Cross-modal retrieval is such a challenging topic that traditional global representations would fail to bridge the semantic gap between images and texts to a satisfactory level. Using local features from images and words from documents directly can be more robust for the scenario with large intraclass variations and small interclass discrepancies. In this paper, we propose a novel unsupervised binary coding algorithm called binary set embedding (BSE) to obtain meaningful hash codes for local features from the image domain and words from text domain. Understanding image features with the word vectors learned from the human language instead of the provided documents from data sets, BSE can map samples into a common Hamming space effectively a...
In this paper, we propose a deep variational and structural hashing (DVStH) method to learn compact ...
Due to availability of large amounts of multimedia data, cross-modal matching is gaining increasing ...
Representing images by compact hash codes is an attractive approach for large-scale content-based im...
Cross-modal retrieval is such a challenging topic that traditional global representations would fail...
Retrieval on Cross-modal data has attracted extensive attention as it enables fast searching across ...
In this paper, we propose a cross-modal deep variational hashing (CMDVH) method to learn compact bin...
Hashing methods for cross-modal retrieval has drawn increasing research interests and has been widel...
<p> Hashing based methods have attracted considerable attention for efficient cross-modal retrieval...
© 1992-2012 IEEE. In this paper, we study the problem of cross-modal retrieval by hashing-based appr...
Cross-modal retrieval is gaining importance due to the availability of large amounts of multimedia d...
With the rapid growth of data with different modalities on the Internet, cross-modal retrieval has g...
To satisfy the huge storage space and organization capacity requirements in addressing big multimoda...
Cross-modal hashing is an effective and practical way for large-scale multimedia retrieval. Unsuperv...
Hashing methods have been extensively applied to efficient multimedia data indexing and retrieval on...
Hashing has been widely used in large-scale vision problems thanks to its efficiency in both storage...
In this paper, we propose a deep variational and structural hashing (DVStH) method to learn compact ...
Due to availability of large amounts of multimedia data, cross-modal matching is gaining increasing ...
Representing images by compact hash codes is an attractive approach for large-scale content-based im...
Cross-modal retrieval is such a challenging topic that traditional global representations would fail...
Retrieval on Cross-modal data has attracted extensive attention as it enables fast searching across ...
In this paper, we propose a cross-modal deep variational hashing (CMDVH) method to learn compact bin...
Hashing methods for cross-modal retrieval has drawn increasing research interests and has been widel...
<p> Hashing based methods have attracted considerable attention for efficient cross-modal retrieval...
© 1992-2012 IEEE. In this paper, we study the problem of cross-modal retrieval by hashing-based appr...
Cross-modal retrieval is gaining importance due to the availability of large amounts of multimedia d...
With the rapid growth of data with different modalities on the Internet, cross-modal retrieval has g...
To satisfy the huge storage space and organization capacity requirements in addressing big multimoda...
Cross-modal hashing is an effective and practical way for large-scale multimedia retrieval. Unsuperv...
Hashing methods have been extensively applied to efficient multimedia data indexing and retrieval on...
Hashing has been widely used in large-scale vision problems thanks to its efficiency in both storage...
In this paper, we propose a deep variational and structural hashing (DVStH) method to learn compact ...
Due to availability of large amounts of multimedia data, cross-modal matching is gaining increasing ...
Representing images by compact hash codes is an attractive approach for large-scale content-based im...