Backdoor Attacks against No-Reference Image Quality Assessment Models via a Scalable Trigger
Yi Yu, Song Xia, Xun Lin, Wenhan Yang, Shijian Lu, Yap-peng Tan, Alex, Kot

TL;DR
This paper introduces a scalable backdoor attack method against no-reference image quality assessment models, using triggers in the DCT domain and universal perturbations to manipulate model outputs effectively.
Contribution
The paper presents a novel poisoning-based backdoor attack on NR-IQA models, utilizing DCT domain triggers and universal adversarial perturbations for improved attack efficacy.
Findings
Effective manipulation of IQA scores demonstrated
DCT domain triggers enhance attack robustness
Both clean-label and poison-label attack methods validated
Abstract
No-Reference Image Quality Assessment (NR-IQA), responsible for assessing the quality of a single input image without using any reference, plays a critical role in evaluating and optimizing computer vision systems, e.g., low-light enhancement. Recent research indicates that NR-IQA models are susceptible to adversarial attacks, which can significantly alter predicted scores with visually imperceptible perturbations. Despite revealing vulnerabilities, these attack methods have limitations, including high computational demands, untargeted manipulation, limited practical utility in white-box scenarios, and reduced effectiveness in black-box scenarios. To address these challenges, we shift our focus to another significant threat and present a novel poisoning-based backdoor attack against NR-IQA (BAIQA), allowing the attacker to manipulate the IQA model's output to any desired target value by…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning
MethodsDiscrete Cosine Transform · Focus
