Low-light image enhancement is a challenging low-level computer vision task because after we enhance the brightness of the image, we have to deal with amplified noise, color distortion, detail loss, blurred edges, shadow blocks and halo artifacts. In this paper, we propose a Two-Stage Network with Channel Attention (denoted as TSN-CA) to enhance the brightness of the low-light image and restore the enhanced images from various kinds of degradation. In the first stage, we enhance the brightness of the low-light image in HSV space and use the information of H and S channels to help the recovery of details in V channel. In the second stage, we integrate Channel Attention (CA) mechanism into the skip connection of U-Net in order to restore the brightness-enhanced image from severe kinds of degradation in RGB space. We train and evaluate the performance of our proposed model on the LOL real-world and synthetic datasets. In addition, we test our model on several other commonly used datasets without Ground-Truth. We conduct extensive experiments to demonstrate that our method achieves excellent effect on brightness enhancement as well as denoising, details preservation and halo artifacts elimination. Our method outperforms many other state-of-the-art methods qualitatively and quantitatively.
翻译:低光图像的提升是一项具有挑战性的低光层计算机愿景任务,因为当我们提高图像的亮度后,我们必须处理放大噪音、色彩扭曲、详细丢失、模糊边缘、阴影区块和光圈人工制品。在本文件中,我们提议建立一个有频道关注的双层网络(称为 TSN-CA ), 以提高低光图像的亮度, 恢复各种降解类型的强化图像。 在第一阶段, 我们提高HSV空间低光图像的亮度, 并利用H和S频道的信息帮助恢复V频道的细节。 在第二阶段, 我们将频道关注(CA) 机制纳入U- Net 跳过连接, 以恢复RGB 空间严重退化带来的亮度强化图像。 我们培训和评估了我们提议的LOL 真实世界和合成数据集模型的性能。 此外, 我们测试了我们在其他常用的数据集中的模型。 我们进行了广泛的实验, 以展示我们的方法在质量上取得了极佳的效果, 也展示了我们提高质量的方法。