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Deep learning corrosion detection with confidence

Version 2 2024-06-02, 23:46
Version 1 2023-10-26, 02:31
journal contribution
posted on 2024-06-02, 23:46 authored by W Nash, L Zheng, Nick BirbilisNick Birbilis
AbstractCorrosion costs an estimated 3–4% of GDP for most nations each year, leading to significant loss of assets. Research regarding automatic corrosion detection is ongoing, with recent progress leveraging advances in deep learning. Studies are hindered however, by the lack of a publicly available dataset. Thus, corrosion detection models use locally produced datasets suitable for the immediate conditions, but are unable to produce generalized models for corrosion detection. The corrosion detection model algorithms will output a considerable number of false positives and false negatives when challenged in the field. In this paper, we present a deep learning corrosion detector that performs pixel-level segmentation of corrosion. Moreover, three Bayesian variants are presented that provide uncertainty estimates depicting the confidence levels at each pixel, to better inform decision makers. Experiments were performed on a freshly collected dataset consisting of 225 images, discussed and validated herein.

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Location

Berlin, Germany

Language

eng

Publication classification

C1.1 Refereed article in a scholarly journal

Journal

npj Materials Degradation

Volume

6

Article number

26

Pagination

1-13

ISSN

2397-2106

eISSN

2397-2106

Issue

1

Publisher

Springer

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