CVLGJan 24

OTI: A Model-free and Visually Interpretable Measure of Image Attackability

arXiv:2601.175360.151 citationsh-index: 11
AI Analysis55

For the adversarial machine learning community, OTI offers a practical, model-agnostic tool to assess image vulnerability without requiring access to task-specific models.

The paper proposes Object Texture Intensity (OTI), a model-free and visually interpretable measure of image attackability that quantifies how easily an image can be adversarially perturbed. Experiments show OTI is effective and computationally efficient, providing a visual understanding of attackability.

Despite the tremendous success of neural networks, benign images can be corrupted by adversarial perturbations to deceive these models. Intriguingly, images differ in their attackability. Specifically, given an attack configuration, some images are easily corrupted, whereas others are more resistant. Evaluating image attackability has important applications in active learning, adversarial training, and attack enhancement. This prompts a growing interest in developing attackability measures. However, existing methods are scarce and suffer from two major limitations: (1) They rely on a model proxy to provide prior knowledge (e.g., gradients or minimal perturbation) to extract model-dependent image features. Unfortunately, in practice, many task-specific models are not readily accessible. (2) Extracted features characterizing image attackability lack visual interpretability, obscuring their direct relationship with the images. To address these, we propose a novel Object Texture Intensity (OTI), a model-free and visually interpretable measure of image attackability, which measures image attackability as the texture intensity of the image's semantic object. Theoretically, we describe the principles of OTI from the perspectives of decision boundaries as well as the mid- and high-frequency characteristics of adversarial perturbations. Comprehensive experiments demonstrate that OTI is effective and computationally efficient. In addition, our OTI provides the adversarial machine learning community with a visual understanding of attackability.

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