Deep learning-based RGB-thermal image denoising: review and applications

被引:0
作者
Yuan Yu
Boon Giin Lee
Matthew Pike
Qian Zhang
Wan-Young Chung
机构
[1] University of Nottingham Ningbo China,School of Computer Science
[2] Nottingham Ningbo China Beacons of Excellence Research and Innovation Institute,Department of Electronic Engineering
[3] Pukyong National University,undefined
来源
Multimedia Tools and Applications | 2024年 / 83卷
关键词
Image denoising; Deep learning; Computer vision; Object detection; Thermal imaging;
D O I
暂无
中图分类号
学科分类号
摘要
Recently, vision-based detection (VD) technology has been well-developed, and its general-purpose object detection algorithms have been applied in various scenes. VD can be divided into two categories based on the type of modality: single-modal (single RGB or single thermal) and bimodal. Image denoising is typically the first stage of image processing in VD, where redundant information and noisy data are removed to produce clearer images for effective object detection. This study reviews deep learning-based image denoising for RGB and thermal images, investigating the denoising procedure, methodologies, and performances of algorithms tested with benchmark datasets. After introducing denoising models, the main results on public RGB and thermal datasets are presented and analyzed, and conclusions of objective comparison in practical effect are drawn. This review can serve as a reference for researchers in RGB–infrared denoising, image restoration, and related fields.
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页码:11613 / 11641
页数:28
相关论文
共 247 条
  • [1] Ashraf H(2021)Underwater ambient-noise removing GAN based on magnitude and phase spectra IEEE Access 9 24513-24530
  • [2] Jeong Y(2020)Deep learning-based thermal image reconstruction and object detection IEEE Access 9 5951-5971
  • [3] Lee CH(2019)DeepCorrect: correcting DNN models against image distortions IEEE Trans Image Process 28 6022-6034
  • [4] Batchuluun G(2017)Low-dose CT with a residual encoder-decoder convolutional neural network IEEE Trans Med Imaging 36 2524-2535
  • [5] Kang JK(2020)Learning to distort images using generative adversarial networks IEEE Signal Process Lett 27 2144-2148
  • [6] Nguyen DT(2021)Aru-net: reduction of atmospheric phase screen in SAR interferometry using attention-based deep residual U-net IEEE Trans Geosci Remote Sens 59 5780-5793
  • [7] Pham TD(2020)Dilated residual learning with skip connections for real-time denoising of laser speckle imaging of blood flow in a log-transformed domain IEEE Trans Med Imaging 39 1582-1593
  • [8] Arsalan M(2007)Image denoising by sparse 3-D transform-domain collaborative filtering IEEE Trans Image Process 16 2080-2095
  • [9] Park KR(2012)Nonlocally centralized sparse representation for image restoration IEEE Trans Image Process 22 1620-1630
  • [10] Borkar TS(2021)Successive graph convolutional network for image de-raining Int J Comput Vision 129 1691-1711