ControlLight: Towards Controllable, Consistent, and Generalizable Low-Light Enhancement
Abstract
ControlLight is a controllable low-light enhancement framework that uses a large-scale real-world dataset and weighted flow matching loss to ensure consistent image quality across varying enhancement strengths.
Existing deep learning-based low-light enhancement methods are typically trained on limited datasets with single enhancement targets, which restricts their generalization ability and controllability in real-world applications. To overcome these limitations, we propose ControlLight, a controllable, consistent, and generalizable framework for low-light enhancement. We first construct a large-scale dataset of real-world degraded images with continuous illumination-strength supervision. To further ensure consistent outputs under different control strengths, we introduce a misalignment-aware weighted flow matching loss that preserves image structure across continuous enhancement strengths. ControlLight allows users to edit real-world degraded low-light images toward satisfactory enhancement results by flexibly controlling the strength while preserving visual consistency and realism. Extensive experiments show that ControlLight achieves state-of-the-art performance against existing low-light enhancement approaches while demonstrating strong continuous controllability and generalization to real-world scenarios.
Community
ControlLight resources:
- Paper: https://arxiv.org/abs/2605.25569
- Project page: https://yfyang007.github.io/ControlLight/
- Model: https://huggingface.co/ControlLight/ControlLight
- Dataset: https://huggingface.co/datasets/ControlLight/Light100K
- Code: https://github.com/yfyang007/ControlLight
ControlLight supports continuous enhancement-strength control with consistent outputs while preserving image structure and natural visual details.
Interesting breakdown of this paper on arXivLens: https://arxivlens.com/PaperView/Details/controllight-towards-controllable-consistent-and-generalizable-low-light-enhancement-7791-6b39a15a
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