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MU R-CNN: A Two-Dimensional Code Instance Segmentation Network Based on Deep Learning

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Listed:
  • Baoxi Yuan

    (School of Information Engineering, Xijing University, Xi’an 710123, China
    Shaanxi Key Laboratory of Integrated and Intelligent Navigation, Xi’an 710068, China
    Beijing Jiurui Technology co., LTD, Beijing 100107, China)

  • Yang Li

    (Shaanxi Key Laboratory of Integrated and Intelligent Navigation, Xi’an 710068, China)

  • Fan Jiang

    (Shaanxi Key Laboratory of Integrated and Intelligent Navigation, Xi’an 710068, China
    Xi’an University of Posts and Telecommunications, Xi’an 710121, China)

  • Xiaojie Xu

    (Shaanxi Key Laboratory of Integrated and Intelligent Navigation, Xi’an 710068, China)

  • Yingxia Guo

    (Dongfanghong Middle School, Anding District, Dingxi City 743000, China)

  • Jianhua Zhao

    (School of Information Engineering, Xijing University, Xi’an 710123, China)

  • Deyue Zhang

    (Unit 95949 of CPLA, HeBei 061736, China)

  • Jianxin Guo

    (School of Information Engineering, Xijing University, Xi’an 710123, China
    Shaanxi Key Laboratory of Integrated and Intelligent Navigation, Xi’an 710068, China)

  • Xiaoli Shen

    (Xi’an Haitang Vocational College, Xi’an 710038, China)

Abstract

In the context of Industry 4.0, the most popular way to identify and track objects is to add tags, and currently most companies still use cheap quick response (QR) tags, which can be positioned by computer vision (CV) technology. In CV, instance segmentation (IS) can detect the position of tags while also segmenting each instance. Currently, the mask region-based convolutional neural network (Mask R-CNN) method is used to realize IS, but the completeness of the instance mask cannot be guaranteed. Furthermore, due to the rich texture of QR tags, low-quality images can lower intersection-over-union (IoU) significantly, disabling it from accurately measuring the completeness of the instance mask. In order to optimize the IoU of the instance mask, a QR tag IS method named the mask UNet region-based convolutional neural network (MU R-CNN) is proposed. We utilize the UNet branch to reduce the impact of low image quality on IoU through texture segmentation. The UNet branch does not depend on the features of the Mask R-CNN branch so its training process can be carried out independently. The pre-trained optimal UNet model can ensure that the loss of MU R-CNN is accurate from the beginning of the end-to-end training. Experimental results show that the proposed MU R-CNN is applicable to both high- and low-quality images, and thus more suitable for Industry 4.0.

Suggested Citation

  • Baoxi Yuan & Yang Li & Fan Jiang & Xiaojie Xu & Yingxia Guo & Jianhua Zhao & Deyue Zhang & Jianxin Guo & Xiaoli Shen, 2019. "MU R-CNN: A Two-Dimensional Code Instance Segmentation Network Based on Deep Learning," Future Internet, MDPI, vol. 11(9), pages 1-25, September.
  • Handle: RePEc:gam:jftint:v:11:y:2019:i:9:p:197-:d:267119
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    References listed on IDEAS

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    1. DONG,Shengzhong & XU,Fangxu & TAO,Siyuan & WU,Longkun & ZHAO,Xingang, 2018. "Research on the Status Quo and Supervision Mechanism of Food Safety in China," Asian Agricultural Research, USA-China Science and Culture Media Corporation, vol. 10(02), February.
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