Hybrid Quantum-Classical AI for Industrial Defect Classification in Welding Images
Akshaya Srinivasan, Xiaoyin Cheng, Jianming Yi, Alexander Geng, Desislava Ivanova, Andreas Weinmann, and Ali Moghiseh

TL;DR
This paper explores hybrid quantum-classical machine learning methods for defect classification in welding images, benchmarking their performance against classical CNNs in industrial quality control.
Contribution
It introduces two novel hybrid quantum-classical approaches for defect classification and compares their effectiveness with traditional deep learning models.
Findings
Hybrid quantum models perform competitively with classical CNNs.
Quantum kernel condition number influences classification accuracy.
Both quantum approaches show potential for real-world industrial applications.
Abstract
Hybrid quantum-classical machine learning offers a promising direction for advancing automated quality control in industrial settings. In this study, we investigate two hybrid quantum-classical approaches for classifying defects in aluminium TIG welding images and benchmarking their performance against a conventional deep learning model. A convolutional neural network is used to extract compact and informative feature vectors from weld images, effectively reducing the higher-dimensional pixel space to a lower-dimensional feature space. Our first quantum approach encodes these features into quantum states using a parameterized quantum feature map composed of rotation and entangling gates. We compute a quantum kernel matrix from the inner products of these states, defining a linear system in a higher-dimensional Hilbert space corresponding to the support vector machine (SVM) optimization…
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