频率-空间互补:跨域少射学习的统一通道特定风格攻击

Zhong Ji;Zhilong Wang;Xiyao Liu;Yunlong Yu;Yanwei Pang;Jungong Han
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引用次数: 0

摘要

Cross-Domain few - shot Learning (CD-FSL)解决了在只有少数实例可用的情况下使用域外数据识别目标的挑战。目前许多CD-FSL方法主要侧重于增强模型在空间域的泛化能力,而忽略了频域在域泛化中的作用。为了利用频域处理全局信息的优势,提出了一种频率-空间互补(FSC)模型,该模型将频域信息与空间域信息相结合,从被攻击的数据样式中学习域不变信息。具体来说,我们设计了一个频率和空间融合(FusionFS)模块来增强模型捕获风格相关信息的能力。此外,我们提出了梯度引导统一风格攻击(Gradient-guided Unified Style attack, GUSA)和通道特定攻击强度计算(Channel-specific attack Intensity Calculation, CAIC)两种攻击策略,针对不同的通道进行针对性攻击,在训练阶段提供更多样化的风格数据,特别是在源域数据风格同质的单源域场景下。跨8个目标域的大量实验表明,我们的方法显著提高了模型在各种风格下的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Frequency-Spatial Complementation: Unified Channel-Specific Style Attack for Cross-Domain Few-Shot Learning
Cross-Domain Few-Shot Learning (CD-FSL) addresses the challenges of recognizing targets with out-of-domain data when only a few instances are available. Many current CD-FSL approaches primarily focus on enhancing the generalization capabilities of models in spatial domain, which neglects the role of the frequency domain in domain generalization. To take advantage of frequency domain in processing global information, we propose a Frequency-Spatial Complementation (FSC) model, which combines frequency domain information with spatial domain information to learn domain-invariant information from attacked data style. Specifically, we design a Frequency and Spatial Fusion (FusionFS) module to enhance the ability of the model to capture style-related information. Besides, we propose two attack strategies, i.e., the Gradient-guided Unified Style Attack (GUSA) strategy and the Channel-specific Attack Intensity Calculation (CAIC) strategy, which conduct targeted attacks on different channels to provide more diversified style data during the training phase, especially in single-source domain scenarios where the source domain data style is homogeneous. Extensive experiments across eight target domains demonstrate that our method significantly improves the model’s performance under various styles.
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