Machine Learning For Camera Based Monitoring Of Laser Welding Processes


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Machine Learning for Camera-based Monitoring of Laser Welding Processes


Machine Learning for Camera-based Monitoring of Laser Welding Processes

Author: Julia Hartung

language: en

Publisher:

Release Date: 2023*


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Machine Learning for Camera-Based Monitoring of Laser Welding Processes


Machine Learning for Camera-Based Monitoring of Laser Welding Processes

Author: Hartung, Julia

language: en

Publisher: KIT Scientific Publishing

Release Date: 2024-03-08


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The increasing use of automated laser welding processes causes high demands on process monitoring. This work demonstrates methods that use a camera mounted on the focussing optics to perform pre-, in-, and post-process monitoring of welding processes. The implementation uses machine learning methods. All algorithms consider the integration into industrial processes. These challenges include a small database, limited industrial manufacturing inference hardware, and user acceptance.

Computational, label, and data efficiency in deep learning for sparse 3D data


Computational, label, and data efficiency in deep learning for sparse 3D data

Author: Li, Lanxiao

language: en

Publisher: KIT Scientific Publishing

Release Date: 2024-05-13


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Deep learning is widely applied to sparse 3D data to perform challenging tasks, e.g., 3D object detection and semantic segmentation. However, the high performance of deep learning comes with high costs, including computational costs and the effort to capture and label data. This work investigates and improves the efficiency of deep learning for sparse 3D data to overcome the obstacles to the further development of this technology.