Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Luminosity and Contrast Adjustment of Fundus Images with Reflectance

View through CrossRef
This paper presents an automatic correction method for luminosity and contrast variation in fundus images. Sixty retina or fundus images with different levels of reflectance are selected from online databases and used to assess the effectiveness of the proposed method. There are five stages in the approach, and they are image input, filtering, luminosity correction, histogram stretching and post-processing. First, a color fundus image is read as input, and its three color components, red (R), green (G) and blue (B), are separated into different channels or arrays. Next, the eye region, or the region of interest (ROI), is identified along with its border via thresholding. After that, the original ratios of red-to-green and blue-to-green for every pixel in the ROI are computed and kept together with copies of the three channels. Then, the ROI for the three channels is subjected to lowpass filtering, row-wisely in the horizontal direction and column-wisely in the vertical direction, to create a smooth background luminosity surface. This surface does not contain foreground objects such as blood vessels, optic discs, lesions, microaneurysms and others. Three lowpass filters are tested for this purpose, and their efficacy is compared. The outcome is a smooth luminosity surface that estimates the background illumination of the entire ROI. Once the background illumination is established, the luminosity is equalized for all pixels in the ROI, such that every pixel will have the same background brightness. Afterward, the histogram of the ROI is stretched or equalized to enhance the contrast between the foreground objects and the background. Next, the green channel is further improved by adding details from the blue and red channels. Finally, in the post-filtering stage, the intensities of the blue and red channels are adjusted according to their original ratios to the green channel. When all three channels are recombined, the resulting color image looks similar to the original image but shows improved luminosity and contrast. The method is tested on 60 test images. It reduces luminosity variation and increases the contrast of all images. On average, this method achieves a 30% reduction in luminosity variation and a 90% increment in contrast. The proposed method was executed on AMD 5900HS CPU using MATLAB R2021b, and the mean execution time was nearly 2 s on average.
Title: Luminosity and Contrast Adjustment of Fundus Images with Reflectance
Description:
This paper presents an automatic correction method for luminosity and contrast variation in fundus images.
Sixty retina or fundus images with different levels of reflectance are selected from online databases and used to assess the effectiveness of the proposed method.
There are five stages in the approach, and they are image input, filtering, luminosity correction, histogram stretching and post-processing.
First, a color fundus image is read as input, and its three color components, red (R), green (G) and blue (B), are separated into different channels or arrays.
Next, the eye region, or the region of interest (ROI), is identified along with its border via thresholding.
After that, the original ratios of red-to-green and blue-to-green for every pixel in the ROI are computed and kept together with copies of the three channels.
Then, the ROI for the three channels is subjected to lowpass filtering, row-wisely in the horizontal direction and column-wisely in the vertical direction, to create a smooth background luminosity surface.
This surface does not contain foreground objects such as blood vessels, optic discs, lesions, microaneurysms and others.
Three lowpass filters are tested for this purpose, and their efficacy is compared.
The outcome is a smooth luminosity surface that estimates the background illumination of the entire ROI.
Once the background illumination is established, the luminosity is equalized for all pixels in the ROI, such that every pixel will have the same background brightness.
Afterward, the histogram of the ROI is stretched or equalized to enhance the contrast between the foreground objects and the background.
Next, the green channel is further improved by adding details from the blue and red channels.
Finally, in the post-filtering stage, the intensities of the blue and red channels are adjusted according to their original ratios to the green channel.
When all three channels are recombined, the resulting color image looks similar to the original image but shows improved luminosity and contrast.
The method is tested on 60 test images.
It reduces luminosity variation and increases the contrast of all images.
On average, this method achieves a 30% reduction in luminosity variation and a 90% increment in contrast.
The proposed method was executed on AMD 5900HS CPU using MATLAB R2021b, and the mean execution time was nearly 2 s on average.

Related Results

Hydatid Disease of The Brain Parenchyma: A Systematic Review
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Abstarct Introduction Isolated brain hydatid disease (BHD) is an extremely rare form of echinococcosis. A prompt and timely diagnosis is a crucial step in disease management. This ...
Hyperspectral UV-Vis Reflectance Imaging Using UAVs for Leaf Area Index Remote Sensing
Hyperspectral UV-Vis Reflectance Imaging Using UAVs for Leaf Area Index Remote Sensing
Although ultraviolet (UV) reflectance is linked to various environmental factors, it remains underutilized in remote sensing applications. This study explores the potential of UV-v...
Fundus Image Enhancement using CLAHE
Fundus Image Enhancement using CLAHE
Fundus retinal images are crucial for ophthalmologists to diagnose diseases and monitor changes in the condition. However, due to factors such as lighting conditions, instrument ef...
Improved retinal vessel segmentation using the enhanced pre-processing method for high resolution fundus images
Improved retinal vessel segmentation using the enhanced pre-processing method for high resolution fundus images
Background: By diagnosing using fundus images, ophthalmologists can possibly detect symptoms of retinal diseases such as diabetic retinopathy, age-related macular degeneration, and...
Enhancing Retina Images by Lowpass Filtering Using Binomial Filter
Enhancing Retina Images by Lowpass Filtering Using Binomial Filter
This study presents a method to enhance the contrast and luminosity of fundus images with boundary reflection. In this work, 100 retina images taken from online databases are utili...
Retinal Fundus Image Blood Vessels Segmentation via Object-Oriented Metadata Structures
Retinal Fundus Image Blood Vessels Segmentation via Object-Oriented Metadata Structures
Retinal fundus image is a crucial tool for ophthalmologists to diagnose eye-related diseases. These images provide visual information of the interior layer of the retina structures...
Fundus geoinformation system
Fundus geoinformation system
Purpose. To develo fundus operational geoinformation system for accurate topographic identification of the pathological process characteristics. Material and methods. An opera...
Fundus Bleeding
Fundus Bleeding
Abstract Fundus bleeding, commonly known as retinal haemorrhage, is a significant ocular manifestation associated with various systemic and ocular conditions. This abstra...

Back to Top