CrackUDA: Incremental Unsupervised Domain Adaptation for Improved Crack Segmentation in Civil Structures
Crack segmentation plays a crucial role in ensuring the structural integrity and seismic safety of civil structures. However, existing crack segmentation algorithms encounter challenges in maintaining accuracy with domain shifts across datasets. To address this issue, we propose a novel deep network...
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Zusammenfassung: | Crack segmentation plays a crucial role in ensuring the structural integrity
and seismic safety of civil structures. However, existing crack segmentation
algorithms encounter challenges in maintaining accuracy with domain shifts
across datasets. To address this issue, we propose a novel deep network that
employs incremental training with unsupervised domain adaptation (UDA) using
adversarial learning, without a significant drop in accuracy in the source
domain. Our approach leverages an encoder-decoder architecture, consisting of
both domain-invariant and domain-specific parameters. The encoder learns shared
crack features across all domains, ensuring robustness to domain variations.
Simultaneously, the decoder's domain-specific parameters capture
domain-specific features unique to each domain. By combining these components,
our model achieves improved crack segmentation performance. Furthermore, we
introduce BuildCrack, a new crack dataset comparable to sub-datasets of the
well-established CrackSeg9K dataset in terms of image count and crack
percentage. We evaluate our proposed approach against state-of-the-art UDA
methods using different sub-datasets of CrackSeg9K and our custom dataset. Our
experimental results demonstrate a significant improvement in crack
segmentation accuracy and generalization across target domains compared to
other UDA methods - specifically, an improvement of 0.65 and 2.7 mIoU on source
and target domains respectively. |
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DOI: | 10.48550/arxiv.2412.15637 |