Title of article :
Implementation techniques for geometric branch-and-bound matching methods
Author/Authors :
Breuel، نويسنده , , Thomas M.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2003
Pages :
37
From page :
258
To page :
294
Abstract :
Algorithms for geometric matching and feature extraction that work by recursively subdividing transformation space and bounding the quality of match have been proposed in a number of different contexts and become increasingly popular over the last few years. This paper describes matchlist-based branch-and-bound techniques and presents a number of new applications of branch-and-bound methods, among them, a method for globally optimal partial line segment matching under bounded or Gaussian error, point matching under a Gaussian error model with subpixel accuracy and precise orientation models, and a simple and robust technique for finding multiple distinct object instances. It also contains extensive reference information for the implementation of such matching methods under a wide variety of error bounds and transformations. In addition, the paper contains a number of benchmarks and evaluations that provide new information about the runtime behavior of branch-and-bound matching algorithms in general, and that help choose among different implementation strategies, such as the use of point location data structures and space/time tradeoffs involving depth-first search.
Keywords :
Geometric matching , Maximum likelihood , branch and bound , Gaussian error , global optimization , Visual object recognition , Bounded error
Journal title :
Computer Vision and Image Understanding
Serial Year :
2003
Journal title :
Computer Vision and Image Understanding
Record number :
1694178
Link To Document :
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