Hashing algorithm has been widely used to speed up image retrieval due to its compact binary code and fast distance calculation. The combination with deep learning boosts the performance of hashing by learning accurate representations and complicated hashing functions. So far, the most striking success in deep hashing have mostly involved discriminative models, which require labels. To apply deep hashing on datasets without labels, we propose a deep self-taught hashing algorithm (DSTH), which generates a set of pseudo labels by analyzing the data itself, and then learns the hash functions for novel data using discriminative deep models. Furthermore, we generalize DSTH to support both supervised and unsupervised cases by adaptively incorpora...
Learning to hash has become a crucial technique to analyze the dramatically increasing data engaged ...
Learning to hash has become a crucial technique to analyze the dramatically increasing data engaged ...
In hash-based image retrieval systems, degraded or transformed inputs usually generate different cod...
Hashing methods have proven to be effective in the field of large-scale image retrieval. In recent y...
In order to achieve efficient similarity searching, hash functions are designed to encode images int...
Deep supervised hashing (DSH), which combines binary learning and convolutional neural network, has ...
Similarity-based image hashing represents crucial technique for visual data storage reduction and ex...
Deep hashing methods utilize an end-to-end framework to mutually learn feature representations and h...
Due to its effectivity and efficiency, deep hashing approaches are widely used for large-scale visua...
Efficient methods that enable high and rapid image retrieval are continuously needed, especially wit...
Hashing is a popular approximate nearest neighbor search approach for large-scale image retrieval. S...
Approximate nearest neighbor search is an efficient strategy for large-scale image retrieval. Encour...
Abstract—Extracting informative image features and learning effective approximate hashing functions ...
This paper introduces an instance-aware hashing approach Region-DH for large-scale multi-label image...
Due to the storage and retrieval efficiency, hashing has been widely deployed to approximate nearest...
Learning to hash has become a crucial technique to analyze the dramatically increasing data engaged ...
Learning to hash has become a crucial technique to analyze the dramatically increasing data engaged ...
In hash-based image retrieval systems, degraded or transformed inputs usually generate different cod...
Hashing methods have proven to be effective in the field of large-scale image retrieval. In recent y...
In order to achieve efficient similarity searching, hash functions are designed to encode images int...
Deep supervised hashing (DSH), which combines binary learning and convolutional neural network, has ...
Similarity-based image hashing represents crucial technique for visual data storage reduction and ex...
Deep hashing methods utilize an end-to-end framework to mutually learn feature representations and h...
Due to its effectivity and efficiency, deep hashing approaches are widely used for large-scale visua...
Efficient methods that enable high and rapid image retrieval are continuously needed, especially wit...
Hashing is a popular approximate nearest neighbor search approach for large-scale image retrieval. S...
Approximate nearest neighbor search is an efficient strategy for large-scale image retrieval. Encour...
Abstract—Extracting informative image features and learning effective approximate hashing functions ...
This paper introduces an instance-aware hashing approach Region-DH for large-scale multi-label image...
Due to the storage and retrieval efficiency, hashing has been widely deployed to approximate nearest...
Learning to hash has become a crucial technique to analyze the dramatically increasing data engaged ...
Learning to hash has become a crucial technique to analyze the dramatically increasing data engaged ...
In hash-based image retrieval systems, degraded or transformed inputs usually generate different cod...