论文标题
夜间除去合成基准测试
Nighttime Dehazing with a Synthetic Benchmark
论文作者
论文摘要
由于活跃的人造光源和吸收雾化/散射的照明不均匀,因此增加夜间朦胧图像的可见性是具有挑战性的。没有大规模的基准数据集阻碍了该领域的进展。为了解决这个问题,我们提出了一种称为3R的新型合成方法,以模拟白天清除图像中的夜间朦胧图像,该图像首先重建场景几何形状,然后模拟光线和对象反射,并最终呈现雾霾效应。基于它,我们通过从先前的经验分布中抽样现实世界的浅色来生成逼真的夜间朦胧图像。合成基准测试的实验表明,降解因子共同降低了图像质量。为了解决此问题,我们提出了一个最佳的最大反射率,然后将颜色校正从雾霾去除并顺序解决。此外,我们还设计了一个简单但有效的基于学习的基线,该基线具有基于Mobilenet-V2主链的编码器解码器结构。实验结果表明,就图像质量和运行时而言,它们比最先进的方法的优势。数据集和源代码均可在https://github.com/chaimi2013/3r上找到。
Increasing the visibility of nighttime hazy images is challenging because of uneven illumination from active artificial light sources and haze absorbing/scattering. The absence of large-scale benchmark datasets hampers progress in this area. To address this issue, we propose a novel synthetic method called 3R to simulate nighttime hazy images from daytime clear images, which first reconstructs the scene geometry, then simulates the light rays and object reflectance, and finally renders the haze effects. Based on it, we generate realistic nighttime hazy images by sampling real-world light colors from a prior empirical distribution. Experiments on the synthetic benchmark show that the degrading factors jointly reduce the image quality. To address this issue, we propose an optimal-scale maximum reflectance prior to disentangle the color correction from haze removal and address them sequentially. Besides, we also devise a simple but effective learning-based baseline which has an encoder-decoder structure based on the MobileNet-v2 backbone. Experiment results demonstrate their superiority over state-of-the-art methods in terms of both image quality and runtime. Both the dataset and source code will be available at https://github.com/chaimi2013/3R.