MECLabTUDA/HARP
Repository for Histopathological Artifact Restoration Pipeline
This project helps pathologists and medical researchers analyze whole slide images (WSIs) more reliably by automatically removing visual defects. You input histopathological images that might have staining inconsistencies or physical obstructions, and it outputs cleaner, restored images. This is for professionals who depend on clear, artifact-free images for accurate diagnosis or research.
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Use this if you need to improve the quality and reliability of histopathological image analysis by automatically correcting common artifacts without manual intervention.
Not ideal if you are working with non-histopathological images or require a supervised artifact restoration method where you can manually guide the correction process.
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Language
Python
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CC-BY-4.0
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Last pushed
Jun 27, 2024
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