Deep learning-based software and hardware framework for a noncontact inspection platform for aggregate grading

被引:6
|
作者
Qin, Jing [1 ]
Wang, Jiabao [2 ,3 ]
Lei, Tianjie [2 ,4 ]
Sun, Geng [1 ]
Yue, Jianwei [4 ]
Wang, Weiwei [6 ]
Chen, Jinping [5 ]
Qian, Guansheng [2 ]
机构
[1] China Inst Water Resources & Hydropower Res, Beijing 100044, Peoples R China
[2] Chinese Acad Agr Sci, Inst Environm & Sustainable Dev Agr, Natl Engn Lab Efficient Crop Water Use & Disaster, Key Lab Agr Environm,MARA, Beijing 100081, Peoples R China
[3] China Univ Min & Technol, Coll Geosci & Surveying Engn, Beijing CUMTB, Beijing 100083, Peoples R China
[4] Beijing Normal Univ BNU, Coll Resource Sci & Technol, Beijing 100875, Peoples R China
[5] Southwest Jiaotong Univ, Fac Geosci & Environm Engn, Chengdu 611756, Peoples R China
[6] China Elect Greatwall ShengFeiFan Informat Syst CO, Beijing 102200, Peoples R China
关键词
Mixed aggregate grading; Stacked aggregates; Noncontact inspection platforms; Instance segmentation; Convolutional neural network; SIZE;
D O I
10.1016/j.measurement.2023.112634
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Due to the problem of complex aggregate stacking and adhesion, current construction site aggregate grade detection relies on traditional screening methods and single digital image processing technology, which causes inefficiency and segmentation identification difficulties. This problem has become a technical bottleneck in achieving automatic construction site mixed aggregate grade detection. This study constructs a noncontact testing platform for aggregate gradation based on a self-developed sampling and testing device for mixed aggregate gradation and improved deep learning algorithms, which enables rapid testing of mixed aggregate gradation. Based on the principle of instance segmentation, each aggregate in the stacked mixed aggregates collected based on hardware observation is used as an instance to detect independent aggregate targets in the mixed aggregate images with different moisture contents, sand contents and cohesive stacking. An improved aggregate segmentation convolutional neural network model (AS Mask RCNN: Aggregate Segmentation Mask RCNN) is used to achieve the gradation detection of mixed aggregates. This study employed three different types of experiments, and the results showed that the AS Mask RCNN network model achieved an accuracy of over 89.13% in the three experimental situations, and compared the results with those of the Faster RCNN and Mask R-CNN models, with an accuracy improvement of 8.85% and a reduction of 1.29 s in the processing time of a single image segmentation, which can meet the field near real-time detection requirements. The self-developed noncontact testing platform for aggregate grading can adapt to practical applications in complex environments, enabling digital, automated and intelligent noncontact rapid testing of mixed aggregate grading, further improving the accuracy of aggregate grading testing and serving the high-quality development of reservoir dam construction in China.
引用
收藏
页数:12
相关论文
共 50 条
  • [41] Automated measurement and grading of knee cartilage thickness: a deep learning-based approach
    Guo, Jiangrong
    Yan, Pengfei
    Qin, Yong
    Liu, Meina
    Ma, Yingkai
    Li, Jaingqi
    Wang, Ren
    Luo, Hao
    Lv, Songcen
    FRONTIERS IN MEDICINE, 2024, 11
  • [42] Improved histologic grading of breast cancer by a novel deep learning-based model
    Rantalainen, Mattias
    Wang, Yinxi
    Acz, Balazs
    Robertson, Stephanie
    Hartman, Johan
    CANCER RESEARCH, 2020, 80 (04)
  • [43] Deep learning-based grading of ductal carcinoma in situ in breast histopathology images
    Wetstein, Suzanne C.
    Stathonikos, Nikolas
    Pluim, Josien P. W.
    Heng, Yujing J.
    ter Hoeve, Natalie D.
    Vreuls, Celien P. H.
    van Diest, Paul J.
    Veta, Mitko
    LABORATORY INVESTIGATION, 2021, 101 (04) : 525 - 533
  • [44] Deep learning-based detection and stage grading for optimising diagnosis of diabetic retinopathy
    Wang, Yuelin
    Yu, Miao
    Hu, Bojie
    Jin, Xuemin
    Li, Yibin
    Zhang, Xiao
    Zhang, Yongpeng
    Gong, Di
    Wu, Chan
    Zhang, Bilei
    Yang, Jingyuan
    Li, Bing
    Yuan, Mingzhen
    Mo, Bin
    Wei, Qijie
    Zhao, Jianchun
    Ding, Dayong
    Yang, Jingyun
    Li, Xirong
    Yu, Weihong
    Chen, Youxin
    DIABETES-METABOLISM RESEARCH AND REVIEWS, 2021, 37 (04)
  • [45] Deep Learning-Based Tool for Automated Gastrointestinal Neuroendocrine Tumor Detection and Grading
    Govind, Darshana
    Jen, Kuang-Yu
    Sarder, Pinaki
    MODERN PATHOLOGY, 2020, 33 (SUPPL 2) : 673 - 674
  • [46] Deep Learning-Based Tool for Automated Gastrointestinal Neuroendocrine Tumor Detection and Grading
    Govind, Darshana
    Jen, Kuang-Yu
    Sarder, Pinaki
    LABORATORY INVESTIGATION, 2020, 100 (SUPPL 1) : 673 - 674
  • [47] Cross Hardware-Software Boundary Exploration for Scalable and Optimized Deep Learning Platform Design
    Chen, Baozi
    Wang, Lei
    Wu, Qingbo
    Tan, Yusong
    Zou, Peng
    IEEE EMBEDDED SYSTEMS LETTERS, 2018, 10 (04) : 107 - 110
  • [48] Food Quality Inspection and Grading Using Efficient Image Segmentation and Machine Learning-Based System
    Hemamalini, V
    Rajarajeswari, S.
    Nachiyappan, S.
    Sambath, M.
    Devi, T.
    Singh, Bhupesh Kumar
    Raghuvanshi, Abhishek
    JOURNAL OF FOOD QUALITY, 2022, 2022
  • [49] Framework for Machine Learning-Based Pavement Marking Inspection and Geohash-Based Monitoring
    Kim, Yonghan
    Song, Kwonsik
    Kang, Kyubyung
    INTERNATIONAL CONFERENCE ON TRANSPORTATION AND DEVELOPMENT 2022: APPLICATION OF EMERGING TECHNOLOGIES, 2022, : 123 - 132
  • [50] A deep learning-based framework for retinal fundus image enhancement
    Lee, Kang Geon
    Song, Su Jeong
    Lee, Soochahn
    Yu, Hyeong Gon
    Kim, Dong Ik
    Lee, Kyoung Mu
    PLOS ONE, 2023, 18 (03):