PreAugNet: improve data augmentation for industrial defect classification with small-scale training data

被引:0
|
作者
Isack Farady
Chih-Yang Lin
Ming-Ching Chang
机构
[1] Yuan Ze University,Electrical Engineering
[2] Mercu Buana University,Electrical Engineering
[3] National Central University,Mechanical Engineering
[4] University at Albany,Computer Science
来源
关键词
Data augmentation; Synthetic sample generation; CNN; Surface defect classification; Decision boundary; PreAugNet;
D O I
暂无
中图分类号
学科分类号
摘要
With the prevalence of deep learning and convolutional neural network (CNN), data augmentation is widely used for enriching training samples to gain model training improvement. Data augmentation is important when training samples are scarce. This work focuses on improving data augmentation for training an industrial steel surface defect classification network, where the performance is largely depending on the availability of high-quality training samples. It is very difficult to find a sufficiently large dataset for this application in real-world settings. When it comes to synthetic data augmentation, the performance is often degraded by incorrect class labels, and a large effort is required to generate high-quality samples. This paper introduces a novel off-line pre-augmentation network (PreAugNet) which acts as a class boundary classifier that can effectively screen the quality of the augmented samples and improve image augmentation. This PreAugNet can generate augmented samples and update decision boundaries via an independent support vector machine (SVM) classifier. New samples are automatically distributed and combined with the original data for training the target network. The experiments show that these new augmentation samples can improve classification without changing the target network architecture. The proposed method for steel surface defect inspection is evaluated on three real-world datasets: AOI steel defect dataset, MT, and NEU datasets. PreAugNet significantly increases the accuracy by 3.3% (AOI dataset), 6.25% (MT dataset) and 2.1% (NEU dataset), respectively.
引用
收藏
页码:1233 / 1246
页数:13
相关论文
共 50 条
  • [31] The potential of small-scale spatial data in regional science
    Bergs, Rolf
    Budde, Ruediger
    REVIEW OF REGIONAL RESEARCH-JAHRBUCH FUR REGIONALWISSENSCHAFT, 2022, 42 (02): : 97 - 110
  • [32] SMALL-SCALE COGENERATION PLANT DATA PROCESSING AND ANALYSIS
    Veidenbergs, I.
    Blumberga, D.
    Rochas, C.
    Romagnoli, F.
    Blumberga, A.
    Rosa, M.
    LATVIAN JOURNAL OF PHYSICS AND TECHNICAL SCIENCES, 2008, 45 (03) : 25 - 33
  • [33] No Data Augmentation? Alternative Regularizations for Effective Training on Small Datasets
    Brigato, Lorenzo
    Mougiakakou, Stavroula
    2023 IEEE/CVF INTERNATIONAL CONFERENCE ON COMPUTER VISION WORKSHOPS, ICCVW, 2023, : 139 - 148
  • [34] Data Augmentation and Evolutionary Algorithms to Improve the Prediction of Blood Glucose Levels In Scarcity of Training Data
    Manuel Velasco, Jose
    Garnica, Oscar
    Contador, Sergio
    Lanchares, Juan
    Maqueda, Esther
    Botella, Marta
    Ignacio Hidalgo, J.
    2017 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION (CEC), 2017, : 2193 - 2200
  • [35] Does training improve the business performance of small-scale entrepreneurs? An evaluative study
    Friedrich, Christian
    Glaub, Matthias
    Gramberg, Kristina
    Frese, Michael
    INDUSTRY AND HIGHER EDUCATION, 2006, 20 (02) : 75 - 84
  • [36] Small-scale defect detection in industrial environment based on lightweight deep learning network
    Ye Z.-X.
    Liu M.-Q.
    Zhang S.-L.
    Kongzhi yu Juece/Control and Decision, 2023, 38 (05): : 1231 - 1238
  • [37] Small-Scale Settlement Analyses for Visualizing Change. Potentials of Using Small-Scale Built Environment Data
    Ruprecht, Mei-Ing
    RAUMFORSCHUNG UND RAUMORDNUNG-SPATIAL RESEARCH AND PLANNING, 2014, 72 (03): : 227 - 238
  • [38] Rapid-Response Unsaturated Zone Hydrology: Small-Scale Data, Small-Scale Theory, Big Problems
    Nimmo, John R.
    Perkins, Kim S.
    Plampin, Michelle R.
    Walvoord, Michelle A.
    Ebel, Brian A.
    Mirus, Benjamin B.
    FRONTIERS IN EARTH SCIENCE, 2021, 9
  • [39] Adaptive Data Augmentation Training Method for SAR Military Target Classification
    Chen, Hongren
    Zhu, Daiyin
    Wu, Di
    Lv, Jiming
    Huang, Jiawei
    2024 9TH INTERNATIONAL CONFERENCE ON SIGNAL AND IMAGE PROCESSING, ICSIP, 2024, : 256 - 260
  • [40] Data Augmentation Based on Color Features for Limited Training Texture Classification
    Huu-Thanh Duong
    Vinh Truong Hoang
    PROCEEDINGS OF THE 2019 4TH INTERNATIONAL CONFERENCE ON INFORMATION TECHNOLOGY (INCIT): ENCOMPASSING INTELLIGENT TECHNOLOGY AND INNOVATION TOWARDS THE NEW ERA OF HUMAN LIFE, 2019, : 208 - 211