IAP: Invisible Adversarial Patch Attack through Perceptibility-Aware Localization and Perturbation Optimization
Journal:
arXiv
Published Date:
Jul 9, 2025
Abstract
Despite modifying only a small localized input region, adversarial patches
can drastically change the prediction of computer vision models. However, prior
methods either cannot perform satisfactorily under targeted attack scenarios or
fail to produce contextually coherent adversarial patches, causing them to be
easily noticeable by human examiners and insufficiently stealthy against
automatic patch defenses. In this paper, we introduce IAP, a novel attack
framework that generates highly invisible adversarial patches based on
perceptibility-aware localization and perturbation optimization schemes.
Specifically, IAP first searches for a proper location to place the patch by
leveraging classwise localization and sensitivity maps, balancing the
susceptibility of patch location to both victim model prediction and human
visual system, then employs a perceptibility-regularized adversarial loss and a
gradient update rule that prioritizes color constancy for optimizing invisible
perturbations. Comprehensive experiments across various image benchmarks and
model architectures demonstrate that IAP consistently achieves competitive
attack success rates in targeted settings with significantly improved patch
invisibility compared to existing baselines. In addition to being highly
imperceptible to humans, IAP is shown to be stealthy enough to render several
state-of-the-art patch defenses ineffective.