Title :
On seeing spaghetti: self-adjusting piecewise toroidal recognition of flexible extruded objects
Author :
Kender, John R. ; Kjeldsen, Rick
Author_Institution :
Dept. of Comput. Sci., Columbia Univ., New York, NY, USA
fDate :
2/1/1995 12:00:00 AM
Abstract :
We present a model for flexible extruded objects, such as wires, tubes, or grommets, and demonstrate a novel, self-adjusting, seven-dimensional Hough transform that derives their diameter and three-space curved axes from position and surface normal information. The method is purely local and is inexpensive to compute. The model considers such objects as piecewise toroidal, and decomposes the seven parameters of a torus into three nested subspaces, the structures of which counteract the errors implicit in the analysis of objects of great size and/or small curvature. We believe it is the first example of a parameter space structure designed to cluster ill-conditioned hypotheses together so that they can be easily detected and ignored. This work complements existing shape-from-contour approaches for analyzing tori: it uses no edge information, and it does not require the solution of high-degree nonlinear equations by iterative techniques
Keywords :
Hough transforms; adaptive systems; image recognition; self-adjusting systems; 7D Hough transform; clustering; curvature; flexible extruded objects; ill-conditioned hypotheses; nested subspaces; parameter space structure; self-adjusting piecewise toroidal recognition; shape-from-contour; three-space curved axes; Coaxial cables; Computer vision; Imaging phantoms; Information analysis; Iterative methods; Manufacturing; Mathematical analysis; Nonlinear equations; Robustness; Wires;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on