Traditional and deep-learning-based denoising methods for medical images

被引:0
|
作者
Walid El-Shafai
Samy Abd El-Nabi
Anas M. Ali
El-Sayed M. El-Rabaie
Fathi E. Abd El-Samie
机构
[1] Prince Sultan University,Security Engineering Lab, Computer Science Department
[2] Menoufia University,Department of Electronics and Electrical Communications Engineering, Faculty of Electronic Engineering
[3] Department of Artificial Intelligence Engineering,Robotics and Internet
[4] Faculty of Computer Science and Engineering,of
[5] King Salman International University (KSIU),Things Laboratory
[6] Prince Sultan University,undefined
[7] Department of Information Technology,undefined
[8] College of Computer and Information Sciences,undefined
[9] Princess Nourah Bint Abdulrahman University,undefined
来源
关键词
Image denoising; Medical images; Deep Learning (DL); Spatial filters; Wavelet transform; Autoencoder;
D O I
暂无
中图分类号
学科分类号
摘要
Visual information is extremely important in today’s world. Visual information transmitted in the form of digital images has become a critical mode of communication. As a result, digital image processing plays a critical role in advancing the image-related applications. Especially, in the medical field, the image processing stage is one of the important stages that need great accuracy to diagnose and determine the type of the disease. Its objective is to overcome the noise problems in medical images and preserve information and edges in images. Medical images can be enhanced by removing noise through the use of traditional and Deep Learning (DL) methods. DL methods depending on Convolutional Neural Networks (CNNs) have achieved great results in the processing stage for noise reduction in medical images. The DL is a promising and effective solution for estimating real noise and extracting representative features from images. This paper presents a review of image denoising methods for medical images, considering noise sources, and types of noise. The concepts of noise reduction (denoising) for various methods are presented. In addition, a comparative study is presented to clarify the advantages and disadvantages of each method. Finally, some possible trends for future work are introduced.
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页码:52061 / 52088
页数:27
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