论文标题
黑暗图像的爆发
Burst Denoising of Dark Images
论文作者
论文摘要
在极低的光线条件下捕获图像对标准摄像机管道构成了重大挑战。图像变得太黑了,太嘈杂了,这使得传统的图像增强技术几乎无法应用。最近,研究人员使用基于学习的方法表现出了令人鼓舞的结果。在本文中,我们提出了一个深入学习框架,以从极深的原始图像中获取清洁多彩的RGB图像。我们框架的骨干是一种新颖的粗到精细的网络体系结构,以渐进的方式生成高质量的输出。粗网络预测了一个低分辨率的原始图像,然后将其馈送到罚款网络以恢复细节细节和逼真的纹理。为了进一步降低噪声并提高颜色的准确性,我们将该网络扩展到置换不变结构,以便将一系列低光图像作为输入,并从功能级上的多个图像中合并信息。我们的实验表明,所提出的方法通过产生更清晰和更高质量的图像而与最先进的方法相比,在感知上更令人愉悦的结果。
Capturing images under extremely low-light conditions poses significant challenges for the standard camera pipeline. Images become too dark and too noisy, which makes traditional image enhancement techniques almost impossible to apply. Very recently, researchers have shown promising results using learning based approaches. Motivated by these ideas, in this paper, we propose a deep learning framework for obtaining clean and colorful RGB images from extremely dark raw images. The backbone of our framework is a novel coarse-to-fine network architecture that generates high-quality outputs in a progressive manner. The coarse network predicts a low-resolution, denoised raw image, which is then fed to the fine network to recover fine-scale details and realistic textures. To further reduce noise and improve color accuracy, we extend this network to a permutation invariant structure so that it takes a burst of low-light images as input and merges information from multiple images at the feature-level. Our experiments demonstrate that the proposed approach leads to perceptually more pleasing results than state-of-the-art methods by producing much sharper and higher quality images.