Sixteenth International Conference on Quality Control by Artificial Vision 2023
DOI: 10.1117/12.2692569
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Inspection of mechanical assemblies based on 3D deep learning segmentation

Abstract: We are focused on conformity control of complex aeronautical mechanical assemblies, typically an aircraft engine at the end or in the middle of the assembly process. Our overall system should ensure that all the mechanical parts are present and well-mounted. A 3D scanner carried by a robot arm provides acquisitions of 3D point clouds which are further processed. Computer-Aided Design (CAD) model of the mechanical assembly is available. In this paper, we are concentrating on detecting the absence of mechanical … Show more

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“…The work presented in [6] dealt with the classification of 3D point clouds after training on real data, whereas the current work relies on synthetic data for training and real data for evaluating the models. This work is also complementary to our segmentation approach to the same problem, demonstrated in [7]. This work is a continuation of these efforts, focusing on leveraging deep learning classification techniques to analyze 3D point clouds.…”
Section: Previous Workmentioning
confidence: 89%
“…The work presented in [6] dealt with the classification of 3D point clouds after training on real data, whereas the current work relies on synthetic data for training and real data for evaluating the models. This work is also complementary to our segmentation approach to the same problem, demonstrated in [7]. This work is a continuation of these efforts, focusing on leveraging deep learning classification techniques to analyze 3D point clouds.…”
Section: Previous Workmentioning
confidence: 89%