面向边缘数据演化的轻量级鲁棒域自适应

IF 3.7 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Xinyu Guo;Xiaojiang Zuo;Rui Han;Junyan Ouyang;Jing Xie;Chi Harold Liu;Qinglong Zhang;Ying Guo;Jing Chen;Lydia Y. Chen
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引用次数: 0

摘要

由深度学习模型驱动的人工智能应用越来越多地在边缘本地运行。已部署的模型不仅会遇到不断发展的输入分布(域),还会面临来自第三方的对抗性攻击。这就需要使模型适应变换域,以保持较高的自然精度,同时避免降低模型的鲁棒精度。然而,现有的领域自适应和对抗性攻击防御技术往往具有相互冲突的优化目标,并且依赖于耗时的训练过程。本文提出了RobustDA,这是一种设备上的轻量级方法,可共同优化模型再训练中的自然和鲁棒准确性。它使用一组低级别适配器以较小的开销保留所有已学习领域的知识。在每次模型再训练中,RobustDA构建一个适配器来分离领域相关和鲁棒相关的模型参数,以避免它们在更新时的冲突。基于保留的知识,快速生成具有高质量伪标签的对抗样例,并使用它们来加速再训练过程。我们证明,在针对边缘设备的7种常见对抗性攻击下,与14种最先进的数据处理技术相比,所提出的协同优化方法同时将自然和鲁棒准确率提高了6.34%和11.41%。在相同的精度下,RobustDA还将再训练过程加快了4.09倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RobustDA: Lightweight Robust Domain Adaptation for Evolving Data at Edge
AI applications powered by deep learning models are increasingly run natively at edge. A deployed model not only encounters continuously evolving input distributions (domains) but also faces adversarial attacks from third-party. This necessitates adapting the model to shifting domains to maintain high natural accuracy, while avoiding degrading the model’s robust accuracy. However, existing domain adaptation and adversarial attack preventation techniques often have conflicting optimization objectives and they rely on time-consuming training process. This paper presents RobustDA, an on-device lightweight approach that co-optimizes natural and robust accuracies in model retraining. It uses a set of low-rank adapters to retain all learned domains’ knowledge with small overheads. In each model retraining, RobustDA constructs an adapter to separate domain-related and robust-related model parameters to avoid their conflicts in updating. Based on the retained knowledge, it quickly generates adversarial examples with high-quality pseudo-labels and uses them to accelerate the retraining process. We demonstrate that, comparing against 14 state-of-the-art DA techniques under 7 prevalent adversarial attacks on edge devices, the proposed co-optimization approach improves natural and robust accuracies by 6.34% and 11.41% simultaneously. Under the same accuracy, RobustDA also speeds up the retraining process by 4.09x.
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来源期刊
CiteScore
8.50
自引率
2.20%
发文量
86
期刊介绍: The IEEE Journal on Emerging and Selected Topics in Circuits and Systems is published quarterly and solicits, with particular emphasis on emerging areas, special issues on topics that cover the entire scope of the IEEE Circuits and Systems (CAS) Society, namely the theory, analysis, design, tools, and implementation of circuits and systems, spanning their theoretical foundations, applications, and architectures for signal and information processing.
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