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Designing a Hybrid Neural System to Learn Real-world Crack Segmentation from Fractal-based Simulation

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Identification of cracks is essential to assess the structural integrity of concrete infrastructure. However, robust crack segmentation remains a challenging task for computer vision systems due to the diverse appearance of concrete surfaces, variable lighting and weather conditions, and the overlapping of different defects. In particular recent data-driven methods struggle with the limited availability of data, the fine-grained and time-consuming nature of crack annotation, and face subsequent difficulty in generalizing to out-of-distribution samples. In this work, we move past these challenges in a two-fold way. We introduce a high-fidelity crack graphics simulator based on fractals and a corresponding fully-annotated crack dataset. We then complement the latter with a system that learns generalizable representations from simulation, by leveraging both a pointwise mutual information estimate along with adaptive instance normalization as inductive biases. Finally, we empirically highlight how different design choices are symbiotic in bridging the simulation to real gap, and ultimately demonstrate that our introduced system can effectively handle real-world crack segmentation.

Achref Jaziri, Martin Mundt, Andres Fernandez Rodriguez, Visvanathan Ramesh• 2023

Related benchmarks

TaskDatasetResultRank
Belt Crack DetectionBeltCrack14ks
mAP5064.33
14
Belt Crack DetectionBeltCrack 9kd
mAP5024.87
14
Industrial Belt Crack DetectionBeltCrack14ks (test)
mAP5064.33
13
Crack SegmentationCRACK500
mIoU78.76
11
Crack SegmentationCrackMap
mIoU79.78
11
Crack SegmentationTUT
mIoU81.9
11
Crack SegmentationEfficiency Analysis Profile 256x256 (test)
Parameters29.58
11
Crack SegmentationDeepCrack
mIoU83.5
11
SegmentationGeoCrack
ODS82.16
9
SegmentationLineaMapper
ODS86.07
9
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