Causal Disentanglement-Inspired Degradation Representation Learning for Full-Reference Image Quality Assessment 文章

ArXiv CS.CV2026-05-29NEWSen作者: Zhen Zhang, Jielei Chu, Tian Zhang, Lin Ma, Fengmao Lv, Weide Liu, Tianrui Li, Yuming Fang

摘要

arXiv:2604.21654v3 Announce Type: replace Abstract: Existing deep network-based full-reference image quality assessment (FR-IQA) models typically work by performing pairwise comparisons of deep features from the reference and distorted images. In this paper, we approach this problem from a different perspective and propose a novel FR-IQA paradigm based on causal inference and decoupled representation learning. Unlike typical feature comparison-based FR-IQA models, our approach formulates degradation estimation as a causal disentanglement process guided by intervention on latent representations. We first decouple degradation and content representations by exploiting the content invariance between the reference and distorted images. Second, inspired by the human visual masking effect, we design a masking module to model the causal relationship between image content and degradation features, thereby extracting content-influenced degradation features from distorted images.