DocumentCode :
3670410
Title :
Automatic method for sharp feature extraction from 3D data of man-made objects
Author :
Trung-Thien Tran;Van-Toan Cao;Van Tung Nguyen;Sarah Ali;Denis Laurendeau
Author_Institution :
Computer Vision and Systems Laboratory, Department of Electrical and Computer Engineering, Laval University, 1065, Avenue de la Mé
fYear :
2014
Firstpage :
1
Lastpage :
8
Abstract :
A novel algorithm is proposed for extracting sharp features automatically from scanned 3D data of man-made CAD-like objects. The input of our method consists of a mesh or an unstructured point cloud that is captured on the object surface. First, the vector between a given point and the centroid of its neighborhood at a given scale is projected on the normal vector and called the ‘projected distance’ at this point. This projected distance is calculated for every data point. In a second stage, Otsu´s method is applied to the histogram of the projected distances in order to select the optimal threshold value, which is used to detect potential sharp features at a single scale. These two stages are applied iteratively with the other incremental scales. Finally, points recorded as potential features at every scale are marked as valid sharp features. The method has many advantages over existing methods such as intrinsic simplicity, automatic selection of threshold value, accurate and robust detection of sharp features on various objects. To demonstrate the robustness of the method, it is applied on both synthetic and real 3D data of point clouds and meshes with different noise levels.
Keywords :
"Feature extraction","Three-dimensional displays","Surface treatment","Mathematical model","Estimation","Histograms","Robustness"
Publisher :
ieee
Conference_Titel :
Computer Graphics Theory and Applications (GRAPP), 2014 International Conference on
Type :
conf
Filename :
7296038
Link To Document :
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