shreyanshxt/Mlunet-Brain-Tumor-Segmentation
A deep learning–based brain tumor detection framework for MRI scans using an Attention-Enhanced ML-UNet architecture. The model integrates **multi-level feature extraction**, **attention-guided skip connections**, and **hierarchical feature fusion** to accurately localize tumor regions while preserving fine-grained spatial details.
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Jan 28, 2026
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