Adaptive Data Augmentation to Achieve Noise Robustness and Overcome Data Deficiency for Deep Learning

被引:10
|
作者
Kim, Eunkyeong [1 ]
Kim, Jinyong [1 ]
Lee, Hansoo [1 ]
Kim, Sungshin [1 ]
机构
[1] Pusan Natl Univ, Dept Elect & Elect Engn, Busan 46241, South Korea
来源
APPLIED SCIENCES-BASEL | 2021年 / 11卷 / 12期
关键词
data augmentation; data deficiency; adversarial attack; deep learning; color perturbation; CONVOLUTIONAL NEURAL-NETWORK; SYSTEM; IDENTIFICATION; RECOGNITION; INDUSTRY; VISION; PSNR;
D O I
10.3390/app11125586
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Artificial intelligence technologies and robot vision systems are core technologies in smart factories. Currently, there is scholarly interest in automatic data feature extraction in smart factories using deep learning networks. However, sufficient training data are required to train these networks. In addition, barely perceptible noise can affect classification accuracy. Therefore, to increase the amount of training data and achieve robustness against noise attacks, a data augmentation method implemented using the adaptive inverse peak signal-to-noise ratio was developed in this study to consider the influence of the color characteristics of the training images. This method was used to automatically determine the optimal perturbation range of the color perturbation method for generating images using weights based on the characteristics of the training images. The experimental results showed that the proposed method could generate new training images from original images, classify noisy images with greater accuracy, and generally improve the classification accuracy. This demonstrates that the proposed method is effective and robust to noise, even when the training data are deficient.
引用
收藏
页数:17
相关论文
共 50 条
  • [21] GMNI: Achieve good data augmentation in unsupervised graph contrastive learning
    Xiong, Xin
    Wang, Xiangyu
    Yang, Suorong
    Shen, Furao
    Zhao, Jian
    NEURAL NETWORKS, 2025, 181
  • [22] Rethinking data augmentation for adversarial robustness
    Eghbal-zadeh, Hamid
    Zellinger, Werner
    Pintor, Maura
    Grosse, Kathrin
    Koutini, Khaled
    Moser, Bernhard A.
    Biggio, Battista
    Widmer, Gerhard
    INFORMATION SCIENCES, 2024, 654
  • [23] Data Augmentation Can Improve Robustness
    Rebuffi, Sylvestre-Alvise
    Gowal, Sven
    Calian, Dan
    Stimberg, Florian
    Wiles, Olivia
    Mann, Timothy
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 34 (NEURIPS 2021), 2021, 34
  • [24] Learning Deep Sigmoid Belief Networks with Data Augmentation
    Gan, Zhe
    Henao, Ricardo
    Carlson, David
    Carin, Lawrence
    ARTIFICIAL INTELLIGENCE AND STATISTICS, VOL 38, 2015, 38 : 268 - 276
  • [25] Capturing Model Uncertainty with Data Augmentation in Deep Learning
    Jiang, Wenming
    Zhao, Ying
    Wu, Yihan
    Zuo, Haojia
    PROCEEDINGS OF THE 2022 SIAM INTERNATIONAL CONFERENCE ON DATA MINING, SDM, 2022, : 271 - 279
  • [26] MeshCut data augmentation for deep learning in computer vision
    Jiang, Wei
    Zhang, Kai
    Wang, Nan
    Yu, Miao
    PLOS ONE, 2020, 15 (12):
  • [27] A Bayesian Data Augmentation Approach for Learning Deep Models
    Toan Tran
    Trung Pham
    Carneiro, Gustavo
    Palmer, Lyle
    Reid, Ian
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 30 (NIPS 2017), 2017, 30
  • [28] Data augmentation for deep-learning-based electroencephalography
    Lashgari, Elnaz
    Liang, Dehua
    Maoz, Uri
    JOURNAL OF NEUROSCIENCE METHODS, 2020, 346
  • [29] Time Series Data Augmentation for Deep Learning: A Survey
    Wen, Qingsong
    Sun, Liang
    Yang, Fan
    Song, Xiaomin
    Gao, Jingkun
    Wang, Xue
    Xu, Huan
    PROCEEDINGS OF THE THIRTIETH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, IJCAI 2021, 2021, : 4653 - 4660
  • [30] Survey on Videos Data Augmentation for Deep Learning Models
    Cauli, Nino
    Recupero, Diego Reforgiato
    FUTURE INTERNET, 2022, 14 (03)