Algerian Journal of Signals and Systems

Algerian Journal of Signals and Systems

Covid-19 Images and Video Denoising Algorithms Based on Convolutional Neural Network CNNs

Yazarlar: Zoubeida Messali, Salsabil SAAD SAOUD, Amira LAMRECHE

Cilt 6 , Sayı 2 , 2021 , Sayfalar 122-129

Konular:-

DOI:10.51485/ajss.v6i2.126

Anahtar Kelimeler:Denoising,Deep learning,CNN,Covid,9,Gaussian noise,PSNR

Özet: In this paper, the most sophisticated denoising algorithms of images and video are applied and implemented. More precisely, we study and implement the video denoising algorithms "VBM3D", "VBM4D", "DVDNet" and "FastDVDnet". Much attention is given to the latest DVDNet and FastDVDNet algorithms, which are based on CNN. We carry out a detailed quantitative and qualitative comparative study between the considered algorithms. Two assessments are adapted; the first is a qualitative comparison based on the quality of the images / videos and the second is quantitative in terms of PSNR and running time criteria. To see the direct impact of our study on the current pandemic, and to show the importance of image and video preprocessing algorithms in the field of medical imaging; we apply the considered denoising algorithms based on CNN on our built COVID- 19 dataset and TEST_PCR videos.


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BibTex
KOPYALA
@article{2021, title={Covid-19 Images and Video Denoising Algorithms Based on Convolutional Neural Network CNNs}, volume={6}, number={122–129}, publisher={Algerian Journal of Signals and Systems}, author={Zoubeida Messali,Salsabil SAAD SAOUD,Amira LAMRECHE}, year={2021} }
APA
KOPYALA
Zoubeida Messali,Salsabil SAAD SAOUD,Amira LAMRECHE. (2021). Covid-19 Images and Video Denoising Algorithms Based on Convolutional Neural Network CNNs (Vol. 6). Vol. 6. Algerian Journal of Signals and Systems.
MLA
KOPYALA
Zoubeida Messali,Salsabil SAAD SAOUD,Amira LAMRECHE. Covid-19 Images and Video Denoising Algorithms Based on Convolutional Neural Network CNNs. no. 122–129, Algerian Journal of Signals and Systems, 2021.