Topal, AhmetAydin, Mustafa2025-05-102025-05-1020241863-17031863-171110.1007/s11760-024-03542-12-s2.0-85205296590https://doi.org/10.1007/s11760-024-03542-1https://hdl.handle.net/20.500.14720/11393Aydin, Mustafa/0000-0003-0132-9636Integrating fractional calculus into image processing techniques offers a useful and robust approach. In this study, we proposed contrast enhancement filters using Prabhakar fractional integral operator based on Grunwald-Letnikov and forward Euler. We evaluated the performance of the proposed enhancement methods on both high and low contrast images and compared them with fractional and non-fractional contrast enhancement methods. To demonstrate the superiority of our methods, we employed five different image quality metrics: PSNR, MSE, SSIM, FSIM, and entropy. For low contrast images, our methods not only achieved acceptable results for each metric-PSNR values above 25, SSIM values above 0.9, MSE values below 200, FSIM values above 0.97, and entropy values above 7-but also demonstrated better performance compared to other methods. In high contrast images, despite an overall decline in metric scores, the Grunwald-Letnikov based method remains the leading approach among both fractional and non-fractional methods. Additionally, empirical results provide evidence that the proposed methods are more effective in enhancing low contrast images compared to high contrast images.eninfo:eu-repo/semantics/closedAccessPrabhakar Fractional Integral OperatorContrast EnhancementImage ProcessingA Couple of Novel Image Enhancement Methods Depending on the Prabhakar Fractional ApproachesArticle1812Q3Q292419256WOS:001322434900001