sinAshish/Multi-Scale-Attention
[JBHI] Code for our paper "Multi-scale Guided Attention for Medical Image Segmentation"
This project helps medical professionals and researchers precisely outline structures like organs in medical scans such as MRI images. You input medical images (like MRI slices) and their corresponding expert-drawn outlines, and the system learns to automatically produce accurate segmentations of specific anatomical regions. This is ideal for radiologists, clinicians, and medical imaging researchers who need to quantify or analyze specific structures within medical images.
466 stars. No commits in the last 6 months.
Use this if you need highly accurate and automated segmentation of organs or other structures from medical images, particularly MRI scans, to assist with diagnosis, treatment planning, or research.
Not ideal if you are working with non-medical images, require real-time segmentation for intraoperative guidance, or need to segment structures beyond what current training data covers without preparing new ground truth masks.
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466
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96
Language
Python
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Last pushed
May 16, 2020
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