xmindflow/Awesome-Implicit-Neural-Representations-in-Medical-imaging
[ICCV 2023] A curated list of resources on implicit neural representations in Medical Imaging
This resource provides a curated collection of research papers focused on using Implicit Neural Representations (INRs) in medical imaging. It helps medical imaging researchers and practitioners understand how INRs can improve tasks like image reconstruction, segmentation, and registration. By reviewing this list, users can discover methods that offer memory efficiency, unlimited resolution, and effective data usage for developing advanced medical systems.
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Use this if you are a medical imaging researcher or a clinician interested in the latest advancements in AI for processing and analyzing medical scans like CTs, MRIs, and ultrasounds.
Not ideal if you are looking for ready-to-use software tools or a beginner's guide to medical imaging or machine learning fundamentals.
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Dec 06, 2023
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