Journal of Innovative Image Processing (JIIP) (2021)
Vol.03/ No. 03
Pages: 174-189
https://www.irojournals.com/iroiip/
DOI: https://doi.org/10.36548/jiip.2021.3.002
174
ISSN: 2582-4252 (online)
Submitted: 01.07.2021
Revised: 16.08.2021
Accepted: 25.08.2021
Published: 04.09.2021
Copyright © 2021 Inventive Research Organization
Rain Streaks Removal in digital images by
Dictionary based sparsity process with MCA
Estimation
P. Ebby Darney
1
, I. Jeena Jacob
2
1
Professor, Department of Electrical and Electronics Engineering, SCAD College of Engineering and
Technology, Tirunelveli, Tamilnadu, India
2
Department of Computer Science and Engineering, GITAM University, Bangalore, India
E-mail:
1
darney.pebby@gmail.com,
2
jeenajacob2016@gmail.com
Abstract
During the rainy season, many public outdoor crimes have been caught through video surveillance,
and they do not have complete feature information to identify the image features. Rain streak
removal techniques are ideal for indexing and obtaining additional information from such images.
Furthermore, the rain substantially changes the intensity of images and videos, lowering the overall
image quality of vision systems in outdoor recording situations. To be successful, the elimination
of rain streaks in the film will require an advanced trial and error method. Different methods have
been utilized to identify and eliminate the rainy effects by using the data on photon numbers,
chromaticity, and probability of rain streaks present in digital images. This research work includes
sparse coding process for removing rain streak by incorporating morphological component
analyses (MCA) based algorithm. Based on the MCA algorithm, the coarse estimation becomes
very simple to handle the rain streak or impulsive noisy images. The sparse decomposition of
coarse is possible by estimating and eliminating all redundancies from the sources. This novel
MCA approach is combined with sparsity coding process to provide better PSNR and less MSE