Title of article :
Medical Image Segmentation Using Fruit Fly Optimization and Density Peaks Clustering
Author/Authors :
Zhu, Hong School of Medical Information - Xuzhou Medical University - Xuzhou, China , He, Hanzhi School of Medical Information - Xuzhou Medical University - Xuzhou, China , Xu, Jinhui Department of Computer Science and Engineering - State University of New York at Buffalo - Buffalo, USA , Fang, Qianhao School of Medical Information - Xuzhou Medical University - Xuzhou, China , Wang, Wei Department of Medical Imaging - 0e Affiliated Hospital of Xuzhou Medical University - Xuzhou, China
Pages :
11
From page :
1
To page :
11
Abstract :
In this paper, we propose a novel algorithm for medical image segmentation, which combines the density peaks clustering (DPC) with the fruit fly optimization algorithm, and it has the following advantages. Firstly, it avoids the problem of DPC that needs to artificially select parameters (such as the number of clusters) in its decision graph and thus can automatically determine their values. Secondly, our algorithm uses random step size, instead of the fixed step size as in the fruit fly optimization algorithm, which helps avoid falling into local optima. ,irdly, our algorithm selects the cut-off distance and the cluster centers using the image entropy value and can better capture the structures of the image. Experiments on benchmark dataset and proprietary dataset show that our algorithm can adaptively segment medical images with faster convergence and better robustness.
Keywords :
Fly , Peaks , DPC , Optimization
Journal title :
Computational and Mathematical Methods in Medicine
Serial Year :
2018
Full Text URL :
Record number :
2610013
Link To Document :
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