FRDVDnet:实现快速鲁棒的深度视频去噪

Hao Yang, Dong Sun, Kai Tang, Jianhang Zou, Jianming Zhuo, Yijun Cai
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引用次数: 0

摘要

随着深度学习技术的迅速发展,出现了大量的深度视频去噪网络。主流的深度视频去噪算法(如FastDVDnet)虽然具有良好的细节保存性能和处理大范围噪声水平的能力,但仅基于固定的数据集,没有足够的泛化能力。为了解决这一问题,本文提出了一种快速鲁棒DVD网络——FRDVDnet,利用密集尺度特征融合机制和CReLU激活方案对FastDVDnet进行优化。我们从视觉上和定量上比较了FRDVDnet和FastDVDnet在中等规模拜耳基准数据集中测试的结果。仿真结果表明,与FastDVDnet相比,随着噪声强度的增加,FRDVDnet的去噪性能有所提高。此外,在去噪视频的关键细节保留方面,FRDVDnet优于FastDVDnet。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FRDVDnet: Towards Fast and Robust Deep Video Denoising
With the rapid development of the technology of deep learning, lots of deep video denoising networks emerged. The mainstream deep video denoising(DVD) algorithms with the property of excellent detail preservation and the ability to process a wide range of noise level, such as FastDVDnet, are only based on the fixed datasets without enough generalizability. In order to deal with this problem, a network for fast and robust DVD called FRDVDnet, is proposed in this paper for optimizing FastDVDnet by utilizing dense-scale feature fusion mechanism and CReLU activation scheme. We compare FRDVDnet with FastDVDnet tested in the mid-scale bayer benchmark dataset visually and quantitatively. The simulation result shows that the denoising performance of FRDVDnet is improved with the increasing of the noise intensity compared to FastDVDnet. Moreover, in terms of perservation of key detail, FRDVDnet is superior to FastDVDnet on the denoised video.
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