leen449/2026-GP1-Group7
CrashLens is a graduation project that applies computer vision and deep learning techniques to vehicle damage assessment. The system analyzes accident images to detect damage, classify severity levels, and estimate repair costs, supporting faster and more consistent preliminary evaluations. The project focuses on practical dataset experimentation,
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Mar 17, 2026
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