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A Convolutional-Transformer Network for Crack Segmentation with Boundary Awareness

About

Cracks play a crucial role in assessing the safety and durability of manufactured buildings. However, the long and sharp topological features and complex background of cracks make the task of crack segmentation extremely challenging. In this paper, we propose a novel convolutional-transformer network based on encoder-decoder architecture to solve this challenge. Particularly, we designed a Dilated Residual Block (DRB) and a Boundary Awareness Module (BAM). The DRB pays attention to the local detail of cracks and adjusts the feature dimension for other blocks as needed. And the BAM learns the boundary features from the dilated crack label. Furthermore, the DRB is combined with a lightweight transformer that captures global information to serve as an effective encoder. Experimental results show that the proposed network performs better than state-of-the-art algorithms on two typical datasets. Datasets, code, and trained models are available for research at https://github.com/HqiTao/CT-crackseg.

Huaqi Tao, Bingxi Liu, Jinqiang Cui, Hong Zhang• 2023

Related benchmarks

TaskDatasetResultRank
Crack SegmentationCrackMap
mIoU79.93
11
Crack SegmentationEfficiency Analysis Profile 256x256 (test)
Parameters22.88
11
Crack SegmentationDeepCrack
mIoU84.25
11
Crack SegmentationTUT
mIoU81.53
11
Crack SegmentationCRACK500
mIoU77.81
11
SegmentationLineaMapper Europa (test)
ODS46.48
9
SegmentationGeoCrack
ODS81.59
9
SegmentationLineaMapper
ODS85.82
9
SegmentationLROC-Lineament
ODS68.92
9
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