3D Geometry Reconstruction from Multiple Segmented Surface Descriptions Using Neuro-Fuzzy Similarity Measures

被引:0
作者
Daniel Fischer
Peter Kohlhepp
机构
[1] Institut für Angewandte Informatik,Forschungszentrum Karlsruhe
[2] Institut für Angewandte Informatik,Technik und Umwelt
来源
Journal of Intelligent and Robotic Systems | 2000年 / 29卷
关键词
late fusion; surface similarity measure; Neuro-Fuzzy; attributed graph; boundary representation; feature correspondence; 3D reconstruction; image registration; range image;
D O I
暂无
中图分类号
学科分类号
摘要
This paper presents a novel solution to the reconstruction of 3D geometry models from partial, segmented (2.5D or 3D) range views. First, the geometric fusion works entirely on sparse symbolic information, i.e. attributed surface graphs, rather than point data or triangulated meshes. Thus, new sensor data can always be integrated with an existing partial model available for symbolic action planning. Second, assumptions on automatic registration are weaker than those found in related work: the views need not be approximately calibrated, and no pre-existing knowledge of their overlap is needed. In order to find corresponding (redundant) surface features reliably even under high-noise and occlusion conditions we develop Neuro-Fuzzy similarity measures on surface descriptions. Third, we propose a reasonably complete prototype system including algorithms for merging sparse, reduced surface attributes, in particular boundaries. The experimental results from segmented range images of an indoor camera motion sequence demonstrate the ability to cope with unknown camera positions, low image resolution, large measurement and segmentation errors.
引用
收藏
页码:389 / 431
页数:42
相关论文
共 80 条
[11]  
Boyer E.(1986)The representation, recognition, and locating of 3-D objects Intl. J. Robotics Research 5 27-52
[12]  
Berger M.-O.(1998)An evolutionary algorithm for the registration of 3-D surface representations Pattern Recognition (Special Issue on Image Registration) 12 53-69
[13]  
Bunke H.(1997)High-level CAD model acquisition from range images Computer-Aided Design 29 321-330
[14]  
Shearer K.(1992)3D object recognition using invariant feature indexing of interpretation tables CVGIP: Image Understanding 55 119-129
[15]  
Bunke H.(1995)A spherical representation for recognition of freeform surfaces IEEE Trans. PAMI 17 681-690
[16]  
Dorai C.(1996)Extracting a valid boundary representation from a segmented range image Reliable Surface Reconstruction from Multiple Range Images 1064 117-126
[17]  
Wang G.(1995)An experimental comparison of range image segmentation algorithms IEEE PAMI 17 920-924
[18]  
Jain A. K.(1996)Surface reconstruction from unorganized points IEEE PAMI 18 673-689
[19]  
Mercer C.(1992)Intrinsic line features and contour metric for locating 3-D objects in sparse, segmented range images Computer Graphics 26 71-78
[20]  
Dori D.(1999)Mobile robot navigation using artificial landmarks Image and Vision Computing (Special Issue on Visual Form Analysis) 17 403-417