CVIVApr 30, 2024

Causal Perception Inspired Representation Learning for Trustworthy Image Quality Assessment

arXiv:2404.19567v11 citationsh-index: 4
Originality Highly original
AI Analysis

This addresses the problem of vulnerability to adversarial attacks and lack of interpretability in IQA models for applications requiring reliable quality assessment.

The paper tackles the unreliability of deep neural network-based image quality assessment (IQA) in real-world applications by proposing a trustworthy model using Causal Perception inspired Representation Learning (CPRL), which outperforms state-of-the-art adversarial defense methods on four benchmark databases.

Despite great success in modeling visual perception, deep neural network based image quality assessment (IQA) still remains unreliable in real-world applications due to its vulnerability to adversarial perturbations and the inexplicit black-box structure. In this paper, we propose to build a trustworthy IQA model via Causal Perception inspired Representation Learning (CPRL), and a score reflection attack method for IQA model. More specifically, we assume that each image is composed of Causal Perception Representation (CPR) and non-causal perception representation (N-CPR). CPR serves as the causation of the subjective quality label, which is invariant to the imperceptible adversarial perturbations. Inversely, N-CPR presents spurious associations with the subjective quality label, which may significantly change with the adversarial perturbations. To extract the CPR from each input image, we develop a soft ranking based channel-wise activation function to mediate the causally sufficient (beneficial for high prediction accuracy) and necessary (beneficial for high robustness) deep features, and based on intervention employ minimax game to optimize. Experiments on four benchmark databases show that the proposed CPRL method outperforms many state-of-the-art adversarial defense methods and provides explicit model interpretation.

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