Title :
Classification in noisy environments using a distance measure between structural symbolic descriptions
Author :
Esposito, Floriana ; Malerba, Donato ; Semeraro, Giovanni
Author_Institution :
Dipartimento di Inf., Bari Univ., Italy
fDate :
3/1/1992 12:00:00 AM
Abstract :
A definition of distance measure between structural descriptions that is based on a probabilistic interpretation of the matching predicate is proposed. It aims at coping with the problem of classification when noise causes both local and structural deformations. The distance measure is defined according to a top-down evaluation scheme: distance between disjunctions of conjuncts, conjunctions, and literals. At the lowest level, the similarity between a feature value in the pattern model (G) and the corresponding value in the observation (Ex) is defined as the probability of observing a greater distortion. The classification problem is approached by means of a multilayered framework in which the cases of single perfect match, no perfect match, and multiple perfect match are treated differently. A plausible solution for the problem of completing the attribute and structure spaces, based on the probabilistic approach, is also given. A comparison with other related works and an application in the domain of layout-based document recognition are presented
Keywords :
learning systems; pattern recognition; probability; attribute spaces; classification; distance measure; feature value; layout-based document recognition; learning systems; matching predicate; noisy environments; pattern model; pattern recognition; probabilistic interpretation; structural symbolic descriptions; structure spaces; top-down evaluation; Distortion measurement; Euclidean distance; Instruments; Learning systems; Noise measurement; Pattern classification; Pattern matching; Pattern recognition; Phase noise; Working environment noise;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on