<--- Back to Details
First PageDocument Content
Information / Relevance feedback / Content-based image retrieval / Relevance / Image retrieval / Document retrieval / Recommender system / Precision and recall / Rocchio Classification / Information science / Information retrieval / Science
Date: 2008-01-05 03:27:19
Information
Relevance feedback
Content-based image retrieval
Relevance
Image retrieval
Document retrieval
Recommender system
Precision and recall
Rocchio Classification
Information science
Information retrieval
Science

Multimed Tools Appl: 1–28 DOIs11042An adaptive technique for content-based image retrieval Jana Urban & Joemon M. Jose & Cornelis J. van Rijsbergen

Add to Reading List

Source URL: www.dcs.gla.ac.uk

Download Document from Source Website

File Size: 635,79 KB

Share Document on Facebook

Similar Documents

Cross-Lingual Text Categorization Nuria Bel and Marta Villegas, gilcUB Barcelona Cornelis H.A. Koster, University of Nijmegen Text Classification

Cross-Lingual Text Categorization Nuria Bel and Marta Villegas, gilcUB Barcelona Cornelis H.A. Koster, University of Nijmegen Text Classification

DocID: 1mXwh - View Document

Multimed Tools Appl: 1–28 DOIs11042An adaptive technique for content-based image retrieval Jana Urban & Joemon M. Jose & Cornelis J. van Rijsbergen

Multimed Tools Appl: 1–28 DOIs11042An adaptive technique for content-based image retrieval Jana Urban & Joemon M. Jose & Cornelis J. van Rijsbergen

DocID: 18U9V - View Document

Information Processing and Management–190 www.elsevier.com/locate/infoproman An implicit feedback approach for interactive information retrieval Ryen W. White

Information Processing and Management–190 www.elsevier.com/locate/infoproman An implicit feedback approach for interactive information retrieval Ryen W. White

DocID: 18xtl - View Document

Meiji University Web, Novelty and Genomics Track Experiments Tomoe Tomiyama, Kosuke Karoji, Takeshi Kondo, Yuichi Kakuta and Tomohiro Takagi Department of Computer Science, Meiji University {tomiyama, karoji, t-kondo, ka

Meiji University Web, Novelty and Genomics Track Experiments Tomoe Tomiyama, Kosuke Karoji, Takeshi Kondo, Yuichi Kakuta and Tomohiro Takagi Department of Computer Science, Meiji University {tomiyama, karoji, t-kondo, ka

DocID: 187n7 - View Document

PDF Document

DocID: 13Zen - View Document