mirzayasirabdullahbaig07/Tumor-Detection-Model-Using-YOLOV11-And-SAM2
A cutting-edge deep learning project that combines YOLOv11 (for real-time object detection) with SAM2 (Segment Anything Model) to accurately detect and segment tumors in medical images. Designed for high precision in healthcare diagnostics and research applications.
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Python
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Last pushed
Feb 26, 2026
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