Title of article :
Retinal Image Denoising via Bilateral Filter with a Spatial Kernel of Optimally Oriented Line Spread Function
Author/Authors :
He, Yunlong School of Information Science and Engineering - Shandong Normal University - Jinan, China , Zheng, Yuanjie School of Information Science and Engineering - Shandong Normal University - Jinan, China , Zhao, Yanna School of Information Science and Engineering - Shandong Normal University - Jinan, China , Ren, Yanju School of Psychology - Shandong Normal University - Jinan, China , Lian, Jian School of Information Science and Engineering - Shandong Normal University - Jinan, China , Gee, James University of Pennsylvania - Philadelphia, USA
Pages :
13
From page :
1
To page :
13
Abstract :
Filtering belongs to the most fundamental operations of retinal image processing and for which the value of the filtered image at a given location is a function of the values in a local window centered at this location. However, preserving thin retinal vessels during the filtering process is challenging due to vessels’ small area and weak contrast compared to background, caused by the limited resolution of imaging and less blood flow in the vessel. In this paper, we present a novel retinal image denoising approach which is able to preserve the details of retinal vessels while effectively eliminating image noise. Specifically, our approach is carried out by determining an optimal spatial kernel for the bilateral filter, which is represented by a line spread function with an orientation and scale adjusted adaptively to the local vessel structure. Moreover, this approach can also be served as a preprocessing tool for improving the accuracy of the vessel detection technique. Experimental results show the superiority of our approach over state-ofthe-art image denoising techniques such as the bilateral filter.
Keywords :
Bilateral , Function , Kernel , blood
Journal title :
Computational and Mathematical Methods in Medicine
Serial Year :
2017
Full Text URL :
Record number :
2609879
Link To Document :
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