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ICPR
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computer vision
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ICPR 2004
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Sketched Symbol Recognition using Zernike Moments
14 years 10 months ago
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embedded.eecs.berkeley.edu
A. Richard Newton, Heloise Hwawen Hse
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Computer Vision
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ICPR 2004
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Symbol Recognition
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Added
09 Nov 2009
Updated
09 Nov 2009
Type
Conference
Year
2004
Where
ICPR
Authors
A. Richard Newton, Heloise Hwawen Hse
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Researcher Info
Computer Vision Study Group
Computer Vision