One-Index Vector Quantization Based Adversarial Attack on Image Classification
To improve storage and transmission, images are generally compressed. Vector quantization (VQ) is a popular compression method as it has a high compression ratio that suppresses other compression techniques. Despite this, existing adversarial attack methods on image classification are mostly perform...
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Zusammenfassung: | To improve storage and transmission, images are generally compressed. Vector
quantization (VQ) is a popular compression method as it has a high compression
ratio that suppresses other compression techniques. Despite this, existing
adversarial attack methods on image classification are mostly performed in the
pixel domain with few exceptions in the compressed domain, making them less
applicable in real-world scenarios. In this paper, we propose a novel one-index
attack method in the VQ domain to generate adversarial images by a differential
evolution algorithm, successfully resulting in image misclassification in
victim models. The one-index attack method modifies a single index in the
compressed data stream so that the decompressed image is misclassified. It only
needs to modify a single VQ index to realize an attack, which limits the number
of perturbed indexes. The proposed method belongs to a semi-black-box attack,
which is more in line with the actual attack scenario. We apply our method to
attack three popular image classification models, i.e., Resnet, NIN, and VGG16.
On average, 55.9% and 77.4% of the images in CIFAR-10 and Fashion MNIST,
respectively, are successfully attacked, with a high level of misclassification
confidence and a low level of image perturbation. |
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DOI: | 10.48550/arxiv.2409.01282 |