CorrDetector: A Framework for Structural Corrosion Detection from Drone Images using Ensemble Deep Learning
Abdur Rahim Mohammad Forkan, Yong-Bin Kang, Prem Prakash Jayaraman,, Kewen Liao, Rohit Kaul, Graham Morgan, Rajiv Ranjan, Samir Sinha

TL;DR
CorrDetector is an ensemble deep learning framework that improves drone-based structural corrosion detection accuracy, aiding maintenance decisions and reducing human error in inaccessible areas.
Contribution
This paper introduces CorrDetector, a novel ensemble CNN framework that enhances corrosion detection accuracy from drone images compared to existing methods.
Findings
Ensemble approach significantly outperforms state-of-the-art methods.
Framework effectively identifies corrosion in complex structures.
Empirical evaluation on real drone images demonstrates high accuracy.
Abstract
In this paper, we propose a new technique that applies automated image analysis in the area of structural corrosion monitoring and demonstrate improved efficacy compared to existing approaches. Structural corrosion monitoring is the initial step of the risk-based maintenance philosophy and depends on an engineer's assessment regarding the risk of building failure balanced against the fiscal cost of maintenance. This introduces the opportunity for human error which is further complicated when restricted to assessment using drone captured images for those areas not reachable by humans due to many background noises. The importance of this problem has promoted an active research community aiming to support the engineer through the use of artificial intelligence (AI) image analysis for corrosion detection. In this paper, we advance this area of research with the development of a framework,…
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