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DATESO
2009
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Dimension Reduction Methods for Iris Recognition
13 years 8 months ago
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sunsite.informatik.rwth-aachen.de
In this paper, we compare performance of several dimension reduction techniques, namely LSI, FastMap, and SDD in Iris recognition. We compare the quality of these methods from both the visual impact, and quality of generated "eigenirises".
Pavel Moravec, Václav Snásel
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Added
17 Feb 2011
Updated
17 Feb 2011
Type
Journal
Year
2009
Where
DATESO
Authors
Pavel Moravec, Václav Snásel
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Researcher Info
Database Study Group
Computer Vision