Detecting Conventional and Adversarial Attacks Using Deep Learning Techniques: A Systematic Review
Author
Abstract

Significant progress has been made towards developing Deep Learning (DL) in Artificial Intelligence (AI) models that can make independent decisions. However, this progress has also highlighted the emergence of malicious entities that aim to manipulate the outcomes generated by these models. Due to increasing complexity, this is a concerning issue in various fields, such as medical image classification, autonomous vehicle systems, malware detection, and criminal justice. Recent research advancements have highlighted the vulnerability of these classifiers to both conventional and adversarial assaults, which may skew their results in both the training and testing stages. The Systematic Literature Review (SLR) aims to analyse traditional and adversarial attacks comprehensively. It evaluates 45 published works from 2017 to 2023 to better understand adversarial attacks, including their impact, causes, and standard mitigation approaches.

Year of Publication
2023
Date Published
oct
URL
https://ieeexplore.ieee.org/document/10323872
DOI
10.1109/ISNCC58260.2023.10323872
Google Scholar | BibTeX | DOI