Paper ID: 2411.10389
Deep Learning for Micro-Scale Crack Detection on Imbalanced Datasets Using Key Point Localization
Fatahlla Moreh (Christian Albrechts University, Kiel, Germany), Yusuf Hasan (Aligarh Muslim University, Aligarh, India), Bilal Zahid Hussain (Texas A&M University, College Station, USA), Mohammad Ammar (Aligarh Muslim University, Aligarh, India), Sven Tomforde (Christian Albrechts University, Kiel, Germany)
Internal crack detection has been a subject of focus in structural health monitoring. By focusing on crack detection in structural datasets, it is demonstrated that deep learning (DL) methods can effectively analyze seismic wave fields interacting with micro-scale cracks, which are beyond the resolution of conventional visual inspection. This work explores a novel application of DL-based key point detection technique, where cracks are localized by predicting the coordinates of four key points that define a bounding region of the crack. The study not only opens new research directions for non-visual applications but also effectively mitigates the impact of imbalanced data which poses a challenge for previous DL models, as it can be biased toward predicting the majority class (non-crack regions). Popular DL techniques, such as the Inception blocks, are used and investigated. The model shows an overall reduction in loss when applied to micro-scale crack detection and is reflected in the lower average deviation between the location of actual and predicted cracks, with an average Intersection over Union (IoU) being 0.511 for all micro cracks (greater than 0.00 micrometers) and 0.631 for larger micro cracks (greater than 4 micrometers).
Submitted: Nov 15, 2024