qupath
Bioimage processor
An open-source software framework for image analysis and processing in bioimaging research.
QuPath - Open-source bioimage analysis for research
1k stars
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284 forks
Language: Java
last commit: 3 months ago
Linked from 1 awesome list
bioimage-analysisbioimage-informaticscell-analysiscell-segmentationcomputational-pathologydigital-pathologygroovyhistologyimage-processingimagejjavafxmachine-learningopencvpathologytissue-microarray-analysiswhole-slide-imaging
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