<?xml version="1.0" encoding="utf-8"?><rss version="2.0"><channel><title>RSS for Multiple-shot human re-identification by Mean Riemannian Covariance Grid</title><link>http://academic.research.microsoft.com/Rss.aspx?cata=9&amp;id=51134993</link><description>Search RSS feed for Microsoft Academic Search</description><generator>MSRA Libra RSS Burner</generator><copyright>(c)2008 Microsoft Corpration, All right reserved.</copyright><pubDate>Fri, 24 May 2013 00:57:35 GMT</pubDate><lastBuildDate>Fri, 24 May 2013 00:57:35 GMT</lastBuildDate><category /><item><title>Multiple-shot human re-identification by Mean Riemannian Covariance Grid</title><link>http://academic.research.microsoft.com/Publication/51134993</link><pubDate>Thu, 23 May 2013 17:57:35 GMT</pubDate><guid isPermaLink="false">511349930</guid><description><![CDATA[<div><a href="http://academic.research.microsoft.com/Author/3838950">Slawomir Bak</a>, <a href="http://academic.research.microsoft.com/Author/3619788">Etienne Corvee</a>, <a href="http://academic.research.microsoft.com/Author/3319976">Francois Bremond</a>, <a href="http://academic.research.microsoft.com/Author/433420">Monique Thonnat</a>:
            
            <span style="margin-left:20px" /><span style="margin-left:20px"><a href="http://ieeexplore.ieee.org/stamp/stamp.jsp?arnumber=06027316">view publication</a></span></div><div>Human re-identification is defined as a requirement to determine whether a given individual has already appeared over a network of cameras. This problem is particularly hard by significant appearance changes across different camera views. In order to re-identify people a human signature should handle difference in illumination, pose and camera parameters. We propose a new appearance model combining information from multiple images to obtain highly discriminative human signature, called Mean Riemannian Covariance Grid (MRCG). The method is evaluated and compared with the state of the art using benchmark video sequences from the ETHZ and the i-LIDS datasets. We demonstrate that the proposed approach outperforms state of the art methods. Finally, the results of our approach are shown on two other more pertinent datasets.</div><div>Conference: <a href="http://academic.research.microsoft.com/Conference/322">Advanced Video and Signal Based Surveillance - AVSS</a>, 2011</div><div></div><div />]]></description></item></channel></rss>