A Novel Method for Enhancing Retinal Images using Vesselness

Rajwinder Kaur, R. Brar, G. Jagdev
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Abstract

The motive of image enhancement is to focus on highlighting the hidden details of the image and removing the noise from the image. The research paper conducts the enhancement of the retinal images via CLAHE and four Morphological Operations (MOs). The Digital Retinal Images for Vessel Extraction (DRIVE) dataset of retinal images is used to conduct the research work. The extraction of the vessel profile spontaneously from the retinal images is a significant step in analyzing the retinal images. The proposed method conducted vesselness of retinal images at three different scales of 0.5, 1.0, and 1.5 for both colored and grayscale images. The proposed method makes use of Gaussian kernels to calculate Eigenvectors and eigenvalues, Histogram Equalization and Median filter to enhance the images, Gaussian filter to remove noise, and power law to sharpen the output image. The proposed method is more robust as compared to CLAHE and MOs. The enhancement achieved by the proposed methodology outperformed the enhancement achieved by CLAHE and morphological operations. The average PSNR of the proposed method is 57.39dB as compared to 36.11dB and 50.68dB for CLAHE and MOs respectively. The average value of MSE and RMSE for the proposed method is 0.3454 and 0.5872 as compared to 3.9919 and 1.997 for CLAHE and 0.7454 and 0.8633 for MOs respectively. The suggested approach can serve as an effective preprocessing tool for segmenting and classifying the DR-related feature methods. The authenticity of the work done is justified by calculating the values of PSNR (Peak Signal Noise Ratio), MSE (Mean Square Error), and RMSE (Root Mean Square Error) in each case which are used as performance evaluation metrics.
一种利用血管增强视网膜图像的新方法
图像增强的目的是突出图像中隐藏的细节,去除图像中的噪声。本文通过CLAHE和四种形态学操作(MOs)对视网膜图像进行增强。利用视网膜图像的数字血管提取(DRIVE)数据集进行研究工作。从视网膜图像中自然提取血管轮廓是视网膜图像分析的重要步骤。该方法对彩色和灰度图像在0.5、1.0和1.5三个不同尺度下的视网膜图像进行血管性分析。该方法利用高斯核计算特征向量和特征值,利用直方图均衡化和中值滤波增强图像,利用高斯滤波去除噪声,利用幂律锐化输出图像。与CLAHE和MOs相比,该方法具有更强的鲁棒性。该方法的增强效果优于CLAHE和形态学操作。该方法的平均PSNR为57.39dB,而CLAHE和MOs的平均PSNR分别为36.11dB和50.68dB。该方法的MSE和RMSE均值分别为0.3454和0.5872,而CLAHE方法的MSE和RMSE均值分别为3.9919和1.997,MOs方法的MSE和RMSE均值分别为0.7454和0.8633。该方法可以作为一种有效的预处理工具,用于dr相关特征方法的分割和分类。通过计算PSNR(峰值信噪比)、MSE(均方误差)和RMSE(均方根误差)的值来证明所做工作的真实性,这些值被用作性能评估指标。
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