Abstract

In recent works, a new notion of component-graph has been introduced to extend the data structure of component-tree –and the induced antiextensive filtering methodologies– from grey-level images to multivalued ones. In this article, we briefly recall the main structural key-points of component-graphs, and we present the initial algorithmic results that open the way to the actual development of component-graph-based antiextensive filtering procedures.

Keywords

Component-graph component-tree multivalued images partially ordered sets connected operators antiextensive filtering 

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Copyright information

© Springer-Verlag Berlin Heidelberg 2013

Authors and Affiliations

  • Benoît Naegel
    • 1
  • Nicolas Passat
    • 2
  1. 1.ICube, UMR CNRSUniversité de StrasbourgFrance
  2. 2.CReSTIC, EA 3804Université de ReimsFrance

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