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<bibitem type="C">   <ARLID>0085321</ARLID> <utime>20240111140649.3</utime><mtime>20070906235959.9</mtime>         <title language="eng" primary="1">Demonstration of image retrieval based on illumination invariant textural MRF features</title>  <specification> <page_count>3 s.</page_count> </specification>   <serial><ARLID>cav_un_epca*0085319</ARLID><ISBN>978-1-59593-733-9</ISBN><title>CIVR '07: Proceedings of the 6th ACM international conference on Image and video retrieval</title><part_num/><part_title/><page_num>135-137</page_num><publisher><place>New York</place><name>ACM Press</name><year>2007</year></publisher></serial>   <title language="cze" primary="0">Demonstrace  vyhledávání obrazů založeného na iluminačně invariantních MRF příznacích</title>    <keyword>Content-based Image retrieval (CBIR)</keyword>   <keyword>illumination invariants</keyword>   <keyword>Markov random fields (MRF)</keyword>    <author primary="1"> <ARLID>cav_un_auth*0213290</ARLID> <name1>Vácha</name1> <name2>Pavel</name2> <institution>UTIA-B</institution> <full_dept>Department of Pattern Recognition</full_dept>  <fullinstit>Ústav teorie informace a automatizace AV ČR, v. v. i.</fullinstit> </author> <author primary="0"> <ARLID>cav_un_auth*0101093</ARLID> <name1>Haindl</name1> <name2>Michal</name2> <institution>UTIA-B</institution> <full_dept>Department of Pattern Recognition</full_dept>  <fullinstit>Ústav teorie informace a automatizace AV ČR, v. v. i.</fullinstit> </author>   <source> <source_type>textový dokument</source_type> <url>http://doi.acm.org/10.1145/1282280.1282305</url> </source>        <cas_special> <project> <project_id>507752</project_id> <country>XE</country>   <agency>EC</agency> <ARLID>cav_un_auth*0200689</ARLID> </project> <project> <project_id>1ET400750407</project_id> <agency>GA AV ČR</agency> <ARLID>cav_un_auth*0001797</ARLID> </project> <project> <project_id>1M0572</project_id> <agency>GA MŠk</agency> <ARLID>cav_un_auth*0001814</ARLID> </project> <project> <project_id>2C06019</project_id> <agency>GA MŠk</agency> <country>CZ</country> <ARLID>cav_un_auth*0216518</ARLID> </project> <project> <project_id>IAA2075302</project_id> <agency>GA AV ČR</agency> <ARLID>cav_un_auth*0001801</ARLID> </project> <research> <research_id>CEZ:AV0Z10750506</research_id> </research>  <abstract language="eng" primary="1">Content-based image retrieval (CBIR) systems target database images using feature similarities with respect to the query. Our CBIR demonstration utilises novel illumination invariant features, which are extracted from Markov random field (MRF) based texture representations. These features allow retrieving images with similar scenes comprising colour-textured objects viewed with different illumination brightness or spectrum. The illumination invariant retrieval is verified on textures from the Outex database.</abstract> <abstract language="cze" primary="0">Systémy vyhledávání obrazu podle jeho obsahu  (Content-based image retrieval - CBIR) používají při prohledávání obrazové databáze příznakovou podobnost vzhledem ke vzorovému obrazu. Naše CBIR demonstrace používá  nové iluminační invarianty, odvozené z texturních reprezentací založených na markovských náhodných polích (MRF). Tyto míry dovolují vyhledávat obrazy podobných scén obsahujících barevné texturované objekty osvětlené světlem s různým jasem a spektrem. Iluminační invarianty jsou ověřeny na texturách  z databáze  Outex.</abstract>  <action target="WRD"> <ARLID>cav_un_auth*0229722</ARLID> <name>ACM international conference on Image and video retrieval /6./</name> <place>Amsterdam</place> <dates>09.07.2007-11.07.2007</dates>  <country>NL</country> </action>    <reportyear>2008</reportyear>  <RIV>BD</RIV>      <permalink>http://hdl.handle.net/11104/0147867</permalink>        <arlyear>2007</arlyear>       <unknown tag="mrcbU56"> textový dokument </unknown> <unknown tag="mrcbU63"> cav_un_epca*0085319 CIVR '07: Proceedings of the 6th ACM international conference on Image and video retrieval 978-1-59593-733-9 135 137 New York ACM Press 2007 </unknown> </cas_special> </bibitem>