Automated Corrosion Detection Using Crowdsourced Training for Deep Learning
Date
Authors
Nash, W.T.
Powell, C.J.
Drummond, Tom
Birbilis, Nick
Journal Title
Journal ISSN
Volume Title
Publisher
NACE International
Abstract
The automated detection of corrosion from images (i.e., photographs) or video (i.e., drone footage) presents significant advantages in terms
of corrosion monitoring. Such advantages include access to remote locations, mitigation of risk to inspectors, cost savings, and monitoring
speed. The automated detection of corrosion requires deep learning to approach human level intelligence. Training of a deep learning model
requires intensive image labeling, and in order to generate a large database of labeled images, crowdsourced labeling via a dedicated website
was sought. The website (corrosiondetector.com) permits any user to label images, with such labeling then contributing to the training of a
cloud-based artificial intelligence (AI) model—with such a cloud-based model then capable of assessing any fresh (or uploaded) image for the
presence of corrosion. In other words, the website includes both the crowdsourced training process, but also the end use of the evolving
model. Herein, the results and findings from the Corrosion Detector website, over the period of approximately one month,
are reported.
Description
Citation
Collections
Source
Corrosion
Type
Book Title
Entity type
Access Statement
License Rights
DOI
Restricted until
2099-12-31
Downloads
File
Description