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Research on the process of small sample non-ferrous metal recognition and separation based on deep learning

机译:基于深度学习的小样品有色金属识别和分离过程研究

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摘要

Consumption of copper and aluminum has increased significantly in recent years; therefore, recycling these elements from the end-of-life vehicles (ELVs) will be of great economic value and social benefit. However, the separation of non-ferrous materials is difficult because of their different sources, various shapes and sizes, and complex surface conditions. In experimental study on the separation of these materials, few non-ferrous metal scraps can be used. To address these limitations, a traditional image recognition model and a small sample multi-target detection model (which can detect multiple targets simultaneously) based on deep learning and transfer learning were used to identify non-ferrous materials. The improved third version of You Only Look Once (YOLOv3) multi-target detection model using data augmentation, the loss function of focal loss, and a method of adjusting the threshold of Intersection over Union (IOU) between candidate bound and ground truth bound has superior target detection performance than methods. We obtained a 95.3% and 91.4% accuracy in identifying aluminum and copper scraps, respectively, and an operation speed of 18 FPS, meeting the real-time requirements of a sorting system. By using the improved YOLOv3 multi-target detection algorithm and equipment operation parameters selected, the accuracy and purity of the separation system exceeded 90%, meeting the needs of actual production.
机译:近年来,铜和铝的消费量显着增加;因此,从寿命终端(ELV)中回收这些要素将具有巨大的经济价值和社会效益。然而,由于它们的不同来源,各种形状和尺寸和复杂的表面条件,因此难以分离有色金属材料。在对这些材料的分离的实验研究中,可以使用很少的有色金属碎屑。为了解决这些限制,使用基于深度学习和转移学习的传统图像识别模型和小样本多目标检测模型(可以同时检测多个目标)来识别有色金属材料。您只使用数据增强,焦点损失的损失函数的改进的第三版(YOLOV3)多目标检测模型,以及调整候选人绑定和地面真相之间的联盟(iou)的交叉阈值的方法优越的目标检测性能而不是方法。在识别铝和铜废料的准确度和18 FPS的操作速度下,我们获得了95.3%和91.4%的精度,满足了分拣系统的实时要求。通过使用改进的yolov3多目标检测算法和设备操作参数,分离系统的精度和纯度超过90%,满足实际生产的需求。

著录项

  • 来源
    《Waste Management》 |2021年第5期|266-273|共8页
  • 作者单位

    Hubei Key Laboratory of Advanced Technology of Automobile Components Wuhan University of Technology Wuhan 430070 PR China Hubei Collaborative Innovation Center for Automotive Components Technology Wuhan University of Technology Wuhan 430070 PR China;

    Hubei Key Laboratory of Advanced Technology of Automobile Components Wuhan University of Technology Wuhan 430070 PR China Hubei Collaborative Innovation Center for Automotive Components Technology Wuhan University of Technology Wuhan 430070 PR China;

    Hubei Key Laboratory of Advanced Technology of Automobile Components Wuhan University of Technology Wuhan 430070 PR China Hubei Collaborative Innovation Center for Automotive Components Technology Wuhan University of Technology Wuhan 430070 PR China;

    Key Laboratory of Metallurgical Equipment and Control Technology of Ministry of Education Wuhan University of Science and Technology Wuhan 430081 PR China;

    Hubei Key Laboratory of Advanced Technology of Automobile Components Wuhan University of Technology Wuhan 430070 PR China Hubei Collaborative Innovation Center for Automotive Components Technology Wuhan University of Technology Wuhan 430070 PR China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Small sample size; Non-ferrous metal; Recognition and separation; Image recognition; Target detection;

    机译:小样本大小;有色金属;认可和分离;图像识别;目标检测;

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