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WaveTransform: Crafting Adversarial Examples via Input Decomposition

机译:waveTransform:通过输入分解制定对抗性示例

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Frequency spectrum has played a significant role in learning unique and discriminating features for object recognition. Both low and high frequency information present in images have been extracted and learnt by a host of representation learning techniques, including deep learning. Inspired by this observation, we introduce a novel class of adversarial attacks, namely 'WaveTransform', that creates adversarial noise corresponding to low-frequency and high-frequency subbands, separately (or in combination). The frequency subbands are analyzed using wavelet decomposition; the subbands are corrupted and then used to construct an adversarial example. Experiments are performed using multiple databases and CNN models to establish the effectiveness of the proposed WaveTransform attack and analyze the importance of a particular frequency component. The robustness of the proposed attack is also evaluated through its transferability and resiliency against a recent adversarial defense algorithm. Experiments show that the proposed attack is effective against the defense algorithm and is also transferable across CNNs.
机译:频谱在学习用于对象识别的独特和区分特征方面发挥了重要作用。在图像中存在的低频率和高频信息已经提取和学习了一系列表示学习技术,包括深度学习。灵感来自这种观察,我们介绍了一种新颖的对抗性攻击,即“wheVetransform”,它产生对应于低频和高频子带的对抗噪声,分别(或组合)。使用小波分解分析频率子带;子带损坏,然后用于构建对抗示例。使用多个数据库和CNN模型进行实验,以建立所提出的WHETRANSFORM攻击的有效性,并分析特定频率分量的重要性。所提出的攻击的稳健性也通过其对最近的对抗防御算法的可转移和弹性来评估。实验表明,所提出的攻击对防御算法有效,并且还可以在CNN上转移。

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