Segmentation Fault: A Cheap Defense Against Adversarial Machine Learning

被引:1
|
作者
Al Bared, Doha [1 ]
Nassar, Mohamed [2 ]
机构
[1] Amer Univ Beirut AUB, Dept Comp Sci, Beirut, Lebanon
[2] Univ New Haven, Dept Comp Sci, West Haven, CT USA
关键词
Machine Learning; Adversarial ML; Neural Networks; Computer Vision;
D O I
10.1109/MENACOMM50742.2021.9678308
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Recently published attacks against deep neural networks (DNNs) have stressed the importance of methodologies and tools to assess the security risks of using this technology in critical systems. Efficient techniques for detecting adversarial machine learning helps establishing trust and boost the adoption of deep learning in sensitive and security systems. In this paper, we propose a new technique for defending deep neural network classifiers, and convolutional ones in particular. Our defense is cheap in the sense that it requires less computation power despite a small cost to pay in terms of detection accuracy. The work refers to a recently published technique called ML-LOO. We replace the costly pixel by pixel leave-one-out approach of ML-LOO by adopting coarse-grained leave-one-out. We evaluate and compare the efficiency of different segmentation algorithms for this task. Our results show that a large gain in efficiency is possible, even though penalized by a marginal decrease in detection accuracy.
引用
收藏
页码:37 / 42
页数:6
相关论文
共 50 条
  • [1] A Moving Target Defense against Adversarial Machine Learning
    Roy, Abhishek
    Chhabra, Anshuman
    Kamhoua, Charles A.
    Mohapatra, Prasant
    [J]. SEC'19: PROCEEDINGS OF THE 4TH ACM/IEEE SYMPOSIUM ON EDGE COMPUTING, 2019, : 383 - 388
  • [2] A Network Security Classifier Defense: Against Adversarial Machine Learning Attacks
    De Lucia, Michael J.
    Cotton, Chase
    [J]. PROCEEDINGS OF THE 2ND ACM WORKSHOP ON WIRELESS SECURITY AND MACHINE LEARNING, WISEML 2020, 2020, : 67 - 73
  • [3] Using Undervolting as an on-Device Defense Against Adversarial Machine Learning Attacks
    Majumdar, Saikat
    Samavatian, Mohammad Hossein
    Barber, Kristin
    Teodorescu, Radu
    [J]. 2021 IEEE INTERNATIONAL SYMPOSIUM ON HARDWARE ORIENTED SECURITY AND TRUST (HOST), 2021, : 158 - 169
  • [4] Defense strategies for Adversarial Machine Learning: A survey
    Bountakas, Panagiotis
    Zarras, Apostolis
    Lekidis, Alexios
    Xenakis, Christos
    [J]. COMPUTER SCIENCE REVIEW, 2023, 49
  • [5] AttriGuard: A Practical Defense Against Attribute Inference Attacks via Adversarial Machine Learning
    Jia, Jinyuan
    Gong, Neil Zhenqiang
    [J]. PROCEEDINGS OF THE 27TH USENIX SECURITY SYMPOSIUM, 2018, : 513 - 529
  • [6] Defense Against Adversarial Attacks in Deep Learning
    Li, Yuancheng
    Wang, Yimeng
    [J]. APPLIED SCIENCES-BASEL, 2019, 9 (01):
  • [7] Adversarial Machine Learning Attacks against Intrusion Detection Systems: A Survey on Strategies and Defense
    Alotaibi, Afnan
    Rassam, Murad A.
    [J]. FUTURE INTERNET, 2023, 15 (02)
  • [8] ENSEMBLE ADVERSARIAL TRAINING BASED DEFENSE AGAINST ADVERSARIAL ATTACKS FOR MACHINE LEARNING-BASED INTRUSION DETECTION SYSTEM
    Haroon, M. S.
    Ali, H. M.
    [J]. NEURAL NETWORK WORLD, 2023, 33 (05) : 317 - 336
  • [9] Apollon: A robust defense system against Adversarial Machine Learning attacks in Intrusion Detection Systems
    Paya, Antonio
    Arroni, Sergio
    Garcia-Diaz, Vicente
    Gomez, Alberto
    [J]. COMPUTERS & SECURITY, 2024, 136
  • [10] Deep Learning Defense Method Against Adversarial Attacks
    Wang, Ling
    Zhang, Cheng
    Liu, Jie
    [J]. 2020 IEEE INTERNATIONAL CONFERENCE ON SYSTEMS, MAN, AND CYBERNETICS (SMC), 2020, : 3667 - 3671