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Black-box adversarial attacks on video recognition models

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Version 2 2024-06-06, 10:41
Version 1 2020-06-16, 15:02
conference contribution
posted on 2024-06-06, 10:41 authored by Linxi Jiang, Xingjun Ma, Shaoxiang Chen, James Bailey, Yu-Gang Jiang
Deep neural networks (DNNs) are known for their vulnerability to adversarial examples. These are examples that have undergone small, carefully crafted perturbations, and which can easily fool a DNN into making misclassifications at test time. Thus far, the field of adversarial research has mainly focused on image models, under either a white-box setting, where an adversary has full access to model parameters, or a black-box setting where an adversary can only query the target model for probabilities or labels. Whilst several white-box attacks have been proposed for video models, black-box video attacks are still unexplored. To close this gap, we propose the first black-box video attack framework, called V-BAD. V-BAD utilizestentative perturbations transferred from image models andpartition-based rectifications found by the NES to obtain good adversarial gradient estimates with fewer queries to the target model. V-BAD is equivalent to estimating the projection of the adversarial gradient on a selected subspace. Using three benchmark video datasets, we demonstrate that V-BAD can craft both untargeted and targeted attacks to fool two state-of-the-art deep video recognition models. For the targeted attack, it achieves $>$93% success rate using only an average of $3.4 \sim 8.4 \times 10^4$ queries, a similar number of queries to state-of-the-art black-box image attacks. This is despite the fact that videos often have two orders of magnitude higher dimensionality than static images. We believe that V-BAD is a promising new tool to evaluate and improve the robustness of video recognition models to black-box adversarial attacks.

History

Pagination

864-872

Location

Nice, France

Open access

  • Yes

Start date

2019-10-21

End date

2019-10-25

ISBN-13

9781450368896

Language

eng

Publication classification

E1.1 Full written paper - refereed

Editor/Contributor(s)

Unknown

Title of proceedings

MM 2019 : Proceedings of the 27th ACM International Conference on Mulitmedia

Event

Multimedia. International Conference (27th : 2019 : Nice, France)

Publisher

ACM

Place of publication

[Nice, France]

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