Pyxit segmentation model builder
Type
Requires
Execution Platform
Programming Language
is compatible with
Supported image dimension
Interaction Level
License/Openness
Description
This is a learnable segmentation algorithm based on ground-truth images and segmentation mask. It learns a multiple output pixel classification algorithm. It downloads from Cytomine-Core annotation images+alphamasks from project(s), build a segmentation (pixel classifier) model which is saved locally. Typical application: tumor detection in tissues in histology slides. It is based on "Fast Multi-Class Image Annotation with Random Subwindows and Multiple Output Randomized Trees" http://orbi.ulg.ac.be/handle/2268/12205 and was used in "A hybrid human-computer approach for large-scale image-based measurements using web services and machine learning" http://orbi.ulg.ac.be/handle/2268/162084?locale=en
has function
has topic
Entry Curator
Post date
02/13/2017 - 13:19
Last modified
10/18/2019 - 18:52