As the use of artificial intelligence (AI) models becomes more prevalent in industries such as engineering and manufacturing, it is essential that these models provide trans-parent reasoning behind their predictions. This paper proposes the AI-Reasoner, which extracts the morphological characteristics of defects (DefChars) from images and utilises decision trees to reason with the DefChar values. Thereafter, the AI-Reasoner exports visualisations (i.e. charts) and textual explanations to provide insights into outputs made by masked-based defect detection and classification models. It also provides effective mitigation strategies to enhance data pre-processing and overall model performance. The AI-Reasoner was tested on explaining the outputs of an IE Mask R-CNN model using a set of 366 images containing defects. The results demonstrated its effectiveness in explaining the IE Mask R-CNN model's predictions. Overall, the proposed AI-Reasoner provides a solution for improving the performance of AI models in industrial applications that require defect analysis.
Funding
Railston & Co Ltd
School of Science, Loughborough University
History
School
Science
Department
Computer Science
Mathematical Sciences
Physics
Published in
2023 IEEE Symposium Series on Computational Intelligence (SSCI)