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TRECVID
2007
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High-Level Feature Extraction Experiments for TRECVID 2007
13 years 10 months ago
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TURED ABSTRACT High-Level Feature Extraction (HLFE)
Masaki Naito, Keiichiro Hoashi, Kazunori Matsumoto
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Added
07 Nov 2010
Updated
07 Nov 2010
Type
Conference
Year
2007
Where
TRECVID
Authors
Masaki Naito, Keiichiro Hoashi, Kazunori Matsumoto, Masami Shishibori, Kenji Kita, Andrea Kutics, Akihiko Nakagawa, Fumiaki Sugaya, Yasuyuki Nakajima
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Researcher Info
Internet Technology Study Group
Computer Vision