CausalSR: Structural Causal Model-Driven Super-Resolution with Counterfactual Inference
- URL: http://arxiv.org/abs/2501.15852v1
- Date: Mon, 27 Jan 2025 08:19:17 GMT
- Title: CausalSR: Structural Causal Model-Driven Super-Resolution with Counterfactual Inference
- Authors: Zhengyang Lu, Bingjie Lu, Feng Wang,
- Abstract summary: This paper formulates super-resolution using structural causal models to reason about image degradation processes.<n>We propose a novel counterfactual learning strategy that leverages semantic guidance to reason about hypothetical degradation scenarios.<n>Our approach achieves significant improvements over state-of-the-art methods, particularly in challenging scenarios with compound degradations.
- Score: 2.147995542780459
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Physical and optical factors interacting with sensor characteristics create complex image degradation patterns. Despite advances in deep learning-based super-resolution, existing methods overlook the causal nature of degradation by adopting simplistic black-box mappings. This paper formulates super-resolution using structural causal models to reason about image degradation processes. We establish a mathematical foundation that unifies principles from causal inference, deriving necessary conditions for identifying latent degradation mechanisms and corresponding propagation. We propose a novel counterfactual learning strategy that leverages semantic guidance to reason about hypothetical degradation scenarios, leading to theoretically-grounded representations that capture invariant features across different degradation conditions. The framework incorporates an adaptive intervention mechanism with provable bounds on treatment effects, allowing precise manipulation of degradation factors while maintaining semantic consistency. Through extensive empirical validation, we demonstrate that our approach achieves significant improvements over state-of-the-art methods, particularly in challenging scenarios with compound degradations. On standard benchmarks, our method consistently outperforms existing approaches by significant margins (0.86-1.21dB PSNR), while providing interpretable insights into the restoration process. The theoretical framework and empirical results demonstrate the fundamental importance of causal reasoning in understanding image restoration systems.
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