Recent years have witnessed the promising future of hashing in the industrial applications for fast similarity retrieval. In this paper, we propose a novel supervised hashing method for large-scale cross-media search, termed Self-Supervised Deep Multimodal Hashing (SSDMH), which learns unified hash codes as well as deep hash functions for different modalities in a self-supervised manner. With the proposed regularized binary latent model, unified binary codes can be solved directly without relaxation strategy while retaining the neighborhood structures by the graph regularization term. Moreover, we propose a new discrete optimization solution, termed as Binary Gradient Descent, which aims at improving the optimization efficiency towards real...
Due to the storage and retrieval efficiency, hashing has been widely deployed to approximate nearest...
Due to the exponential growth of multimedia data, multi-modal hashing as a promising technique to ma...
Retrieval on Cross-modal data has attracted extensive attention as it enables fast searching across ...
Data similarity search is widely regarded as a classic topic in the realms of computer vision, machi...
Data similarity search is widely regarded as a classic topic in the realms of computer vision, machi...
With the dramatic development of the Internet, how to exploit large-scale retrieval techniques for m...
With the dramatic development of the Internet, how to exploit large-scale retrieval techniques for m...
With the dramatic development of the Internet, how to exploit large-scale retrieval techniques for m...
Learning-based hashing has been researched extensively in the past few years due to its great potent...
Cross-modal hashing has demonstrated advantages on fast retrieval tasks. It improves the quality of ...
To satisfy the huge storage space and organization capacity requirements in addressing big multimoda...
Recently, multimodal hashing techniques have received considerable attention due to their low storag...
This paper proposes a deep hashing framework, namely, unsupervised deep video hashing (UDVH), for la...
In recent years, the amount of multimedia data such as images, texts, and videos have been growing r...
Due to its low storage cost and fast query speed, hashing has been widely adopted for similarity sea...
Due to the storage and retrieval efficiency, hashing has been widely deployed to approximate nearest...
Due to the exponential growth of multimedia data, multi-modal hashing as a promising technique to ma...
Retrieval on Cross-modal data has attracted extensive attention as it enables fast searching across ...
Data similarity search is widely regarded as a classic topic in the realms of computer vision, machi...
Data similarity search is widely regarded as a classic topic in the realms of computer vision, machi...
With the dramatic development of the Internet, how to exploit large-scale retrieval techniques for m...
With the dramatic development of the Internet, how to exploit large-scale retrieval techniques for m...
With the dramatic development of the Internet, how to exploit large-scale retrieval techniques for m...
Learning-based hashing has been researched extensively in the past few years due to its great potent...
Cross-modal hashing has demonstrated advantages on fast retrieval tasks. It improves the quality of ...
To satisfy the huge storage space and organization capacity requirements in addressing big multimoda...
Recently, multimodal hashing techniques have received considerable attention due to their low storag...
This paper proposes a deep hashing framework, namely, unsupervised deep video hashing (UDVH), for la...
In recent years, the amount of multimedia data such as images, texts, and videos have been growing r...
Due to its low storage cost and fast query speed, hashing has been widely adopted for similarity sea...
Due to the storage and retrieval efficiency, hashing has been widely deployed to approximate nearest...
Due to the exponential growth of multimedia data, multi-modal hashing as a promising technique to ma...
Retrieval on Cross-modal data has attracted extensive attention as it enables fast searching across ...