FRRN
Image segmentation framework
A software framework for training and evaluating full-resolution residual networks for semantic image segmentation tasks
Full Resolution Residual Networks for Semantic Image Segmentation
280 stars
24 watching
92 forks
Language: Python
last commit: over 7 years ago
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