Machine Learning: Advanced Image Segmentation Using ilastik.

COMPUTER OPTIMIZED MICROSCOPY: METHODS AND PROTOCOLS(2019)

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摘要
Segmentation is one of the most ubiquitous problems in biological image analysis. Here we present a machine learning-based solution to it as implemented in the open source ilastik toolkit. We give a broad description of the underlying theory and demonstrate two workflows: Pixel Classification and Autocontext. We illustrate their use on a challenging problem in electron microscopy image segmentation. After following this walk-through, we expect the readers to be able to apply the necessary steps to their own data and segment their images by either workflow.
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关键词
Machine learning,Random forest,Semantic segmentation,ilastik
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