计算机科学
最大值和最小值
忠诚
变压器
人工智能
亲密度
正规化(语言学)
预处理器
模式识别(心理学)
算法
数学
量子力学
电信
物理
数学分析
电压
作者
Ali Hatamizadeh,Hongxu Yin,Holger R. Roth,Wenqi Li,Jan Kautz,Daguang Xu,Pavlo Molchanov
出处
期刊:
日期:2022-06-01
被引量:46
标识
DOI:10.1109/cvpr52688.2022.00978
摘要
In this work we demonstrate the vulnerability of vision transformers (ViTs) to gradient-based inversion attacks. During this attack, the original data batch is reconstructed given model weights and the corresponding gradients. We introduce a method, named GradViT, that optimizes random noise into naturally looking images via an iterative process. The optimization objective consists of (i) a loss on matching the gradients, (ii) image prior in the form of distance to batch-normalization statistics of a pretrained CNN model, and (iii) a total variation regularization on patches to guide correct recovery locations. We propose a unique loss scheduling function to overcome local minima during optimization. We evaluate GadViT on ImageNet1K and MS-Celeb-1M datasets, and observe unprecedentedly high fidelity and closeness to the original (hidden) data. During the analysis we find that vision transformers are significantly more vulnerable than previously studied CNNs due to the presence of the attention mechanism. Our method demonstrates new state-of-the-art results for gradient inversion in both qualitative and quantitative metrics. Project page at https://gradvit.github.io/.
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