Prior-DualGAN: Rain rendering from coarse to fine

IF 3.4 3区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Signal Processing-Image Communication Pub Date : 2024-07-11 DOI:10.1016/j.image.2024.117170
Mingdi Hu , Jingbing Yang , Jianxun Yu , Bingyi Jing
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Abstract

The success of deep neural networks (DNN) in deraining has led to increased research in rain rendering. In this paper, we introduce a novel Prior-DualGAN algorithm to synthesize diverse and realistic rainy/non-rainy image pairs to improve DNN training for deraining. More precisely, the rain streak prior is first generated using essential rain streak attributes; then more realistic and diverse rain streak patterns are rendered by the first generator; finally, the second generator naturally fuses the background and generated rain streaks to produce the final rainy images. Our method has two main advantages: (1) the rain streak prior enables the network to incorporate physical prior knowledge, accelerating network convergence; (2) our dual GAN approach gradually improves the naturalness and diversity of synthesized rainy images from rain streak synthesis to rainy image synthesis. We evaluate existing deraining algorithms using our generated rain-augmented datasets Rain100L, Rain14000, and Rain-Vehicle, verifying that training with our generated rain-augmented datasets significantly improves the deraining effect. The source code will be released shortly after article’s acceptance.

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Prior-DualGAN:从粗到细的雨水渲染
深度神经网络(DNN)在降雨渲染(deraining)方面取得的成功,促进了对降雨渲染的研究。在本文中,我们引入了一种新颖的 "先验-双GAN "算法,用于合成多样、逼真的雨天/非雨天图像对,以改进 DNN 的渲染训练。更确切地说,首先利用雨条纹的基本属性生成雨条纹先验,然后由第一个生成器渲染更逼真、更多样的雨条纹图案,最后由第二个生成器自然融合背景和生成的雨条纹,生成最终的雨景图像。我们的方法有两大优势:(1) 雨条纹先验使网络能够结合物理先验知识,加速网络收敛;(2) 从雨条纹合成到雨图像合成,我们的双 GAN 方法逐步提高了合成雨图像的自然度和多样性。我们使用生成的雨增数据集 Rain100L、Rain14000 和 Rain-Vehicle 评估了现有的衍生算法,验证了使用我们生成的雨增数据集进行训练能显著提高衍生效果。源代码将在文章录用后不久发布。
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来源期刊
Signal Processing-Image Communication
Signal Processing-Image Communication 工程技术-工程:电子与电气
CiteScore
8.40
自引率
2.90%
发文量
138
审稿时长
5.2 months
期刊介绍: Signal Processing: Image Communication is an international journal for the development of the theory and practice of image communication. Its primary objectives are the following: To present a forum for the advancement of theory and practice of image communication. To stimulate cross-fertilization between areas similar in nature which have traditionally been separated, for example, various aspects of visual communications and information systems. To contribute to a rapid information exchange between the industrial and academic environments. The editorial policy and the technical content of the journal are the responsibility of the Editor-in-Chief, the Area Editors and the Advisory Editors. The Journal is self-supporting from subscription income and contains a minimum amount of advertisements. Advertisements are subject to the prior approval of the Editor-in-Chief. The journal welcomes contributions from every country in the world. Signal Processing: Image Communication publishes articles relating to aspects of the design, implementation and use of image communication systems. The journal features original research work, tutorial and review articles, and accounts of practical developments. Subjects of interest include image/video coding, 3D video representations and compression, 3D graphics and animation compression, HDTV and 3DTV systems, video adaptation, video over IP, peer-to-peer video networking, interactive visual communication, multi-user video conferencing, wireless video broadcasting and communication, visual surveillance, 2D and 3D image/video quality measures, pre/post processing, video restoration and super-resolution, multi-camera video analysis, motion analysis, content-based image/video indexing and retrieval, face and gesture processing, video synthesis, 2D and 3D image/video acquisition and display technologies, architectures for image/video processing and communication.
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