作者
Xin Jin, Dongming Zhou, Shaowen Yao, Rencan Nie, Qian Jiang, Kangjian He, Quan Wang
发表日期
2018/10
期刊
Soft Computing
卷号
22
页码范围
6395-6407
出版商
Springer Berlin Heidelberg
简介
This paper proposed a novel image fusion method based on simplified pulse-coupled neural network (S-PCNN), particle swarm optimization (PSO) and block image processing method. In general, the parameters of S-PCNN are set manually, which is complex and time-consuming and usually causes inconsistence. In this paper, the parameters of S-PCNN are set by PSO algorithm to overcome these shortcomings and improve fusion performance. Firstly, source images are divided into several equidimension sub-blocks, and then, spatial frequency is calculated as the characteristic factor of the sub-block to get the whole source image’s characterization factor matrix (CFM), and by this way the operand can be effectively reduced. Secondly, S-PCNN is used for the analysis of the CFM to get its oscillation frequency graph (OFG). Thirdly, the fused CFM will be got according to the OFG. Finally, the fused image …
引用总数
201820192020202120222023202417612377
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