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GLADNet: Low-Light Enhancement Network with Global Awareness

机译:GLADNet:具有全球意识的弱光增强网络

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In this paper, we address the problem of lowlight enhancement. Our key idea is to first calculate a global illumination estimation for the low-light input, then adjust the illumination under the guidance of the estimation and supplement the details using a concatenation with the original input. Considering that, we propose a GLobal illumination Aware and Detail-preserving Network (GLADNet). The input image is rescaled to a certain size and then put into an encoder-decoder network to generate global priori knowledge of the illumination. Based on the global prior and the original input image, a convolutional network is employed for detail reconstruction. For training GLADNet, we use a synthetic dataset generated from RAW images. Extensive experiments demonstrate the superiority of our method over other compared methods on the real low-light images captured in various conditions.
机译:在本文中,我们解决了弱光增强的问题。我们的关键思想是,首先为低光输入计算全局照明估计,然后在估计的指导下调整照明,并使用与原始输入的串联来补充细节。考虑到这一点,我们提出了一个全球照明感知和细节保存网络(GLADNet)。将输入图像重新缩放到特定大小,然后放入编码器/解码器网络以生成照明的全局先验知识。基于全局先验和原始输入图像,使用卷积网络进行细节重建。为了训练GLADNet,我们使用从RAW图像生成的合成数据集。大量的实验证明了我们的方法在各种条件下捕获的真实微光图像上优于其他比较方法的优势。

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