Association Journal of CSIAM
Supervised by Ministry of Education of PRC
Sponsored by Xi'an Jiaotong University
ISSN 1005-3085  CN 61-1269/O1

Chinese Journal of Engineering Mathematics ›› 2023, Vol. 40 ›› Issue (5): 681-698.doi: 10.3969/j.issn.1005-3085.2023.05.001

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Power Equipment Low-quality X-ray Images Opening/Closing Recognition Based on CNN and DUL

ZHOU Jingbo1,  HAO Kunkun2,3,  WU Anbo2,3   

  1. 1. Electric Power Research Institute of Yunnan Power Grid Company Limited, Kunming 650217;
    2. School of Management, Xi'an University of Science and Technology, Xi'an 710054;  
    3. State Key Laboratory for Manufacturing System Engineering, Xi'an Jiaotong University, Xi'an 710049
  • Received:2021-04-06 Accepted:2021-06-08 Online:2023-10-15 Published:2023-12-15
  • Supported by:
    The Science Research Project of China Southern Power Grid Yunnan Power Grid Company Limited.

Abstract:

In the process of power equipment opening/closing X-ray images acquisition by power inspection robot system, there are often low-quality problems such as image distortion, blur and low resolution, which make it difficult to identify the opening/closing state of X-ray images. Therefore, this paper proposes a deep learning recognition method based on data uncertainty learning. Firstly, the recognition algorithm is designed with three convolutional neural networks BaseNet, ResNet18 and MobileNetV3. Then, by fusing the DUL module, the convolutional neural network maps the images space to an uncertain features space that obeys the Gaussian distribution to adaptively learn the noise in low-quality X-ray images. Finally, three groups of comparative experiments are presented to simulate the influence of different quality data on the recognition performance of the model under ideal environment, harsh environment, and normal environment. The experimental results show that the model based on data uncertainty learning performs better than the deterministic model, and the average recognition accuracy of X-ray image opening/closing is increased by 2.64\%. ResNet18+DUL performs best, with an accuracy of up to 100\%, suitable for online recognition. MobileNetV3+DUL is with an accuracy of up to 97.83\%, suitable for offline recognition.

Key words: low quality X-ray images, opening/closing recognition, data uncertainty learning, CNN

CLC Number: