Classification of objects on hyperspectral images — further developments

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Abstract

Classification of objects (such as tablets, cereals, fruits, etc.) is one of the very important applications of hyperspectral imaging and image analysis. Quite often, a hyperspectral image is represented and analyzed just as a bunch of spectra without taking into account spatial information about the pixels, which makes classification objects inefficient. Recently, several methods, which combine spectral and spatial information, has been also developed and this approach becomes more and more wide-spread. The methods use local rank, topology, spectral features calculated for separate objects and other spatial characteristics.

In this work we would like to show several improvements to the classification method, which utilizes spectral features calculated for individual objects [1]. The features are based (in general) on descriptors of spatial patterns of individual object’s pixels in a common principal component space. The method modifications include both the way the principal component space is built as well as the use of new descriptors for the patterns.

The comparison of the modified method with its previous version and competitors will be shown on several real cases.
Original languageEnglish
Publication date2016
Number of pages1
Publication statusPublished - 2016
EventInternational conference in spectral imaging - Chamonix-Mont-Blanc, France
Duration: 3 Jul 20166 Jul 2016
Conference number: 6
http://iasim16.sciencesconf.org
https://iasim16.sciencesconf.org

Conference

ConferenceInternational conference in spectral imaging
Number6
Country/TerritoryFrance
CityChamonix-Mont-Blanc
Period03/07/201606/07/2016
Internet address

Keywords

  • image analysis
  • hyper spectral images
  • chemometrics

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