This repo contains the code for converting an RGB mask into a onehot encoded mask or a single channel grayscale mask, which can be easily used for multiclass segmentation.
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Updated
Jul 4, 2021 - Python
This repo contains the code for converting an RGB mask into a onehot encoded mask or a single channel grayscale mask, which can be easily used for multiclass segmentation.
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This is a repo to organize the tool use for multiclass semantic segmentation. Anyone who wishes to create a semantic segmentation for multiple classes can use this guideline. All the annotated image are saved in grayscale format.
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