DocumentCode
757211
Title
A theoretical framework for relaxation processes in pattern recognition: application to robust nonparametric contour generalization
Author
Faber, Petko
Author_Institution
Robert Bosch GmbH, Germany
Volume
25
Issue
8
fYear
2003
Firstpage
1021
Lastpage
1027
Abstract
While various approaches are suggested in the literature to describe and generalize relaxation processes concerning to several objectives, the wider problem addressed here is to find the best-suited relaxation process for a given assignment problem, or better still, to construct a task-dependent relaxation process. For this, we develop a general framework for the theoretical foundations of relaxation processes in pattern recognition. The resulting structure enables (1) a description of all known relaxation processes in general terms and (2) the design of task-dependent relaxation processes. We show that the well-known standard relaxation formulas verify our approach. Referring to the common problem of generating a generalized description of a contour we demonstrate the applicability of the suggested generalization in detail. Important characteristics of the constructed task-dependent relaxation process are: (1) the independency of the segmentation from any parameters, (2) the invariance to geometric transformations, (3) the simplicity, and (4) efficiency.
Keywords
computational geometry; pattern recognition; relaxation theory; assignment problem; compatibility function; contour description; geometric transformations; information theoretic model selection; pattern recognition; relaxation processes; robust nonparametric contour generalization; segmentation; Calculus; Concrete; Design methodology; Fellows; Pattern recognition; Physics; Probability; Process design; Relaxation methods; Robustness;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2003.1217606
Filename
1217606
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