4.8 Article

FFCNN: A Deep Neural Network for Surface Defect Detection of Magnetic Tile

Journal

IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS
Volume 68, Issue 4, Pages 3506-3516

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIE.2020.2982115

Keywords

Feature extraction; Magnetic resonance imaging; Task analysis; Machine vision; Optical surface waves; Industries; Convolutional neural network (CNN); defect detection; intelligent system; machine vision; magnetic tile

Funding

  1. Fundamental Research Funds for the Central Universities [2018CKJSD021]
  2. Science and Technology Support Plan Project of Sichuan province [2018GZ0289, 2018GZ0285, 2018GZ0129]

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An intelligent system is developed to assess the surface quality of magnetic tiles before mounting, with an end-to-end CNN architecture FFCNN proposed for automatic defect identification. FFCNN consists of three modules for feature extraction, fusion, and decision-making, with an attention mechanism introduced to focus on more representative parts. Experimental results demonstrate the effectiveness and efficiency of the developed system for magnetic tile surface defect detection.
Surface quality assessment of magnetic tile before mounting is extremely significant. At present, this task is mainly accomplished by experienced workers in industry, which exposes the drawbacks of low efficiency and high cost. To overcome these issues, an intelligent system is developed to perform this task, which appears to be an efficient and reliable substitute for human workers. In this article, deep learning technique is embedded into our system for automatic defect identification. However, conventional convolutional neural network (CNN) is not suitable for this classification task, since the input is a sample rather than a single image. To overcome this problem, an end-to-end CNN architecture is proposed, termed fusion feature CNN (FFCNN). FFCNN consists of three modules: feature extraction module, feature fusion module, and decision-making module. The feature extraction module is designed to extract features from different images. The feature fusion module is to fuse the features extracted by feature extraction module. The decision-making module is to predict the label by the fused features. Furthermore, an attention mechanism is introduced to focus on more representative parts and suppress less important information. Experimental results demonstrated that the developed system is effective and efficient for magnetic tile surface defect detection.

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