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基于神经网络的点目标多光谱信息融合识别方法
引用本文:冯志庆,杨英慧,郭景富,隋永新,梁士利,杨怀江. 基于神经网络的点目标多光谱信息融合识别方法[J]. 光学精密工程, 2003, 11(4): 412-415
作者姓名:冯志庆  杨英慧  郭景富  隋永新  梁士利  杨怀江
作者单位:1. 中国科学院,长春光学精密机械与物理研究所,应用光学国家重点实验室,吉林,长春,130022
2. 辽宁营口工业学校,辽宁,营口,117000
摘    要:为了解决动态红外点目标多光谱模式识别问题,提出了一种利用神经网络并行子网作为前级处理,证据理论于后级融合的多周期模式识别推理模型。由于并行子网的引入,该模型避开了识别过程中采用单一神经网络所带来的大样本训练问题,用带有加性噪声的点目标红外光谱作为识别模型的目标数据源进行了算法验证,计算结果表明该算法对多周期不确定性证据有很强的证据聚焦能力。

关 键 词:神经网络  证据理论  红外点目标  识别
文章编号:1004-924X(2003)04-0412-04
收稿时间:2003-01-09
修稿时间:2003-01-09

Fusion recognition of dot target multi-spectrum data based on ANN
FENG Zhi qing ,YANG Ying hui ,GUO Jing fu ,SUI Yong xin ,LIANG Shi li ,YANG Huai jiang. Fusion recognition of dot target multi-spectrum data based on ANN[J]. Optics and Precision Engineering, 2003, 11(4): 412-415
Authors:FENG Zhi qing   YANG Ying hui   GUO Jing fu   SUI Yong xin   LIANG Shi li   YANG Huai jiang
Affiliation:FENG Zhi qing 1,YANG Ying hui 2,GUO Jing fu 1,SUI Yong xin 1,LIANG Shi li 1,YANG Huai jiang 1
Abstract:In order to solve dynamic small weak infrared object multi spectrum data fusion problem, a multi period pattern recognition model has been established by using ANN parallel nets and D S theory. This model solves the training time problem for single net with large numbers of samples because of importing of the parallel nets. The model was validated using dot infrared spectrum data with additive noise as target data source and the result of calculation indicate the recognition model has very strong multi period uncertainty evidence focusing capability.
Keywords:artificial neural networks  D S theory  infrared weak object  recognition
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