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Distance-based approaches to pattern recognition via embedding

  • Nicholas A. Nechval
  • , Konstantin N. Nechval
  • , Vadim Danovich
  • , Gundars Berzins
  • University of Latvia
  • Transport and Telecommunication Institute (TSI)

Research output: Chapter in Book/Report/Conference proceedingConference paperResearchpeer-review

1 Citation (Scopus)

Abstract

The most popular separation criterion of establishing rules for discrimination and recognition (classification) of patterns is the Fisher discriminant (separation) ratio. The approach proposed by Fisher assumes equality of population covariance matrices, but does not explicitly require multivariate normality. However, optimal classification performance of Fisher's discriminant function can only be expected when multivariate normality is present as well, since only good discrimination can ensure good allocation. In practice, we often are in need of analyzing input data samples, which are not adequate for Fisher's classification rule, such that the distributions of the groups are not multivariate normal or covariance matrices of those are different or there are strong multi-nonlinearities. In this paper, distance-based approaches for pattern classification (recognition) via embedding are proposed which allow one to classify, say, radar clutter into one of several major categories, including bird, weather, and target classes. These approaches do not require the arbitrary selection of priors as in the Bayesian classifier and represent the Improved pattern recognition (classification) procedures that allows one to take into account the cases which are not adequate for Fisher's classification rule. Moreover, they allow one to classify sets of multivariate observations, where each of the sets contains more than one observation. For the cases, which are adequate for Fisher's classification rule, the proposed approaches give the results similar to that of Fisher's classification rule. For illustration, a numerical example is given.

Original languageEnglish
Title of host publicationWorld Congress on Engineering, WCE 2014
Place of PublicationLondon
PublisherNewswood Limited
Pages759-764
Number of pages6
Volume2
ISBN (Print)9789881925350
Publication statusPublished - 2014
EventWorld Congress on Engineering, WCE 2014 - London, United Kingdom
Duration: 2 Jul 20144 Jul 2014

Publication series

NameLecture Notes in Engineering and Computer Science
Volume2
ISSN (Print)2078-0958

Conference

ConferenceWorld Congress on Engineering, WCE 2014
Country/TerritoryUnited Kingdom
CityLondon
Period2/07/144/07/14

OECD Field of Science

  • 5.2 Economics and Business

Keywords

  • Classification
  • Distance-based approaches
  • Embedding
  • Pattern

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