CIVQLLIE: Causal Intervention with Vector Quantization for Low-Light Image Enhancement
Tongshun Zhang, Pingping Liu, Zhe Zhang, Qiuzhan Zhou

TL;DR
CIVQLLIE introduces a causal intervention framework utilizing vector quantization and discrete representations to improve low-light image enhancement, addressing distribution shifts and enhancing detail reconstruction.
Contribution
The paper proposes a novel causal intervention approach with vector quantization for low-light image enhancement, enabling better generalization and detail recovery in complex scenes.
Findings
Effective correction of distribution shifts in low-light images.
Improved detail preservation and color consistency.
Enhanced generalization over existing methods.
Abstract
Images captured in nighttime scenes suffer from severely reduced visibility, hindering effective content perception. Current low-light image enhancement (LLIE) methods face significant challenges: data-driven end-to-end mapping networks lack interpretability or rely on unreliable prior guidance, struggling under extremely dark conditions, while physics-based methods depend on simplified assumptions that often fail in complex real-world scenarios. To address these limitations, we propose CIVQLLIE, a novel framework that leverages the power of discrete representation learning through causal reasoning. We achieve this through Vector Quantization (VQ), which maps continuous image features to a discrete codebook of visual tokens learned from large-scale high-quality images. This codebook serves as a reliable prior, encoding standardized brightness and color patterns that are independent of…
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