Title :
A global solution to sparse correspondence problems
Author :
Maciel, João ; Costeira, João P.
Author_Institution :
Instituto de Sistemas e Robotica, Inst. Superior Tecnico, Lisboa, Portugal
fDate :
2/1/2003 12:00:00 AM
Abstract :
We propose a new methodology for reliably solving the correspondence problem between sparse sets of points of two or more images. This is a key step inmost problems of computer vision and, so far, no general method exists to solve it. Our methodology is able to handle most of the commonly used assumptions in a unique formulation, independent of the domain of application and type of features. It performs correspondence and outlier rejection in a single step and achieves global optimality with feasible computation. Feature selection and correspondence are first formulated as an integer optimization problem. This is a blunt formulation, which considers the whole combinatorial space of possible point selections and correspondences. To find its global optimal solution, we build a concave objective function and relax the search domain into its convex-hull. The special structure of this extended problem assures its equivalence to the original one, but it can be optimally solved by efficient algorithms that avoid combinatorial search. This methodology can use any criterion provided it can be translated into cost functions with continuous second derivatives.
Keywords :
computational complexity; image processing; integer programming; combinatorial space; computer vision; concave objective function; convex-hull; correspondence; efficient algorithms; feasible computation; feature selection; global optimal solution; global optimality; global solution; integer optimization problem; optimal solution; outlier rejection; search domain relaxation; sparse correspondence problems; Application software; Cameras; Computer vision; Cost function; Feature extraction; Image reconstruction; Linear programming; Object recognition; Optimization methods; Stereo vision;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2003.1177151