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基于几何特征的曲面物体识别
引用本文:程义民,丁红侠,王以孝,张海宏.基于几何特征的曲面物体识别[J].中国图象图形学报,2000,5(7):573-579.
作者姓名:程义民  丁红侠  王以孝  张海宏
作者单位:中国科学技术大学电子科学与技术系计算机视觉实验室!合肥230026
摘    要:基于几何特征的曲面物体识别方法是通过从景物深度图象上提取景物表面的高斯曲率和平均曲率、曲率直方图,曲率的熵等几何信息,将景物用一个属性关系图ARG来表示,并与模型库中的模型ARG图进行优化匹配,从而来识别曲面景物。该方法主要是针对机器零部件等人造曲面物体的识别问题而设计的,其曲面几何特征的描述方法对二阶曲面比较有效,实验表明,应用该方法可成功地从深度图象中识别机器零部件等曲面物体,且有较好的识别结

关 键 词:深度图象  几何信息  曲面物体识别  计算机视觉
收稿时间:1999/1/15 0:00:00
修稿时间:1999-01-15

Curved Object Recognition Based on Geometrical Features
CHENG Yi-min,DING Hong-xi,WANG Yi-xiao and ZHANG Hai-hong.Curved Object Recognition Based on Geometrical Features[J].Journal of Image and Graphics,2000,5(7):573-579.
Authors:CHENG Yi-min  DING Hong-xi  WANG Yi-xiao and ZHANG Hai-hong
Affiliation:CV Lab. Dept. of Electronic Science and Technology. USTC. China 230026
Abstract:In this paper, a method for the recognition of curved object i s presented which is based on the geometrical features of object. First, geometr ical information including Gaussian culvature, mean culvature, histogram of culv ature, entropy of culvature, etc. is extracted from scene range image, then the scence is represented as a attribute relational graph(ARG) and is matched optimi zely with model ARGs of model database. The approach is designed aimming at the recognition of artificial curved objects such as machine parts and components, e tc, the curved surface represent of that curved geometrical features is efficien t for second order curved surface. The method has been simulated on a PC compute r (PentiumII), and have got some good results. The results indicated that curved objects(such as machine parts and comonents) could be successfully recognized f rom range images with this method.The represent of curved surface in this paper could be extented to the represent of more complex curved surface, and the appro ach could also be extended to the recognition of more complex 3D curved object.
Keywords:Range image  Geometrical information  Culvature  ARG  3D object  recognition
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