Techniques to learn hash codes which can store and retrieve large dimensional multimedia data efficiently have attracted broad research interests in the recent years. With rapid explosion of newly emerged concepts and online data, existing supervised hashing algorithms suffer from the problem of scarcity of ground truth annotations due to the high cost of obtaining manual annotations. Therefore, we propose an algorithm to learn a hash function from training images belonging to `seen' classes which can efficiently encode images of `unseen' classes to binary codes. Specifically, we project the image features from visual space and semantic features from semantic space into a common Hamming subspace. Earlier works to generate hash codes have tr...
Hashing is a popular approximate nearest neighbor search approach for large-scale image retrieval. S...
Similarity-based image hashing represents crucial technique for visual data storage reduction and ex...
In many real-world applications, the ability of knowledge transfer is required everywhere, which lea...
Hashing has shown its efficiency and effectiveness in facilitating large-scale multimedia applicatio...
We address the problem of image hashing by learning binary codes from large and weakly supervised ph...
Representing images by compact hash codes is an attractive approach for large-scale content-based im...
Recently, learning to hash has been widely studied for image retrieval thanks to the computation and...
Unsupervised hashing can desirably support scalable content-based image retrieval for its appealing ...
Recently, learning based hashing techniques have at-tracted broad research interests because they ca...
This paper provides a framework to hash images containing instances of unknown object classes. In ma...
Hashing methods have proven to be effective in the field of large-scale image retrieval. In recent y...
Deep hashing methods utilize an end-to-end framework to mutually learn feature representations and h...
In this paper we introduce a novel hash learning framework that has two main distinguishing features...
Nowadays, due to the exponential growth of user generated images and videos, there is an increasing ...
© 2018 IEEE. Unsupervised hashing can desirably support scalable content-based image retrieval for i...
Hashing is a popular approximate nearest neighbor search approach for large-scale image retrieval. S...
Similarity-based image hashing represents crucial technique for visual data storage reduction and ex...
In many real-world applications, the ability of knowledge transfer is required everywhere, which lea...
Hashing has shown its efficiency and effectiveness in facilitating large-scale multimedia applicatio...
We address the problem of image hashing by learning binary codes from large and weakly supervised ph...
Representing images by compact hash codes is an attractive approach for large-scale content-based im...
Recently, learning to hash has been widely studied for image retrieval thanks to the computation and...
Unsupervised hashing can desirably support scalable content-based image retrieval for its appealing ...
Recently, learning based hashing techniques have at-tracted broad research interests because they ca...
This paper provides a framework to hash images containing instances of unknown object classes. In ma...
Hashing methods have proven to be effective in the field of large-scale image retrieval. In recent y...
Deep hashing methods utilize an end-to-end framework to mutually learn feature representations and h...
In this paper we introduce a novel hash learning framework that has two main distinguishing features...
Nowadays, due to the exponential growth of user generated images and videos, there is an increasing ...
© 2018 IEEE. Unsupervised hashing can desirably support scalable content-based image retrieval for i...
Hashing is a popular approximate nearest neighbor search approach for large-scale image retrieval. S...
Similarity-based image hashing represents crucial technique for visual data storage reduction and ex...
In many real-world applications, the ability of knowledge transfer is required everywhere, which lea...