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基于组合不变矩和神经网络的三维物体识别
引用本文:徐胜,彭启琮.基于组合不变矩和神经网络的三维物体识别[J].计算机工程与应用,2008,44(31):78-80.
作者姓名:徐胜  彭启琮
作者单位:电子科技大学 通信与信息工程学院,成都 610054
摘    要:在三维物体识别系统中,提出将三维物体的Hu不变矩和仿射不变矩两者的低阶矩组合作为三维物体的特征,结合改进的BP神经网络应用于三维物体的分类识别。理论分析和仿真实验表明组合这两种矩特征进行物体识别,性能优于单独使用Hu不变矩,如果进一步对这两种组合的矩特征进行主成分分析处理,可显著提高系统识别性能,并减少网络的训练时间。

关 键 词:三维物体识别  Hu不变矩  仿射不变矩  BP神经网络  主成分分析  
收稿时间:2007-12-3
修稿时间:2008-2-18  

Three Dimensional object recognition based combined moment invariants and neural network
XU Sheng,PENG Qi-cong.Three Dimensional object recognition based combined moment invariants and neural network[J].Computer Engineering and Applications,2008,44(31):78-80.
Authors:XU Sheng  PENG Qi-cong
Affiliation:School of Communication and Information Engineering,University of Electronic Science & Technology of China,Chengdu 610054,China
Abstract:In the 3D object recognition system,this paper presents to combine the lower order of Hu’s moment invariants and affine moment invariants together as features of 3D objects,then these features are presented to the modified BP neural network for 3D object recognition.The theoretical and experimental analyses prove that using the combination of Hu’s moment invariants and affine moment invariants as features to classify 3D objects can achieve better recognition performance than only using Hu’s moment invariants.If the combination of Hu’s moment invariants and affine moment invariants is further processed by principal components analysis,system recognition performance can be improved greatly and network training time can be reduced.
Keywords:3-D object recognition  Hu’s moment invariants  affine moment invariants  BP neural network  principal components analysis
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