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	<event:Event rdf:about="http://ebiquity.umbc.edu/event/html/id/363/Hyperspectral-Imaging-an-Emerging-Technique-in-Remote-Sensing">
		<rdfs:label><![CDATA[Hyperspectral Imaging: an Emerging Technique in Remote Sensing]]></rdfs:label>
		<event:title><![CDATA[Hyperspectral Imaging: an Emerging Technique in Remote Sensing]]></event:title>
		<event:speaker>
<person:Collaborator rdf:about="http://ebiquity.umbc.edu/person/html/Chein-I/Chang"><person:name><![CDATA[Chein-I Chang]]></person:name><rdfs:label><![CDATA[Chein-I Chang]]></rdfs:label></person:Collaborator>
		</event:speaker>
		<event:startDate rdf:datatype="&xsd;dateTime">2010-09-17T11:00:00-05:00</event:startDate>
		<event:endDate rdf:datatype="&xsd;dateTime">2010-09-17T12:00:00-05:00</event:endDate>
		<event:location><![CDATA[325b ITE, UMBC]]></event:location>
		<event:abstract><![CDATA[Hyperspectral imaging has expanded capability of multispectral imaging
in many prospects. Specifically, it changes many ways how algorithms
are designed from traditional spatial-domain (literal) analysis to
spectral-domain (non-literal) analysis. This is mainly due to the fact
that many unknown substances which cannot be identified by visual
inspection or prior knowledge can now be uncovered by high spectral
resolution provided by hyperspectral imagery. It is particularly
evidential in applications of spectral unmixing, anomaly detection and
subpixel/mixed pixel analysis where target signatures are on longer
pure but rather mixed by other substances or background signatures
within a single pixel. In this case, no inter-pixel spatial
correlation is available to perform literal analysis and data
processing must be carried out on a single pixel basis in an
unsupervised manner without appealing for spatial information. This
talk investigates issues arising in hyperspectral imaging from
statistical signal processing view points and further explores
applications in which multispectral imaging seems ineffective but
hyperspectral imaging has found potential promise and great success. ]]></event:abstract>
		<event:tag><![CDATA[image processing]]></event:tag>
		<event:tag><![CDATA[remote sensing]]></event:tag>
		<event:host>
<person:PrincipalFaculty rdf:about="http://ebiquity.umbc.edu/person/html/Tim/Finin"><person:name><![CDATA[Tim Finin]]></person:name><rdfs:label><![CDATA[Tim Finin]]></rdfs:label></person:PrincipalFaculty>
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