Title :
On Improving the Efficiency of Tensor Voting
Author :
Moreno, R. ; Garcia, M.A. ; Puig, D. ; Pizarro, L. ; Burgeth, Bernhard ; Weickert, Joachim
Author_Institution :
Dept. of Med. & Health Sci. (IMH), Linkoping Univ., Linkoping, Sweden
Abstract :
This paper proposes two alternative formulations to reduce the high computational complexity of tensor voting, a robust perceptual grouping technique used to extract salient information from noisy data. The first scheme consists of numerical approximations of the votes, which have been derived from an in-depth analysis of the plate and ball voting processes. The second scheme simplifies the formulation while keeping the same perceptual meaning of the original tensor voting: The stick tensor voting and the stick component of the plate tensor voting must reinforce surfaceness, the plate components of both the plate and ball tensor voting must boost curveness, whereas junctionness must be strengthened by the ball component of the ball tensor voting. Two new parameters have been proposed for the second formulation in order to control the potentially conflictive influence of the stick component of the plate vote and the ball component of the ball vote. Results show that the proposed formulations can be used in applications where efficiency is an issue since they have a complexity of order O(1). Moreover, the second proposed formulation has been shown to be more appropriate than the original tensor voting for estimating saliencies by appropriately setting the two new parameters.
Keywords :
approximation theory; computational complexity; computer vision; computational complexity; noisy data; numerical approximations; plate and ball voting processes; plate tensor voting; robust perceptual grouping technique; salient information extraction; stick component; stick tensor voting; Approximation methods; Complexity theory; Eigenvalues and eigenfunctions; Shape; Surface treatment; Tensile stress; Three dimensional displays; Perceptual methods; curveness and junctionness propagation.; nonlinear approximation; perceptual grouping; tensor voting;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2011.23