TY - GEN
T1 - TL-SDD
T2 - 7th International Conference on Big Data Computing and Communications, BigCom 2021
AU - Cheng, Jiahui
AU - Guo, Bin
AU - Liu, Jiaqi
AU - Liu, Sicong
AU - Wu, Guangzhi
AU - Sun, Yueqi
AU - Yu, Zhiwen
N1 - Publisher Copyright:
© 2021 IEEE.
PY - 2021/8
Y1 - 2021/8
N2 - Surface defect detection plays an increasingly important role in manufacturing industry to guarantee the product quality. Many deep learning methods have been widely used in surface defect detection tasks, and have been proven to perform well in defects classification and location. However, deep learning-based detection methods often require plenty of data for training, which fail to apply to the real industrial scenarios since the distribution of defect categories is often imbalanced. In other words, common defect classes have many samples but rare defect classes have extremely few samples, and it is difficult for these methods to well detect rare defect classes. To solve the imbalanced distribution problem, in this paper we propose TL-SDD: a novel Transfer Learning-based method for Surface Defect Detection. First, we adopt a two-phase training scheme to transfer the knowledge from common defect classes to rare defect classes. Second, we propose a novel Metric-based Surface Defect Detection (M-SDD) model. We design three modules for this model: (1) feature extraction module: containing feature fusion which combines high-level semantic information with low-level structural information. (2) feature reweighting module: transforming examples to a reweighting vector that indicates the importance of features. (3) distance metric module: learning a metric space in which defects are classified by computing distances to representations of each category. Finally, we validate the performance of our proposed method on a real dataset including surface defects of aluminum profiles. Compared to the baseline methods, the performance of our proposed method has improved by up to 11.98% for rare defect classes.
AB - Surface defect detection plays an increasingly important role in manufacturing industry to guarantee the product quality. Many deep learning methods have been widely used in surface defect detection tasks, and have been proven to perform well in defects classification and location. However, deep learning-based detection methods often require plenty of data for training, which fail to apply to the real industrial scenarios since the distribution of defect categories is often imbalanced. In other words, common defect classes have many samples but rare defect classes have extremely few samples, and it is difficult for these methods to well detect rare defect classes. To solve the imbalanced distribution problem, in this paper we propose TL-SDD: a novel Transfer Learning-based method for Surface Defect Detection. First, we adopt a two-phase training scheme to transfer the knowledge from common defect classes to rare defect classes. Second, we propose a novel Metric-based Surface Defect Detection (M-SDD) model. We design three modules for this model: (1) feature extraction module: containing feature fusion which combines high-level semantic information with low-level structural information. (2) feature reweighting module: transforming examples to a reweighting vector that indicates the importance of features. (3) distance metric module: learning a metric space in which defects are classified by computing distances to representations of each category. Finally, we validate the performance of our proposed method on a real dataset including surface defects of aluminum profiles. Compared to the baseline methods, the performance of our proposed method has improved by up to 11.98% for rare defect classes.
KW - distance metric
KW - feature fusion
KW - feature reweighting
KW - surface defect detection
KW - transfer learning
UR - http://www.scopus.com/inward/record.url?scp=85116621943&partnerID=8YFLogxK
U2 - 10.1109/BigCom53800.2021.00023
DO - 10.1109/BigCom53800.2021.00023
M3 - 会议稿件
AN - SCOPUS:85116621943
T3 - Proceedings - 2021 7th International Conference on Big Data Computing and Communications, BigCom 2021
SP - 136
EP - 143
BT - Proceedings - 2021 7th International Conference on Big Data Computing and Communications, BigCom 2021
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 13 August 2021 through 15 August 2021
ER -