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<OAI-PMH schemaLocation=http://www.openarchives.org/OAI/2.0/ http://www.openarchives.org/OAI/2.0/OAI-PMH.xsd> <responseDate>2018-01-15T18:41:45Z</responseDate> <request identifier=oai:HAL:hal-00637143v1 verb=GetRecord metadataPrefix=oai_dc>http://api.archives-ouvertes.fr/oai/hal/</request> <GetRecord> <record> <header> <identifier>oai:HAL:hal-00637143v1</identifier> <datestamp>2017-12-21</datestamp> <setSpec>type:COMM</setSpec> <setSpec>subject:info</setSpec> <setSpec>subject:spi</setSpec> <setSpec>collection:UNIV-AG</setSpec> <setSpec>collection:BNRMI</setSpec> </header> <metadata><dc> <publisher>HAL CCSD</publisher> <title lang=en>Segmentation of color images of plants with a Markovian Mean Shift</title> <creator>Nagau, Jimmy</creator> <creator>Henry, Jean-Luc</creator> <contributor>Laboratoire de Mathématiques Informatique et Applications (LAMIA) ; Université des Antilles et de la Guyane (UAG)</contributor> <description>International audience</description> <source>Applied Imagery Pattern Recognition (AIPR)</source> <source>the IEEE Applied Imagery Pattern Recognition Workshop</source> <coverage>Washington DC, United States</coverage> <identifier>hal-00637143</identifier> <identifier>https://hal.archives-ouvertes.fr/hal-00637143</identifier> <source>https://hal.archives-ouvertes.fr/hal-00637143</source> <source>the IEEE Applied Imagery Pattern Recognition Workshop, Oct 2011, Washington DC, United States. pp.1-5, 2011, 〈10.1109/AIPR.2011.6176338〉</source> <identifier>DOI : 10.1109/AIPR.2011.6176338</identifier> <relation>info:eu-repo/semantics/altIdentifier/doi/10.1109/AIPR.2011.6176338</relation> <language>en</language> <subject>[INFO.INFO-TS] Computer Science [cs]/Signal and Image Processing</subject> <subject>[SPI.SIGNAL] Engineering Sciences [physics]/Signal and Image processing</subject> <type>info:eu-repo/semantics/conferenceObject</type> <type>Conference papers</type> <description lang=en>The segmentation of digital images of plants is a tricky operation. In the example of a plant image on a unhomogeneous background, i.e. taken in its environment, the colorimetric diversity of the elements of a scene or the large number of forms can amplify the phenomena of over-segmentation. Global segmentation methods such as Mean Shift are then in this case the ones which will give the best results. These methods take into account the totality of the pixels of an image before classifying a point. On the other hand, complexity is increased, because it is necessary to go through the whole image treated, in order to find the mode of the point which one wishes to classify. In this article, we plan to couple the global segmentation with a local method which would take over in the event of obvious classification of a given point. The Mean Shift method is used for this purpose in association with Markov's chains.</description> <date>2011-10-11</date> </dc> </metadata> </record> </GetRecord> </OAI-PMH>