mrFahrenhiet/CrackSegmentationDeepLearning

Multiscale Attention Based Efficient U-Net for Crack Segmentation, segments a RGB image into 2 classes crack and non-crack, this method obtained SOTA results on Crack500 dataset

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Python

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Oct 15, 2022

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