Number of the records: 1  

Multispectral texture segmentation

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    SYSNO ASEP0411250
    Document TypeK - Proceedings Paper (Czech conf.)
    R&D Document TypeThe record was not marked in the RIV
    TitleMultispectral texture segmentation
    Author(s) Mikeš, Stanislav (UTIA-B) RID
    Haindl, Michal (UTIA-B) RID, ORCID
    Issue dataPraha: MFF UK, 2003
    ISBN80-86732-18-5
    Source TitleWDS '03 Proceedings of Contributed Papers / Šafránková J.
    s. 221-225
    Number of pages5 s.
    ActionWeek of Doctoral Students 2003. WDS'03
    Event date10.06.2003-13.06.2003
    VEvent locationPraha
    CountryCZ - Czech Republic
    Event typeCST
    Languageeng - English
    CountryCZ - Czech Republic
    Keywordstexture ; unsupervised segmentation ; Markov random fields
    Subject RIVBD - Theory of Information
    R&D ProjectsIAA2075302 GA AV ČR - Academy of Sciences of the Czech Republic (AV ČR)
    CEZAV0Z1075907 - UTIA-B
    AnnotationAn efficient and robust type of unsupervised multispectral texture segmentation method is presented. The algorithm starts with spectral factorization of an input multispectral texture image using the Karhunen-Loeve expansion. Monospectral factors of single texture patches are assumed to be modelled using a Gaussian Markov random field model. The texture segmentation is done by K-means algorithm in the Markov model parameter space evaluated for each pixel centered image window.
    WorkplaceInstitute of Information Theory and Automation
    ContactMarkéta Votavová, votavova@utia.cas.cz, Tel.: 266 052 201.

Number of the records: 1  

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