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A study on object recognition using deep learning for optimizing categorization of radioactive waste

机译:利用深度学习优化放射性废物分类的对象识别研究

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摘要

The smart management of radioactive waste by deep learning technology is becoming of great concern, as it could decrease the workload and errors of workers in categorizing radioactive waste, thereby reducing the waste volume. In this paper, we try to maximize the efficiency of categorization for new or temporary workers instead of skilled workers by training the categorization using deep learning technology. The waste recognition system based on the deep learning technology was trained with a total of 86,084 images for 50 epochs with a subdivision of 8 and a batch of 128, which were extracted from video data that were taken in a waste sorting site. The image recognition was applied for four typical radioactive wastes (vinyl, rubber, cotton, and paper) with no object with hands (no object) and without hands (empty). The waste recognition was tested with a total of 21,521 images to evaluate the accuracy. It was determined that the accuracy of the image recognition with a deep neural network was 99.67%.
机译:深度学习技术的放射性浪费的智能管理正在变得非常关注,因为它可以减少对放射性废物的工作量的工作量和错误,从而减少废物量。在本文中,我们试图通过使用深度学习技术培训分类来最大限度地提高新的或临时工人的分类效率,而不是技术人员。基于深度学习技术的废物识别系统培训,总共86,084个图像,50个时期,具有8个和批次128的细分,这是从废物分选位点采集的视频数据中提取的。图像识别应用于四种典型的放射性废物(乙烯基,橡胶,棉花和纸),没有物体用手(没有物体),没有手(空)。在总共21,521个图像中测试了废物识别以评估准确性。确定与深神经网络的图像识别的准确性为99.67%。

著录项

  • 来源
    《Progress in Nuclear Energy》 |2020年第12期|103528.1-103528.5|共5页
  • 作者单位

    Korea Atom Energy Res Inst KAERI Radwaste Management Ctr 111 Daedeok Daero 989beon Gil Daejeon 34057 South Korea;

    Korea Atom Energy Res Inst KAERI Radwaste Management Ctr 111 Daedeok Daero 989beon Gil Daejeon 34057 South Korea;

    Korea Atom Energy Res Inst KAERI Radwaste Management Ctr 111 Daedeok Daero 989beon Gil Daejeon 34057 South Korea;

    Korea Atom Energy Res Inst KAERI Radwaste Management Ctr 111 Daedeok Daero 989beon Gil Daejeon 34057 South Korea;

    Korea Atom Energy Res Inst KAERI Radwaste Management Ctr 111 Daedeok Daero 989beon Gil Daejeon 34057 South Korea;

    Korea Atom Energy Res Inst KAERI Radwaste Management Ctr 111 Daedeok Daero 989beon Gil Daejeon 34057 South Korea;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Deep learning; Object recognition; Computer vision; Radioactive waste; Categorization;

    机译:深入学习;对象识别;计算机视觉;放射性废物;分类;

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