CVMMNov 1, 2022

Universal Perturbation Attack on Differentiable No-Reference Image- and Video-Quality Metrics

arXiv:2211.00366v125 citationsh-index: 8
AI Analysis

This work addresses the problem of ensuring fair algorithm comparisons for developers and researchers by exposing metric unreliability, though it is incremental as it extends existing adversarial attack techniques to quality metrics.

The authors tackled the vulnerability of differentiable no-reference image- and video-quality metrics to adversarial attacks by proposing a universal perturbation method, successfully increasing scores for seven metrics and identifying their varying levels of resistance.

Universal adversarial perturbation attacks are widely used to analyze image classifiers that employ convolutional neural networks. Nowadays, some attacks can deceive image- and video-quality metrics. So sustainability analysis of these metrics is important. Indeed, if an attack can confuse the metric, an attacker can easily increase quality scores. When developers of image- and video-algorithms can boost their scores through detached processing, algorithm comparisons are no longer fair. Inspired by the idea of universal adversarial perturbation for classifiers, we suggest a new method to attack differentiable no-reference quality metrics through universal perturbation. We applied this method to seven no-reference image- and video-quality metrics (PaQ-2-PiQ, Linearity, VSFA, MDTVSFA, KonCept512, Nima and SPAQ). For each one, we trained a universal perturbation that increases the respective scores. We also propose a method for assessing metric stability and identify the metrics that are the most vulnerable and the most resistant to our attack. The existence of successful universal perturbations appears to diminish the metric's ability to provide reliable scores. We therefore recommend our proposed method as an additional verification of metric reliability to complement traditional subjective tests and benchmarks.

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