Review of Filter-Based Image Denoising Methods
DOI:
https://doi.org/10.62051/ijcsit.v2n2.03Keywords:
Image denoising; Digital image processing; Filter-based approachesAbstract
Image denoising is one of the fundamental tasks in the field of digital image processing. In tasks such as object detection, the effectiveness of image denoising plays a crucial role in the accuracy of the detection results. As image acquisition devices and technologies continue to advance, various types of noise, such as Gaussian noise and salt-and-pepper noise, are commonly present in images. These types of noise have a detrimental impact on the quality and visual fidelity of the images. Consequently, the research and application of image denoising techniques hold significant importance in improving image quality, enhancing fine details, and accurately analyzing image content. Among the myriad of image denoising methods, filter-based approaches have garnered notable attention due to their simplicity, efficiency, and ease of implementation. This paper aims to provide a comprehensive overview and reference for researchers in the field by reviewing the research progress and potential breakthrough directions of filter-based image denoising methods.
Downloads
References
Fan L, Zhang F, Fan H, et al. Brief review of image denoising techniques[J]. Visual Computing for Industry, Biomedicine, and Art, 2019, 2(1): 7.
Buades A, Coll B, Morel J M. A review of image denoising algorithms, with a new one[J]. Multiscale modeling & simulation, 2005, 4(2): 490-530.
Justusson B I. Median filtering: Statistical properties[J]. Two-dimensional digital signal prcessing II: transforms and median filters, 2006: 161-196.
Gupta G. Algorithm for image processing using improved median filter and comparison of mean, median and improved median filter[J]. International Journal of Soft Computing and Engineering (IJSCE), 2011, 1(5): 304-311.
Boateng K O, Asubam B W, Laar D S. Improving the effectiveness of the median filter[J]. 2012.
Chen Z, Zhou Z, Adnan S. Joint low-rank prior and difference of Gaussian filter for magnetic resonance image denoising[J]. Medical & Biological Engineering & Computing, 2021, 59: 607-620.
Shrestha S. Image denoising using new adaptive based median filters[J]. ar**v preprint ar**v:1410.2175, 2014.
Chen G, **e W, Zhao Y. Wavelet-based denoising: A brief review[C]//2013 fourth international conference on intelligent control and information processing (ICICIP). IEEE, 2013: 570-574.
Song Q, Ma L, Cao J K, et al. Image denoising based on mean filter and wavelet transform[C]//2015 4th International Conference on Advanced Information Technology and Sensor Application (AITS). IEEE, 2015: 39-42.
Ziou D, Tabbone S. Edge detection techniques-an overview[J]. Распознавание образов и анализ изображен/Pattern Recognition and Image Analysis: Advances in Mathematical Theory and Applications, 1998, 8(4): 537-559.
Minaee S, Boykov Y, Porikli F, et al. Image segmentation using deep learning: A survey[J]. IEEE transactions on pattern analysis and machine intelligence, 2021, 44(7): 3523-3542.
Azzeh J, Zahran B, Alqadi Z. Salt and pepper noise: Effects and removal[J]. JOIV: International Journal on Informatics Visualization, 2018, 2(4): 252-256.
Jana B R, Thotakura H, Baliyan A, et al. Pixel density based trimmed median filter for removal of noise from surface image[J]. Applied Nanoscience, 2023, 13(2): 1017-1028.
Yu J. Based on Gaussian filter to improve the effect of the images in Gaussian noise and pepper noise[C]//Journal of Physics: Conference Series. IOP Publishing, 2023, 2580(1): 012062.
Wang M, Wang S, Ju X, et al. Image Denoising Method Relying on Iterative Adaptive Weight-Mean Filtering[J]. Symmetry, 2023, 15(6): 1181.
Jebur R S, Der C S, Hammood D A, et al. Image denoising techniques: An overview[C]//AIP Conference Proceedings. AIP Publishing, 2023, 2804(1).
You N, Han L, Zhu D, et al. Research on image denoising in edge detection based on wavelet transform[J]. Applied Sciences, 2023, 13(3): 1837.
Tian C, Zheng M, Zuo W, et al. Multi-stage image denoising with the wavelet transform[J]. Pattern Recognition, 2023, 134: 109050.
Simon D. Kalman filtering[J]. Embedded systems programming, 2001, 14(6): 72-79.
Khodarahmi M, Maihami V. A review on Kalman filter models[J]. Archives of Computational Methods in Engineering, 2023, 30(1): 727-747.
Lee J H, Ricker N L. Extended Kalman filter based nonlinear model predictive control[J]. Industrial & Engineering Chemistry Research, 1994, 33(6): 1530-1541.
Bozic S M. Digital and Kalman filtering[M]. Courier Dover Publications, 2018.
Downloads
Published
Issue
Section
License
Copyright (c) 2024 Xiaolong Zhao, Mingchuan Zhang

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.







