Traversing the Subspace of Adversarial Patches
December 02, 2024 Β· Declared Dead Β· π Machine Vision and Applications
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Authors
Jens Bayer, Stefan Becker, David MΓΌnch, Michael Arens, JΓΌrgen Beyerer
arXiv ID
2412.01527
Category
cs.CV: Computer Vision
Citations
1
Venue
Machine Vision and Applications
Last Checked
4 months ago
Abstract
Despite ongoing research on the topic of adversarial examples in deep learning for computer vision, some fundamentals of the nature of these attacks remain unclear. As the manifold hypothesis posits, high-dimensional data tends to be part of a low-dimensional manifold. To verify the thesis with adversarial patches, this paper provides an analysis of a set of adversarial patches and investigates the reconstruction abilities of three different dimensionality reduction methods. Quantitatively, the performance of reconstructed patches in an attack setting is measured and the impact of sampled patches from the latent space during adversarial training is investigated. The evaluation is performed on two publicly available datasets for person detection. The results indicate that more sophisticated dimensionality reduction methods offer no advantages over a simple principal component analysis.
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