领域知识驱动的深度展开用于单幅图像的去雨

Ying Ding, Xinwei Xue, Zizhong Wang, Zhiying Jiang, Xin Fan, Zhongxuan Luo
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引用次数: 5

摘要

雨水是一种常见的天气,严重影响了室外计算机视觉应用的性能。在这种天气下拍摄的图像质量很差。有几种常用的方法可以从图像中去除雨纹;一种方法是基于物理模型和数学优化,另一种方法是基于深度学习。然而,这些方法都有自己的缺点。基于优化的方法是复杂的,但结果是一般的。在基于深度学习的方法中,背景图像的一些细节通过深度网络丢失。在本研究中,我们开发了一种嵌入在ADMM框架中的ResNet和去噪算法作为背景/雨先验。使用合成的雨天/晴朗背景图像对作为训练数据对ResNet进行训练。然后,我们将雨天拍摄的图像分为无雨背景和有雨条纹的部分。实验结果表明,残差网络与ADMM算法相结合得到的降水结果的PSNR值比其他雨纹去除算法的PSNR值高约3%。与其他去雨条算法相比,获得的细节图像更加清晰,图像质量也更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Domain Knowledge Driven Deep Unrolling for Rain Removal from Single Image
Rain is a common weather that seriously affects the performance of outdoor computer vision applications. The quality of images taken in such weather is very poor. There are several popular methods for the removal of rain streaks from images; one such method is based on physical models and mathematical optimization, and another method is based on deep-learning. However, these methods have their own shortcomings. The optimization-based method is complex, but the result is general. In the deep-learning-based method, some details of the background images are lost through a deep network. In this study, we developed a ResNet and denoising algorithm embedded in the ADMM framework as the background/rain prior. ResNet was trained using synthetic rainy/clear background image pairs as the training data. Then, we divided the images taken in rainy weather into parts with a rainless background and those with the rain streaks. The experiments revealed that the PSNR value of the derain results obtained using a combination of a residual network and the ADMM algorithm was approximately 3% higher than that of the other rain-streak removal algorithms. Moreover, the detailed images obtained were considerably clearer than the details obtained from other rain-streak removal algorithms, and the image quality was better.
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