Even faster retinal vessel segmentation via accelerated singular value decomposition

被引:0
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作者
Yan Zhang
Jian Lian
Luo Rong
Weikuan Jia
Chengjiang Li
Yuanjie Zheng
机构
[1] Shandong Management University,College of Industry and Commerce
[2] Qilu University of Technology (Shandong Academy of Science),School of Light Industry Science and Engineering
[3] Shandong University of Sci&Tech,Department of Electrical Engineering Information Technology
[4] Shandong Normal University,School of Information Science and Engineering, Key Lab of Intelligent Computing and Information Security in Universities of Shandong, Institute of Life Sciences, Shandong Provincial Key Laboratory for Distributed Computer Softwar
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关键词
Medical image processing; Machine learning; Segmentation;
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摘要
Retinal blood vessel segmentation plays a vital role in medical image analysis since the appearance of vessels would contribute in the diagnosis, treatment, and evaluation for various diseases in ophthalmology and other fields, such as cardiology and neurosurgery. Among the state-of-the-art blood vessel segmentation techniques, the Hessian-based multi-scale filter has been widely used and shown its superior performance in the accuracy and visual effect. However, its execution time still remains a challenge due to the employment of eigenvalue decomposition in this approach. Bearing this in mind, we propose an accelerated matrix decomposition mechanism, which could be used to boost not only the original Hessian-based multi-scale approach but also the singular value decomposition-based algorithms. To evaluate the proposed method, we conducted comparison experiments between state-of-the-art techniques and our method. Experimental results show the superior performance of the proposed approach over state of the arts especially in execution time.
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页码:1893 / 1902
页数:9
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