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<bibitem type="O">   <ARLID>0438902</ARLID> <utime>20240103205502.4</utime><mtime>20150122235959.9</mtime>         <title language="eng" primary="1">ImageJ plugin for the Snell segmentation method</title>  <publisher> <pub_time>2014</pub_time> </publisher>     <keyword>Image Processing</keyword>   <keyword>Image Segmentation</keyword>   <keyword>ImageJ plugin</keyword>    <author primary="1"> <ARLID>cav_un_auth*0101190</ARLID> <name1>Schier</name1> <name2>Jan</name2> <full_dept language="cz">Zpracování obrazové informace</full_dept> <full_dept language="eng">Department of Image Processing</full_dept> <department language="cz">ZOI</department> <department language="eng">ZOI</department> <institution>UTIA-B</institution> <full_dept>Department of Image Processing</full_dept>  <fullinstit>Ústav teorie informace a automatizace AV ČR, v. v. i.</fullinstit> </author>        <cas_special> <project> <project_id>TA01010931</project_id> <agency>GA TA ČR</agency> <ARLID>cav_un_auth*0272418</ARLID> </project>  <abstract language="eng" primary="1">For image segmentation in the bioimaging field, the Otsu thresholding algorithm is very often the algorithm of choice. It's simple and fast algorithm. The drwaback of this algorithm is that it does not account for the image contents, and, in the bioimaging context, it often sets the threshold too high. In result, the  contours of the resulting binary objects do not fully cover the original objects.  An alternative option is represented by algorithms based on iterative optimization, such as the active contours, deformable models, etc.  These algorithms are iterative  and possibly rather computationally expensive. An interesting trade-off between the two approaches has been described in Snell et al: Segmentation and shape classification of  nuclei in DAPI images. This  method uses cost function that relates to the quality of resulting boundary. In the poster, an implementation of the Snell algorithm in the form of an ImageJ plugin was presented.</abstract>     <reportyear>2015</reportyear>  <RIV>JC</RIV>     <inst_support> RVO:67985556 </inst_support>  <permalink>http://hdl.handle.net/11104/0243123</permalink>   <confidential>S</confidential>       <arlyear>2014</arlyear>       <unknown tag="mrcbU10"> 2014 </unknown> </cas_special> </bibitem>