open-solution-mapping-challenge
Image processing pipeline
This project provides a Python-based solution to the Mapping Challenge competition by applying various preprocessing techniques and augmentations to satellite imagery.
Open solution to the Mapping Challenge ![]()
382 stars
24 watching
96 forks
Language: Python
last commit: over 4 years ago
Linked from 1 awesome list
competitioncrowdaidata-sciencedata-science-learningdeep-learningkagglelightgbmmachine-learningmachine-learning-labmapping-challengeneptunepipelinepipeline-frameworkpythonsatellite-imageryunetunet-image-segmentationunet-pytorch
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