Title
Particleboard Surface Defect Inspection Based on Data Augmentation and Attention Mechanisms
Abstract
Inspection accuracy of surface defect is very important for particleboard production. However, the insufficient defect samples seriously restrict the quality of vision and deep learning-based inspection result. The small-scale defects on particleboard surface are also a major challenge to the input of network models. This paper proposes a method based on data augmentation and attention mechanisms to solve these problems. A hardware platform was designed to take surface defect images. The methods of traditional data augmentation and GAN have been applied to increase the amount of defect samples. The Poisson Fusion technique was adopted to generate defect images albeit varied backgrounds to for network training. The SSD network was deployed as the optimization model. The devised optimization schemes replaced the feature extraction network (VGG) with ResNET18 and ResNET50 respectively before fusing with the DCGAN module. During the training stage, a transfer learning-based method was developed to pre-train the optimized network through COCO2017 dataset to improve the training speed and accuracy. The experimental results showed that the scheme of “ResNET50 + Attention” outperformed benchmarked solutions with a peak performance on particleboard surface defect inspection reaching 96.79%.
Year
DOI
Venue
2022
10.1109/ICAC55051.2022.9911064
2022 27th International Conference on Automation and Computing (ICAC)
Keywords
DocType
ISBN
Surface defect,SSD,Data Augmentation,Attention Mechanism
Conference
978-1-6654-9808-1
Citations 
PageRank 
References 
0
0.34
5
Authors
6
Name
Order
Citations
PageRank
Baizhen Li100.34
Zhijie Xu200.68
EnKai Bian300.34
Yu Chen439175.79
Feng Gao518245.20
Yaolong Cao6167.86