%A S. Bashir %A K. Rohail %A F. Sadak %A M.U. Hadi %A A. Muneer %A M.G. Ragab %A M. Awais %A R. Qureshi %I Institute of Electrical and Electronics Engineers Inc. %T Exploring the Impact of Preprocessing Techniques on Retinal Blood Vessel Segmentation Using a Study Group Learning Scheme %R 10.1109/SPMB59478.2023.10372702 %D 2023 %L scholars18966 %J 2023 IEEE Signal Processing in Medicine and Biology Symposium, SPMB 2023 - Proceedings %O cited By 0; Conference of 2023 IEEE Signal Processing in Medicine and Biology Symposium, SPMB 2023 ; Conference Date: 2 December 2023; Conference Code:196065 %X The segmentation of retinal vessels in retinal images is vital for automated diagnosis of retinal diseases. This is a challenging task because it requires accurate manual labeling of the vessels by expert clinicians and the detection of tiny vessels is difficult due to limited samples, low contrast, and noise. In this study, we explore the use of preprocessing techniques such as contrast-limited adaptive histogram equalization (CLAHE), grad-cam analysis and min-max contrast stretching to improve the performance of a study-group learning (SGL) segmentation model. We evaluate the impact of these preprocessing techniques on the accuracy, sensitivity, specificity, AUC, IoU, and Dice scores using four publicly available datasets, DRIVE, CHASE, HRF and IOSTAR. Our findings indicate that the utilization of the Min-Max technique resulted in a notable enhancement in the accuracy of both the DRIVE and CHASE datasets, with an approximate increase of 3 and 2 respectively. Conversely, the impact of the CLAHE method was discernible solely in the DRIVE dataset, demonstrating an improvement in accuracy of 1. In addition, our results demonstrated superior accuracy performance for both the DRIVE and CHASE datasets compared to the findings of the reviewed studies. The GitHub repo for this project is available at Link. © 2023 IEEE. %K Blood vessels; Cams; Diagnosis; Image segmentation; Ophthalmology, Adaptive histograms; Contrast stretching; Contrast-limited adaptive histogram equalization; Grad-cam; Group learning; Histogram equalizations; Min max contrast stretching; Min-max; Study group learning; Study Groups; Vessel segmentation, Medical imaging