Synergy between traditional classification and classification based on negative features in deep convolutional neural networks

被引:0
作者
Nemanja Milošević
Miloš Racković
机构
[1] University of Novi Sad,Department of Mathematics and Informatics, Faculty of Sciences
来源
Neural Computing and Applications | 2021年 / 33卷
关键词
Neural networks; Machine learning; Convolutional neural networks; Machine learning robustness; Computer vision;
D O I
暂无
中图分类号
学科分类号
摘要
In recent times, convolutional neural networks became an irreplaceable tool in many different machine learning applications, especially in image classification. On the other hand, new research about robustness and susceptibility of these models to different adversarial attacks has emerged. With the rise in usage and widespread adoption of these models, it is very important to make them suitable for critical applications. In our previous work, we experimented with a new type of learning applicable to all convolutional neural networks: classification based on missing (low-impact) features. In the case of partial inputs/image occlusion, we have shown that our new method creates models that are more robust and perform better when compared to traditional models of the same architecture. In this paper, we explore an interesting characteristic of our newly developed models in that while we see a general increase in validation accuracy, we also lose some important knowledge. We propose one solution to overcome this problem and validate our assumptions against CIFAR-10 image classification dataset.
引用
收藏
页码:7593 / 7602
页数:9
相关论文
共 55 条
  • [1] Aquino G(2020)Novel nonlinear hypothesis for the delta parallel robot modeling IEEE Access 8 46324-46334
  • [2] Rubio JDJ(2020)Devdan: deep evolving denoising autoencoder Neurocomputing 390 297-314
  • [3] Pacheco J(2019)Improving optimization of convolutional neural networks through parameter fine-tuning Neural Comput Appl 31 3469-3479
  • [4] Gutierrez GJ(2019)Wavelet-based EEG processing for epilepsy detection using fuzzy entropy and associative petri net IEEE Access 7 103255-103262
  • [5] Ochoa G(2009)Sofmls: online self-organizing fuzzy modified least-squares network IEEE Trans Fuzzy Syst 17 1296-1309
  • [6] Balcazar R(2020)Hessian with mini-batches for electrical demand prediction Appl Sci 10 2036-1494
  • [7] Cruz DR(2018)Pedestrian detection based on the privileged information Neural Comput Appl 29 1485-490
  • [8] Garcia E(2019)Classification based on missing features in deep convolutional neural networks Neural Netw World 221 234-16416
  • [9] Novoa JF(2017)LTR-MDTS structure: a structure for multiple dependent time series prediction Comput Sci Inf Syst 14 467-1312
  • [10] Zacarias A(2016)A system for deductive prediction and analysis of movement of basketball referees Multimed Tools Appl 75 16389-244