Interpretable Computer Vision for Defect Detection in X-ray Tomography of Aerospace SiC/SiC Composites
Antonio Pe\~na Corredor, Julien Lesseur, Romain Nunez, Paul Rivalland (SES), Thomas Philippe

TL;DR
This paper introduces p-ResNet-50, a transparent deep learning framework for defect detection in aerospace composites via X-ray tomography, combining high accuracy with case-based explanations and uncertainty mapping.
Contribution
It extends ResNet-50 with prototypes aligned to expert categories, regularization to prevent collapse, and uncertainty visualization, enhancing interpretability in defect detection.
Findings
Achieves comparable accuracy to baseline ResNet-50 with added interpretability.
Effectively maps uncertainty zones where misclassifications occur.
Provides a reusable methodology for integrating domain knowledge into prototype networks.
Abstract
Non-destructive testing of aerospace SiC/SiC composites via X-ray computed tomography (XCT) relies on expert visual assessment, with current workflows offering limited traceability for accept/reject decisions. Deep convolutional networks can automate defect detection, yet their black-box nature conflicts with the transparency that industrial inspection practice demands. To close this gap, we introduce p-ResNet-50, a convolutional framework extended with a prototype layer that couples high detection accuracy with case-based explanations. Six learned prototypes are explicitly aligned with expert-defined semantic categories-healthy matrix, matrix--air interfaces, pores, line-like defects, and mixed morphologies-so that every classification is traceable to a physically meaningful reference. Two novel regularisation terms, anchor-based and medoid-based, tether prototypes to expert-selected…
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