 2010; accepted November 20, 2010. Date of publication November 29, 2010; date of current version February 18, 2011. This was supported in part by the Oak Ridge National Laboratory, National Eye Institute under Grant EY017065, by an unrestricted University of Tennessee Health Science Center (UTHSC) Departmental grant from Research to Prevent Blindness (RPB), New York, NY, Fight for Sight, New York, NY, by The Plough Foundation, Memphis, TN, and by the Regional Burgundy Council, France. Asterisks indicates corresponding author.
Keywords
- Biomedical image processing
- diabetes
- image motion analysis
- image reconstruction
- image registration
- medical diagnostic imaging
- stereo image processing