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Threshold Selection Method Based on Reciprocal Gray Entropy and Artificial Bee Colony Optimization
Authors:Wu Yiquan  Meng Tianliang  Wu Shihua  Lu Wenping
Institution:1. College of Electronic and Information Engineering, Nanjing University of Aeronautics and Astronautics,Nanjing, 210016, P.R.China;Engineering Technology Research Center of Wuhan Intelligent Basin, Changjiang River Scientific Research Institute,Changjiang Water Resources Commission of the Ministry of Water Resources, Wuhan, 430010, P.R.China;Key Laboratory of the Yellow River Sediment of Ministry of Water Resource, Yellow River Institute of Hydraulic Research, Zhengzhou, 450003, P.R.China;State Key Laboratory of Urban Water Resource and Environment, Harbin Institute of Technology,Harbin, 150090, P.R.China;State Key Laboratory of Food Science and Technology, Jiangnan University, Wuxi, 214122, P.R.China
2. College of Electronic and Information Engineering, Nanjing University of Aeronautics and Astronautics,Nanjing, 210016, P.R.China
3. Engineering Technology Research Center of Wuhan Intelligent Basin, Changjiang River Scientific Research Institute,Changjiang Water Resources Commission of the Ministry of Water Resources, Wuhan, 430010, P.R.China
Abstract:Since the logarithmic form of Shannon entropy has the drawback of undefined value at zero points,and most existing threshold selection methods only depend on the probability information,ignoring the within-class uniformity of gray level,a method of reciprocal gray entropy threshold selection is proposed based on two-dimensional(2-D)histogram region oblique division and artificial bee colony(ABC)optimization.Firstly,the definition of reciprocal gray entropy is introduced.Then on the basis of one-dimensional(1-D)method,2-D threshold selection criterion function based on reciprocal gray entropy with histogram oblique division is derived.To accelerate the progress of searching the optimal threshold,the recently proposed ABC optimization algorithm is adopted.The proposed method not only avoids the undefined value points in Shannon entropy,but also achieves high accuracy and anti-noise performance due to reasonable 2-D histogram region division and the consideration of within-class uniformity of gray level.A large number of experimental results show that,compared with the maximum Shannon entropy method with 2-D histogram oblique division and the reciprocal entropy method with 2-D histogram oblique division based on niche chaotic mutation particle swarm optimization(NCPSO),the proposed method can achieve better segmentation results and can satisfy the requirement of real-time processing.
Keywords:image processing  threshold selection  reciprocal gray entropy  2-D histogram oblique division  artificial bee colony (ABC) optimization algorithm
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