AabuYousufRaj1552/Predicting-Real-Time-Traffic-and-Congestion-Hotspots-in-Dhaka-City
A machine learning research project analyzing traffic patterns in Dhaka City using deep learning models. Features comparative analysis of CNN, ResNet50, MobileNetV2, and EfficientNetB0 architectures. Includes performance metrics, confusion matrices, ROC curves, and academic publication materials.
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MIT
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Last pushed
Feb 19, 2026
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