恢复通过被灰尘或雨水覆盖的窗户拍摄的图像

D. Eigen, Dilip Krishnan, R. Fergus
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引用次数: 405

摘要

透过窗户拍摄的照片通常会受到窗户表面灰尘或雨水的影响。常见的情况包括从车内拍摄的照片,或安装在保护外壳内的室外安全摄像头。在捕捉时,散焦可以用来去除伪影,但这依赖于实现较浅的景深和相机靠近窗口的位置。相反,我们提出了一种捕获后的图像处理解决方案,可以从单个图像中去除局部的雨水和污垢伪影。我们收集了一个干净/损坏图像对的数据集,然后用于训练一种特殊形式的卷积神经网络。它学习如何将损坏的图像块映射到干净的图像块,隐含地捕获自然图像中污垢和水滴的特征外观。我们的模型证明了在室外测试条件下有效去除污垢和雨水。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Restoring an Image Taken through a Window Covered with Dirt or Rain
Photographs taken through a window are often compromised by dirt or rain present on the window surface. Common cases of this include pictures taken from inside a vehicle, or outdoor security cameras mounted inside a protective enclosure. At capture time, defocus can be used to remove the artifacts, but this relies on achieving a shallow depth-of-field and placement of the camera close to the window. Instead, we present a post-capture image processing solution that can remove localized rain and dirt artifacts from a single image. We collect a dataset of clean/corrupted image pairs which are then used to train a specialized form of convolutional neural network. This learns how to map corrupted image patches to clean ones, implicitly capturing the characteristic appearance of dirt and water droplets in natural images. Our models demonstrate effective removal of dirt and rain in outdoor test conditions.
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