RL-AWB:基于深度强化学习的低光照夜间场景自动白平衡校正 / RL-AWB: Deep Reinforcement Learning for Auto White Balance Correction in Low-Light Night-time Scenes
1️⃣ 一句话总结
这篇论文提出了一种结合统计方法和深度强化学习的新框架,用于解决夜间低光照条件下的自动白平衡难题,其核心是模仿专业调校师,为每张图片动态优化参数,从而在多种光照条件下都表现出优异的泛化能力。
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: this https URL
RL-AWB:基于深度强化学习的低光照夜间场景自动白平衡校正 / RL-AWB: Deep Reinforcement Learning for Auto White Balance Correction in Low-Light Night-time Scenes
这篇论文提出了一种结合统计方法和深度强化学习的新框架,用于解决夜间低光照条件下的自动白平衡难题,其核心是模仿专业调校师,为每张图片动态优化参数,从而在多种光照条件下都表现出优异的泛化能力。
源自 arXiv: 2601.05249