Number of items: 1.
Chi, Mingmin and
Zhang, Peiwu and
Zhao, Yingbin and
Feng, Rui and
Xue, Xiangyang Web Image Retrieval ReRanking with Multi-view Clustering. General image retrieval is often carried out by a text-based search engine, such as Google Image Search. In this case, natural language queries are used as input to the search engine. Usually, the user queries are quite ambiguous and the returned results are not well-organized as the ranking often done by the popularity of an image. In order to address these problems, we propose to use both textual and visual contents of retrieved images to reRank web retrieved results. In particular, a machine learning technique, a multi-view clustering algorithm is proposed to reorganize the original results provided by the text-based search engine. Preliminary results validate the effectiveness of the proposed framework.
This list was generated on Fri Feb 15 08:57:46 2019 GMT.
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