17. FOML,a deep learning based fast online multi-track locating algorithm for MPGD with silicon pixel sensors
编号:25 访问权限:仅限参会人 更新:2024-10-11 23:32:41 浏览:306次 张贴报告

报告开始:2024年10月14日 08:20(Asia/Shanghai)

报告时间:1min

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摘要
Mirco Pattern Gaseous Detector (MPGD) plays a vital role in particle detection at The Heavy Ion Research Facility in Lanzhou and the High-Intensity Heavy Ion Accelerator Facility. The MPGD has amplification structures of a few micron meters. However, the pad size of the readout plane does not match the high granularity due to limitations on the integration level of readout electronics. To address this, using silicon pixel sensors with a pixel size of a few microns to read the MPGD becomes a good candidate, but this produces a vast amount of data from silicon pixels. Therefore, we have developed a Fast Online Multi-Track Locating (FOML) algorithm based on deep learning approaches. This FOML can extract the information of each track in real time and significantly reduces the data volumen. In our network, the lightweight and efficient effect is achieved by implicitly reusing features in the backbone network. In feature fusion, BiFPN and attention mechanisms are used for more comprehensive information transmission and fusion of different levels of features. Finally, learning the target location and category information through different network branches can reduce the computational complexity and improve the detection efficiency. The FOML is expected to achieve a detection speed of 452 frames per second while providing a position accuracy of ~2um.
关键词
deep learning; MPGD; Multi-Track; lightweight; efficient
报告人
jiangyong du
Mr. Northwest Normal University;Institute of Modern Physics

稿件作者
jiangyong du Northwest Normal University;Institute of Modern Physics
Yanhao Jia Institute of modern physics, Chinese Academy of Sciences
Chengxin Zhao Chinese Academy of Sciences;Institute of modern physics
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重要日期
  • 会议日期

    10月13日

    2024

    10月18日

    2024

  • 10月18日 2024

    报告提交截止日期

  • 10月31日 2024

    初稿截稿日期

  • 01月31日 2025

    注册截止日期

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University of Science and Technology of China
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