Author:
Khudhair Kifah T,Najjar Fallah H,Waheed Safa Riyadh,Al-Jawahry Hassan M,Alwan Haneen H,Al-khaykan Ameer
Abstract
Abstract
Medical images are a specific type of image that can be used to diagnose disease in patients. Critical uses for medical images can be found in many different areas of medicine and healthcare technology. Generally, the medical images produced by these imaging methods have low contrast. As a result, such types of images need immediate and fast enhancement. This paper introduced a novel image enhancement methodology based on the Laplacian filter, contrast limited adaptive histogram equalization, and an adjustment algorithm. Two image datasets were used to test the proposed method: The DRIVE dataset, forty images from the COVID-19 Radiography Database, endometrioma-11, normal-brain-MRI-6, and simple-breast-cyst-2. In addition, we used the robust MATLAB package to evaluate our proposed algorithm’s efficacy. The results are compared quantitatively, and their efficacy is assessed using four metrics: Peak Signal to Noise Ratio (PSNR), Mean Square Error (MSE), Contrast to Noise Ratio (CNR), and Entropy (Ent). The experiments show that the proposed method yields improved images of higher quality than those obtained from state-of-the-art techniques regarding MSE, CNR, PSNR, and Ent metrics.
Subject
Computer Science Applications,History,Education
Reference34 articles.
1. Multifocus watermarking approach based on discrete cosine transform;Waheed;Microscopy Research and Technique,2016
2. A review on medical image denoising algorithms;Sagheer;Biomedical signal processing and control,2020
3. Antibacterial activity of decahedral cinnamon nanoparticles prepared in honey using PLAL technique.;Salim;Materials Letters,2018
4. A review on iot based medical imaging technology for healthcare applications;Chandy;Journal of Innovative Image Processing (JIIP),2019
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