Morphological neural networks for automatic target detection by simulated annealing learning algorithm

被引:0
|
作者
余农
吴昊
吴常泳
李范鸣
吴立德
机构
[1] China
[2] Institute of Electronic Science and Technology
[3] School of Computer
[4] Fudan University
[5] National University of Defense Technology
[6] Changsha 410073
[7] Shanghai Institute of Technical Physics
[8] Xinyang 464000
[9] China Air Force College of Aeronautical Technology
[10] Shanghai 200433
[11] Shanghai 200083
[12] China Correspondence should be addressed to Yu Nong
[13] Chinese Academy of Sciences
关键词
mathematical morphology; image analyzing; target detection; neural network; optimal calcula- tion;
D O I
暂无
中图分类号
TP183 [人工神经网络与计算];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
A practical neural network model for morphological filtering and a simulated annealing optimal algorithm for the network parameters training are proposed in this paper. It is pointed out that the opti- mal designing process of the morphological filtering network in fact is the optimal learning process of adjusting network parameters (structuring element, or SE for short) to accommodate image environment. Then the network structure may possess the characteristics of image targets, and so give specific infor- mation to the SE. Morphological filters formed in this way become certainly intelligent and can provide good filtering results and robust adaptability to complex changing image. For application to motional image target detection, dynamic training algorithm is applied to the designing process using asymptotic shrinking error and appropriate network weights adjusting. Experimental results show that the algorithm has invariant property with respect to shift, scale and rotation of moving target in continuing detection of moving targets.
引用
收藏
页码:262 / 278
页数:17
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