AI-Based Culvert-Sewer Inspection
Christina Thrainer

TL;DR
This thesis introduces three innovative methods to improve defect segmentation in culverts and sewer pipes, addressing data scarcity and computational efficiency, with state-of-the-art results demonstrated on relevant datasets.
Contribution
It proposes a novel architecture called FORTRESS, advanced preprocessing techniques, and applies few-shot learning for defect detection with limited data.
Findings
Preprocessing strategies improve segmentation metrics significantly.
FORTRESS achieves state-of-the-art performance with fewer parameters.
Few-shot learning yields satisfactory defect detection results.
Abstract
Culverts and sewer pipes are critical components of drainage systems, and their failure can lead to serious risks to public safety and the environment. In this thesis, we explore methods to improve automated defect segmentation in culverts and sewer pipes. Collecting and annotating data in this field is cumbersome and requires domain knowledge. Having a large dataset for structural defect detection is therefore not feasible. Our proposed methods are tested under conditions with limited annotated data to demonstrate applicability to real-world scenarios. Overall, this thesis proposes three methods to significantly enhance defect segmentation and handle data scarcity. This can be addressed either by enhancing the training data or by adjusting a models architecture. First, we evaluate preprocessing strategies, including traditional data augmentation and dynamic label injection. These…
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Taxonomy
TopicsInfrastructure Maintenance and Monitoring · Dam Engineering and Safety · Geotechnical Engineering and Underground Structures
