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RL-AWB: Deep Reinforcement Learning for Auto White Balance Correction in Low-Light Night-time Scenes

About

Nighttime color constancy remains a challenging problem in computational photography due to low-light noise and complex illumination conditions. We present RL-AWB, a novel framework combining statistical methods with deep reinforcement learning for nighttime white balance. Our method begins with a statistical algorithm tailored for nighttime scenes, integrating salient gray pixel detection with novel illumination estimation. Building on this foundation, we develop the first deep reinforcement learning approach for color constancy that leverages the statistical algorithm as its core, mimicking professional AWB tuning experts by dynamically optimizing parameters for each image. To facilitate cross-sensor evaluation, we introduce the first multi-sensor nighttime dataset. Experiment results demonstrate that our method achieves superior generalization capability across low-light and well-illuminated images. Project page: https://ntuneillee.github.io/research/rl-awb/

Yuan-Kang Lee, Kuan-Lin Chen, Chia-Che Chang, Yu-Lun Liu• 2026

Related benchmarks

TaskDatasetResultRank
Color ConstancyNCC (in-dataset)
Median Error1.98
29
Color ConstancyLEVI (in-dataset)
Median Error3.01
24
Color ConstancyNCC trained on LEVI (test)
Median Error1.99
10
Color ConstancyGehler-Shi
Median Error2.24
7
Auto White BalanceNCC → LEVI
Median Error5.1
5
Showing 5 of 5 rows

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