Rokib-Hasan-Oli/CSE445_Sec6_Machine_Learning_Project
This project focuses on image super-resolution using machine learning. The goal is to collect 100 random images from the internet, reduce their resolution using blurring or undersampling, and then build a machine learning model to restore the images to their original quality
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Mar 15, 2026
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