vish15wa/CSE623_Learning_Machines
This project develops a Machine Learning system to automatically count decorative stones on embroidered fabrics using high-resolution images. It distinguishes stones from embroidery and zari work, reducing manual verification time, minimizing human error, and providing buyers with accurate, reliable stone counts.
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Mar 17, 2026
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