EBImage

github.com/aoles/ebimage
Idle77updated 1 year ago
R
LGPL

EBImage provides general purpose functionality for image processing and analysis. In the context of (high-throughput) microscopy-based cellular assays, EBImage offers tools to segment cells and extract quantitative cellular descriptors. This allows the automation of such tasks using the R programming language and facilitates the use of other tools in the R environment for signal processing, statistical modeling, machine learning and visualization with image data.

Sourced from

  • BioconductorEBImage
  • GitHubgithub.com/aoles/ebimage

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