Cascaded UNet for progressive noise residual prediction for structure-preserving video denoising

被引:1
|
作者
Pimpale, Abhijeet [1 ]
Bhurchandi, Kishor [1 ]
机构
[1] Visvesvaraya Natl Inst Technol, Dept Elect & Commun Engn, Nagpur, India
关键词
Video denoising; Residue modelling; Deep learning; Cascaded UNet; SSIM; IMAGE; ENHANCEMENT;
D O I
10.1016/j.cviu.2024.104103
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The prominence of high-quality video services has become so substantial that by 2030, it is estimated that approximately 80% of internet traffic will consist of videos. On the contrary, video denoising remains a relatively unexplored and intricate field, presenting more substantial challenges compared to image denoising. Many published deep learning video denoising algorithms typically rely on simple, efficient single encoder- decoder networks, but they have inherent limitations in preserving intricate image details and effectively managing noise information propagation for noise residue modelling. In response to these challenges, the proposed work introduces an innovative approach; in terms of utilization of cascaded UNets for progressive noise residual prediction in video denoising. This multi-stage encoder-decoder architecture is meticulously designed to accurately predict noise residual maps, thereby preserving the locally fine details within video content as represented by SSIM. The proposed network has undergone extensive end-to-end training from scratch without explicit motion compensation to reduce complexity. In terms of the more rigorous SSIM metric, the proposed network outperformed all video denoising methods while maintaining a comparable PSNR.
引用
收藏
页数:11
相关论文
共 36 条
  • [21] Meshless structure-preserving GRBF collocation methods for stochastic Maxwell equations with multiplicative noise
    Hou, Baohui
    APPLIED NUMERICAL MATHEMATICS, 2023, 192 : 337 - 355
  • [22] Structure-preserving Runge-Kutta methods for stochastic Hamiltonian equations with additive noise
    Pamela M. Burrage
    Kevin Burrage
    Numerical Algorithms, 2014, 65 : 519 - 532
  • [23] A temporally-aware noise-informed invertible network for progressive video denoising
    Huang, Yan
    Luo, Huixin
    Xu, Yong
    Meng, Xian-Bing
    IMAGE AND VISION COMPUTING, 2025, 154
  • [24] A Temporally-Aware Noise-Informed Invertible Network for Progressive Video Denoising
    South China University of Technology, China
    不详
  • [25] Noise Reduction for SD-OCT Using a Structure-Preserving Domain Transfer Approach
    Wu, Menglin
    Chen, Wei
    Chen, Qiang
    Park, Hyunjin
    IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2021, 25 (09) : 3460 - 3472
  • [26] Structure-preserving Runge-Kutta methods for stochastic Hamiltonian equations with additive noise
    Burrage, Pamela M.
    Burrage, Kevin
    NUMERICAL ALGORITHMS, 2014, 65 (03) : 519 - 532
  • [27] A Real-Time Cascaded Video Denoising Algorithm Using Intensity and Structure Tensor
    Tan, Xin
    Liu, Yu
    Xiao, Huaxin
    Zhang, Maojun
    IEICE TRANSACTIONS ON INFORMATION AND SYSTEMS, 2015, E98D (07): : 1333 - 1342
  • [28] Structure-Preserving Random Noise Attenuation Method for Seismic Data Based on a Flexible Attention CNN
    Li, Wenda
    Wu, Tianqi
    Liu, Hong
    REMOTE SENSING, 2022, 14 (20)
  • [29] SNR-enhanced diffusion MRI with structure-preserving low-rank denoising in reproducing kernel Hilbert spaces
    Ramos-Llorden, Gabriel
    Vegas-Sanchez-Ferrero, Gonzalo
    Liao, Congyu
    Westin, Carl-Fredrik
    Setsompop, Kawin
    Rathi, Yogesh
    MAGNETIC RESONANCE IN MEDICINE, 2021, 86 (03) : 1614 - 1632
  • [30] Structure-preserving video super-resolution using three-dimensional convolutional neural networks
    Liu, Chenyu
    Li, Xueming
    Zhang, Xianlin
    Li, Xuewei
    JOURNAL OF ELECTRONIC IMAGING, 2019, 28 (02)