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A night-time outdoor data set for low-light enhancement

机译:用于低光增强的夜间室外数据

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Low light Enhancement has been a hot topic in recent years, and many deep neural network (DNN)-based methods have achieved remarkable performance. However, the rapid development of DNNs also raises the urgent requirement of high-quality training sets, especially supervised night-time data sets. In this paper, we establish a night-time outdoor data set (NOD 1) that contains 1214 groups of images. We also generate appropriate and high-quality reference images for each group based on multi-exposure fusion strategy, which not only focuses on dark areas but also provides details for over-exposed areas in low light images. Furthermore, a simple but efficient network is presented as the baseline of NOD. Experimental results on NOD and other data sets show the generalizability and effectiveness of the proposed data set and baseline model.
机译:近年来,低光增强是一个热门话题,许多深神经网络(DNN)的基础方法取得了显着的性能。然而,DNN的快速发展还提高了高质量培训集的迫切要求,特别是监督夜间数据集。在本文中,我们建立了夜间室外数据集(点头 1 )包含1214组图像。我们还基于多曝光融合策略为每个组产生适当的和高质量的参考图像,这不仅专注于暗区,而且还为低光图像提供过曝光区域的细节。此外,一种简单但有效的网络被呈现为点NOD的基线。 NOD和其他数据集的实验结果显示了所提出的数据集和基线模型的概括性和有效性。

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