A comprehensive survey of robust deep learning in computer vision

Deep learning has presented remarkable progress in various tasks. Despite the excellent performance, deep learning models remain not robust, especially to well-designed adversarial examples, limiting deep learning models employed in security-critical applications. Therefore, how to improve the robus...

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Main Authors: Jia Liu, Yaochu Jin
Format: Article
Language:English
Published: KeAi Communications Co., Ltd. 2023-11-01
Series:Journal of Automation and Intelligence
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S294985542300045X
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author Jia Liu
Yaochu Jin
author_facet Jia Liu
Yaochu Jin
author_sort Jia Liu
collection DOAJ
description Deep learning has presented remarkable progress in various tasks. Despite the excellent performance, deep learning models remain not robust, especially to well-designed adversarial examples, limiting deep learning models employed in security-critical applications. Therefore, how to improve the robustness of deep learning has attracted increasing attention from researchers. This paper investigates the progress on the threat of deep learning and the techniques that can enhance the model robustness in computer vision. Unlike previous relevant survey papers summarizing adversarial attacks and defense technologies, this paper also provides an overview of the general robustness of deep learning. Besides, this survey elaborates on the current robustness evaluation approaches, which require further exploration. This paper also reviews the recent literature on making deep learning models resistant to adversarial examples from an architectural perspective, which was rarely mentioned in previous surveys. Finally, interesting directions for future research are listed based on the reviewed literature. This survey is hoped to serve as the basis for future research in this topical field.
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spelling doaj-art-7c0bbdc0c1f743e79328dbca6d4041e72025-08-20T01:49:31ZengKeAi Communications Co., Ltd.Journal of Automation and Intelligence2949-85542023-11-012417519510.1016/j.jai.2023.10.002A comprehensive survey of robust deep learning in computer visionJia Liu0Yaochu Jin1Ping An Property & Casualty Insurance Company, Shenzhen, 518048, Guangdong, ChinaSchool of Engineering, Westlake University, Hangzhou, 310030, China; Corresponding author.Deep learning has presented remarkable progress in various tasks. Despite the excellent performance, deep learning models remain not robust, especially to well-designed adversarial examples, limiting deep learning models employed in security-critical applications. Therefore, how to improve the robustness of deep learning has attracted increasing attention from researchers. This paper investigates the progress on the threat of deep learning and the techniques that can enhance the model robustness in computer vision. Unlike previous relevant survey papers summarizing adversarial attacks and defense technologies, this paper also provides an overview of the general robustness of deep learning. Besides, this survey elaborates on the current robustness evaluation approaches, which require further exploration. This paper also reviews the recent literature on making deep learning models resistant to adversarial examples from an architectural perspective, which was rarely mentioned in previous surveys. Finally, interesting directions for future research are listed based on the reviewed literature. This survey is hoped to serve as the basis for future research in this topical field.http://www.sciencedirect.com/science/article/pii/S294985542300045XRobustnessDeep learningComputer visionSurveyAdversarial attackAdversarial defenses
spellingShingle Jia Liu
Yaochu Jin
A comprehensive survey of robust deep learning in computer vision
Journal of Automation and Intelligence
Robustness
Deep learning
Computer vision
Survey
Adversarial attack
Adversarial defenses
title A comprehensive survey of robust deep learning in computer vision
title_full A comprehensive survey of robust deep learning in computer vision
title_fullStr A comprehensive survey of robust deep learning in computer vision
title_full_unstemmed A comprehensive survey of robust deep learning in computer vision
title_short A comprehensive survey of robust deep learning in computer vision
title_sort comprehensive survey of robust deep learning in computer vision
topic Robustness
Deep learning
Computer vision
Survey
Adversarial attack
Adversarial defenses
url http://www.sciencedirect.com/science/article/pii/S294985542300045X
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