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Quality control by artificial vision has experienced a swift evolution because of advances in artificial intelligence, 2-D and 3-D vision sensors, image processing, and nonconventional optics.In recent years, new acquisition methods combined with smart image processing algorithms and deep learning have allowed quality control by artificial vision to emerge as a distinct scientific domain.Based largely upon the 16th International Conference on Quality Control by Artificial Vision 2023 in Albi, France (https://qcav2023.sciencesconf.org/), this special section offers insights into this newly emerged research domain.In the field of surface anomaly detection (AD) by deep learning, Rački et al. propose the coupling of unsupervised and supervised approaches.They use an unsupervised approach to build a model for generating pseudo labels, followed by a supervised approach to increase the robustness of AD.The proposed approach yields results that are comparable to the fully supervised approach, with a reduced need for labeled anomalous samples.Ueda et al. propose a multi-object tracking method to estimate the 3D shape of individual wires inside electrical cables using X-ray CT images.Knowing the 3D shape of each individual wire is essential for analyzing precisely the properties of the cables, such as bending stiffness.The 3D shape of individual wires is estimated by tracking their position over the cross-sectional images using a long-short term memory neural network.The effectiveness of the proposed method is demonstrated through experiments on actual annotated cables, even in presence of noisy data.Helvig et al. propose an open-access annotated database for crack detection and localization on metallic materials using the flying spot laser infrared thermography method and deep learning approaches.The database is used for a benchmark of several state-of-the-art machine learning architectures.The authors propose a transfer learning approach, and they show that the performance increases when the models are pretrained on their proposed publicly available dataset.In the field of control and monitoring of industrial crystallization processes, Rahmani et al. propose an innovative image analysis method specifically designed for analyzing crystallization videos.The proposed method involves the dynamic segmentation of observed aggregates, provides access to the particle size distribution of the aggregates in the reactor over time, and highlights the key stages of crystallization.Pižurica et al. introduce a novel neural architecture search toolkit (GT-NAS), which can produce faster and smaller CNN architectures, while keeping or even exceeding state-of-the-art accuracy.An application of GT-NAS to surface defect detection is showcased to prove its effectiveness.Moreover, the toolkit is generic, i.e. not limited to one specific use case, and can be used in other domains as well.Došljak et al. proposed a novel method to enhance the robustness of deep-learning models to the domain gap between synthetically generated 3D data from CAD models and 3D real point clouds acquired via a 3D scanner.They tested their methods by applying them to perform conformity check of complex mechanical assemblies using neural networks for point cloud classification.
Jovančević et al. (Fri,) studied this question.