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Main Authors: Li, Baolu, Yu, Hongkai, Sun, Huiming, Ma, Jin, Lin, Yuewei, Ma, Lu, Du, Yonghua
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.00836
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author Li, Baolu
Yu, Hongkai
Sun, Huiming
Ma, Jin
Lin, Yuewei
Ma, Lu
Du, Yonghua
author_facet Li, Baolu
Yu, Hongkai
Sun, Huiming
Ma, Jin
Lin, Yuewei
Ma, Lu
Du, Yonghua
contents The synchrotron light source, a cutting-edge large-scale user facility, requires autonomous synchrotron beamline operations, a crucial technique that should enable experiments to be conducted automatically, reliably, and safely with minimum human intervention. However, current state-of-the-art synchrotron beamlines still heavily rely on human safety oversight. To bridge the gap between automated and autonomous operation, a computer vision-based system is proposed, integrating deep learning and multiview cameras for real-time collision detection. The system utilizes equipment segmentation, tracking, and geometric analysis to assess potential collisions with transfer learning that enhances robustness. In addition, an interactive annotation module has been developed to improve the adaptability to new object classes. Experiments on a real beamline dataset demonstrate high accuracy, real-time performance, and strong potential for autonomous synchrotron beamline operations.
format Preprint
id arxiv_https___arxiv_org_abs_2506_00836
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Advancing from Automated to Autonomous Beamline by Leveraging Computer Vision
Li, Baolu
Yu, Hongkai
Sun, Huiming
Ma, Jin
Lin, Yuewei
Ma, Lu
Du, Yonghua
Computer Vision and Pattern Recognition
The synchrotron light source, a cutting-edge large-scale user facility, requires autonomous synchrotron beamline operations, a crucial technique that should enable experiments to be conducted automatically, reliably, and safely with minimum human intervention. However, current state-of-the-art synchrotron beamlines still heavily rely on human safety oversight. To bridge the gap between automated and autonomous operation, a computer vision-based system is proposed, integrating deep learning and multiview cameras for real-time collision detection. The system utilizes equipment segmentation, tracking, and geometric analysis to assess potential collisions with transfer learning that enhances robustness. In addition, an interactive annotation module has been developed to improve the adaptability to new object classes. Experiments on a real beamline dataset demonstrate high accuracy, real-time performance, and strong potential for autonomous synchrotron beamline operations.
title Advancing from Automated to Autonomous Beamline by Leveraging Computer Vision
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2506.00836