Matrix factorization-based hashing has been very effective in addressing the cross-modal retrieval task. In this work, we propose a novel supervised hashing approach utilizing the concepts of matrix factorization which can seamlessly incorporate the label information. In the proposed approach, the latent factors for each individual modality are generated and then converted to the more discriminative label space using modality specific linear transformations. In the first stage of the approach, the hash codes are learnt using an alternating minimization algorithm and in the next stage, modality specific hash functions are learned to convert the original features of the cross-modal data into the hash code domain. In addition, we also propose ...
Hashing methods have been extensively applied to efficient multimedia data indexing and retrieval on...
In this paper, we propose a novel deep generative approach to cross-modal retrieval to learn hash fu...
<p> Hashing based methods have attracted considerable attention for efficient cross-modal retrieval...
Matrix factorization-based hashing has been very effective in addressing the cross-modal retrieval t...
The target of cross-modal hashing is to embed heterogeneous multimedia data into a common low-dimens...
The target of cross-modal hashing is to embed heterogeneous multimedia data into a common low-dimens...
Cross-modal retrieval is gaining importance due to the availability of large amounts of multimedia d...
Cross-modal retrieval is gaining importance due to the availability of large amounts of multimedia d...
The target of cross-modal hashing is to embed heterogeneous multimedia data into a common low-dimens...
The recent deep cross-modal hashing (DCMH) has achieved superior performance in effective and effici...
Cross-modal hashing has attracted considerable attention for large-scale multimodal data. Recent sup...
Due to availability of large amounts of multimedia data, cross-modal matching is gaining increasing ...
Due to availability of large amounts of multimedia data, cross-modal matching is gaining increasing ...
Retrieval on Cross-modal data has attracted extensive attention as it enables fast searching across ...
Recently, multimodal hashing techniques have received considerable attention due to their low storag...
Hashing methods have been extensively applied to efficient multimedia data indexing and retrieval on...
In this paper, we propose a novel deep generative approach to cross-modal retrieval to learn hash fu...
<p> Hashing based methods have attracted considerable attention for efficient cross-modal retrieval...
Matrix factorization-based hashing has been very effective in addressing the cross-modal retrieval t...
The target of cross-modal hashing is to embed heterogeneous multimedia data into a common low-dimens...
The target of cross-modal hashing is to embed heterogeneous multimedia data into a common low-dimens...
Cross-modal retrieval is gaining importance due to the availability of large amounts of multimedia d...
Cross-modal retrieval is gaining importance due to the availability of large amounts of multimedia d...
The target of cross-modal hashing is to embed heterogeneous multimedia data into a common low-dimens...
The recent deep cross-modal hashing (DCMH) has achieved superior performance in effective and effici...
Cross-modal hashing has attracted considerable attention for large-scale multimodal data. Recent sup...
Due to availability of large amounts of multimedia data, cross-modal matching is gaining increasing ...
Due to availability of large amounts of multimedia data, cross-modal matching is gaining increasing ...
Retrieval on Cross-modal data has attracted extensive attention as it enables fast searching across ...
Recently, multimodal hashing techniques have received considerable attention due to their low storag...
Hashing methods have been extensively applied to efficient multimedia data indexing and retrieval on...
In this paper, we propose a novel deep generative approach to cross-modal retrieval to learn hash fu...
<p> Hashing based methods have attracted considerable attention for efficient cross-modal retrieval...