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基于小波区域分解的头部三维模型重构
引用本文:罗胜.基于小波区域分解的头部三维模型重构[J].计算机测量与控制,2008,16(4):573-576.
作者姓名:罗胜
作者单位:温州大学,机电工程学院,浙江,温州,325035;上海大学机自工程学院,上海,200072
摘    要:从二维图像还原三维形状的头部三维模型重构的实验中发现,配准三幅图像中所有点的计算量太大,于是提出了基于小波区域分解的方法;小波变换能够多尺度地从粗到精将头部地分离成头形、眼、鼻、嘴、痣、纹理等不同层次的特征区域,按精度对特征区域重建,减小配准时的搜索范围;对每个区域,使用灰度配准法则,然后用BP网络计算点深度,重构特征;这样精简了配准点数目,将处理速度提高了3~4个数量级。实验表明,该方法适应性良好,精度能达到1mm内。

关 键 词:小波  立体视觉  重构
文章编号:1671-4598(2008)04-0573-03
修稿时间:2007年4月27日

Human Head 3D Modeling Supported by Wavelet
Luo Sheng.Human Head 3D Modeling Supported by Wavelet[J].Computer Measurement & Control,2008,16(4):573-576.
Authors:Luo Sheng
Affiliation:Luo Sheng (1.School of Mechanical & Electrical Engineering,Wenzhou University,Wenzhou 325035;China; 2.Shanghai University,Shanghai 200072,China)
Abstract:The comeback way is based on 3 photos makes the computation potentially burdensome if every pixel to be matched,so a wavelet approach is designed to reduce it.Wavelet transformation can disassemble the head model into some areas at several levels,for exam- ples,head outlines,eyes,nose,mouths,spots,veins,and so on.Disassembling is the first step,and then matching the feature pixels of the regions according to the desired precision,and later computing the Z values of these pixels with a BP neutral network.This paper proposes the whole scheme to reconstruct 3D head model supported by wavelet,which reduce the amount of matching points,and take much less time, and more reliable.The wavelet way is efficient approximately more than 1000 times and the error is no more than 1mm.
Keywords:wavelet  3D vision  comeback
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