Introduction

Bimonthly, started in 1957
Administrator
Shanxi Provincial Education Department
Sponsor
Taiyuan University of Technology
Publisher
Ed. Office of Journal of TYUT
Editor-in-Chief
SUN Hongbin
ISSN: 1007-9432
CN: 14-1220/N
location: home > paper > 
References:
  • Browse HTML PDFDownload   size: 2.83MB   viewed:221   download:982
  • A Multiscale Segmentation Method of Strip Steel Surface Defect Images Using Boundary Awareness and Deep Learning on Small Datasets
    DOI:
     10.16355/j.cnki.issn1007-9432tyut.2022.05.014
    Received:
     
    Accepted:
     
    Corresponding author     Institute
    GUO Xuejun      College of Data Science, Taiyuan University of Technology
    abstract:

    Fully convolutional networks for semantic segmentation provide pixel-level detection of strip steel surface defects, which plays a crucial role in product quality control of strip steel. However, most of these models suffer from the loss of boundary information, and their performance is often heavily dependent on a large number of labeled samples, which limits the application of the approach. Thereby, a multiscale and boundary-aware network for segmentation of strip steel surface defects on small datasets was proposed in this work. The network consists of two cascaded encoder-decoder subnets. The first subnet employs an encoder built with one-shot aggregation modules and a feature pyramid attention module to extract hierarchical and multiscale features and reduce the dependence of performance on training dataset size. Then, a decoder consisting of global attention up-sample modules exploits high-level feature map to guide low-level features recovering the lost spatial information, and generates preliminary prediction results. Finally, the second subnet further refines the prediction results from the first subnet. Experiments on NEU-Seg defect dataset demonstrate the feasibility and effectiveness of this method for automatic extraction of surface defects such as inclusion, patch, and scratches.


    Keywords:
     semantic segmentation; surface defects detection; small sample learning; feature pyramid attention module; global attention up-sample module

    Website Copyright © Editorial Office of Journal of Taiyuan University of Technology

    E-mail:tyutxb@tyut.edu.cn