深度学习中对抗性攻击的威胁:调查

Roshni singh, Ataussamad
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引用次数: 0

摘要

在当今时代,深度学习已成为人工智能及其模型领域最近崛起的中心。有各种各样的人工智能模型可以被视为需要更大的力量来获得负面定义的信息源。它还导致对抗性范式中高度潜在的安全问题;DNN也可能对结果中预期的输入进行错误分类。DNN可以准确地解决复杂问题。在视觉研究领域,它被任命为学习涉及关键安全应用的许多任务的深度神经模型。我们还重新审视了计算机视觉在深度学习对抗性攻击中的贡献,并讨论了其防御机制。许多作者在这一领域提出了新的想法,自第一代方法问世以来,这一领域已经发生了重大变化。为了确保各种研究的最佳正确性和真实性,重点关注在著名的计算机视觉和深度学习来源发表的同行评审文章。除了文献综述外,本文还为该领域的非专家定义了一些标准技术术语。本文综述了通过各种方法和技术进行的对抗性攻击,以及它们在深度学习领域和未来范围内的防御。最后,我们对计算机视觉领域的研究提出了一些看法。
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Threat of Adversarial Attacks within Deep Learning: Survey
In today’s era, Deep Learning has become the center of recent ascent in the field of artificial intelligence and its models. There are various Artificial Intelligence models that can be viewed as needing more strength for adversely defined information sources. It also leads to a high potential security concern in the adversarial paradigm; the DNN can also misclassify inputs that appear to expect in the result. DNN can solve complex problems accurately. It is empaneled in the vision research area to learn deep neural models for many tasks involving critical security applications. We have also revisited the contributions of computer vision in adversarial attacks on deep learning and discussed its defenses. Many of the authors have given new ideas in this area, which has evolved significantly since witnessing the first-generation methods. For optimal correctness of various research and authenticity, the focus is on peer-reviewed articles issued in the prestigious sources of computer vision and deep learning. Apart from the literature review, this paper defines some standard technical terms for non-experts in the field. This paper represents the review of the adversarial attacks via various methods and techniques along with their defenses within the deep learning area and future scope. Lastly, we bring out the survey to provide a viewpoint of the research in this Computer Vision area.
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来源期刊
Recent Advances in Computer Science and Communications
Recent Advances in Computer Science and Communications Computer Science-Computer Science (all)
CiteScore
2.50
自引率
0.00%
发文量
142
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