Towards properties of adversarial image perturbations
Journal:
arXiv
Published Date:
Mar 18, 2025
Abstract
Using stochastic gradient approach we study the properties of adversarial
perturbations resulting in noticeable growth of VMAF image quality metric. The
structure of the perturbations is investigated depending on the acceptable PSNR
values and based on the Fourier power spectrum computations for the
perturbations. It is demonstrated that moderate variation of image brightness
($\sim 10$ pixel units in a restricted region of an image can result in VMAF
growth by $\sim 60\%$). Unlike some other methods demonstrating similar VMAF
growth, the subjective quality of an image remains almost unchanged. It is also
shown that the adversarial perturbations may demonstrate approximately linear
dependence of perturbation amplitudes on the image brightness. The
perturbations are studied based on the direct VMAF optimization in PyTorch. The
significant discrepancies between the metric values and subjective judgements
are also demonstrated when image restoration from noise is carried out using
the same direct VMAF optimization.