Most cross-modal retrieval methods based on subspace learning just focus on learning the projection matrices that map different modalities to a common subspace and pay less attention to the retrieval task specificity and class information. To address the two limitations and make full use of unlabelled data, we propose a novel semi-supervised method for cross-modal retrieval named modal-related retrieval based on discriminative comapping (MRRDC). The projection matrices are obtained to map multimodal data into a common subspace for different tasks. In the process of projection matrix learning, a linear discriminant constraint is introduced to preserve the original class information in different modal spaces. An iterative optimization algorit...
Conference of 2016 ACM Workshop on Vision and Language Integration Meets Multimedia Fusion, Iv and L...
A better similarity mapping function across heterogeneous high-dimensional features is very desirabl...
Hashing methods have been extensively applied to efficient multimedia data indexing and retrieval on...
Cross-modal retrieval has been attracting increasing attention because of the explosion of multi-mod...
Cross-modal retrieval has attracted significant attention due to the increasing use of multi-modal d...
© 2017 Association for Computing Machinery. Cross-modal retrieval aims to enable flexible retrieval ...
In order to exploit the abundant potential information of the unlabeled data and contribute to analy...
Cross-modal retrieval aims to enable flexible retrieval experience across different modalities (e.g....
Cross-modal retrieval aims to enable flexible retrieval experience across different modalities (e.g....
© 2017 IEEE. The core of existing cross-modal retrieval approaches is to close the gap between diffe...
In many problems in machine learning there exist relations between data collections from different m...
Cross-modal retrieval is an important field of research today because of the abundance of multi-medi...
Conference of 2016 ACM Workshop on Vision and Language Integration Meets Multimedia Fusion, Iv and L...
Cross-modal retrieval aims to retrieve the relevant samples across different modalities, of which th...
Conference of 2016 ACM Workshop on Vision and Language Integration Meets Multimedia Fusion, Iv and L...
Conference of 2016 ACM Workshop on Vision and Language Integration Meets Multimedia Fusion, Iv and L...
A better similarity mapping function across heterogeneous high-dimensional features is very desirabl...
Hashing methods have been extensively applied to efficient multimedia data indexing and retrieval on...
Cross-modal retrieval has been attracting increasing attention because of the explosion of multi-mod...
Cross-modal retrieval has attracted significant attention due to the increasing use of multi-modal d...
© 2017 Association for Computing Machinery. Cross-modal retrieval aims to enable flexible retrieval ...
In order to exploit the abundant potential information of the unlabeled data and contribute to analy...
Cross-modal retrieval aims to enable flexible retrieval experience across different modalities (e.g....
Cross-modal retrieval aims to enable flexible retrieval experience across different modalities (e.g....
© 2017 IEEE. The core of existing cross-modal retrieval approaches is to close the gap between diffe...
In many problems in machine learning there exist relations between data collections from different m...
Cross-modal retrieval is an important field of research today because of the abundance of multi-medi...
Conference of 2016 ACM Workshop on Vision and Language Integration Meets Multimedia Fusion, Iv and L...
Cross-modal retrieval aims to retrieve the relevant samples across different modalities, of which th...
Conference of 2016 ACM Workshop on Vision and Language Integration Meets Multimedia Fusion, Iv and L...
Conference of 2016 ACM Workshop on Vision and Language Integration Meets Multimedia Fusion, Iv and L...
A better similarity mapping function across heterogeneous high-dimensional features is very desirabl...
Hashing methods have been extensively applied to efficient multimedia data indexing and retrieval on...