Building on deep representation learning, deep supervised hashing has achieved promising performance in tasks like similarity retrieval. However, conventional code balance constraints (i.e., bit balance and bit uncorrelation) imposed on avoiding overfitting and improving hash code quality are unsuitable for deep supervised hashing owing to their inefficiency and impracticality of simultaneously learning deep data representations and hash functions. To address this issue, we propose probabilistic code balance constraints on deep supervised hashing to force each hash code to conform to a discrete uniform distribution. Accordingly, a Wasserstein regularizer aligns the distribution of generated hash codes to a uniform distribution. Theoretical ...
In this paper, we propose a new deep hashing (DH) ap-proach to learn compact binary codes for large ...
Due to its effectivity and efficiency, deep hashing approaches are widely used for large-scale visua...
In recent years, a lot of attention has been de-voted to efficient nearest neighbor search by means ...
Recent vision and learning studies show that learning compact hash codes can facilitate massive data...
© 1979-2012 IEEE. Recent vision and learning studies show that learning compact hash codes can facil...
Image hashing is a principled approximate nearest neighbor approach to find similar items to a query...
Deep supervised hashing (DSH), which combines binary learning and convolutional neural network, has ...
This paper proposes a deep hashing framework, namely, unsupervised deep video hashing (UDVH), for la...
Due to the storage and retrieval efficiency, hashing has been widely deployed to approximate nearest...
By virtue of their simplicity and efficiency, hashing algorithms have achieved significant success o...
Abstract—Extracting informative image features and learning effective approximate hashing functions ...
In order to achieve efficient similarity searching, hash functions are designed to encode images int...
Learning to hash has become a crucial technique to analyze the dramatically increasing data engaged ...
In this thesis we explore methods which learn compact hash coding schemes to encode image databases ...
Abstract Hashing, which refers to the binary embedding of high-dimensional data, has been an effect...
In this paper, we propose a new deep hashing (DH) ap-proach to learn compact binary codes for large ...
Due to its effectivity and efficiency, deep hashing approaches are widely used for large-scale visua...
In recent years, a lot of attention has been de-voted to efficient nearest neighbor search by means ...
Recent vision and learning studies show that learning compact hash codes can facilitate massive data...
© 1979-2012 IEEE. Recent vision and learning studies show that learning compact hash codes can facil...
Image hashing is a principled approximate nearest neighbor approach to find similar items to a query...
Deep supervised hashing (DSH), which combines binary learning and convolutional neural network, has ...
This paper proposes a deep hashing framework, namely, unsupervised deep video hashing (UDVH), for la...
Due to the storage and retrieval efficiency, hashing has been widely deployed to approximate nearest...
By virtue of their simplicity and efficiency, hashing algorithms have achieved significant success o...
Abstract—Extracting informative image features and learning effective approximate hashing functions ...
In order to achieve efficient similarity searching, hash functions are designed to encode images int...
Learning to hash has become a crucial technique to analyze the dramatically increasing data engaged ...
In this thesis we explore methods which learn compact hash coding schemes to encode image databases ...
Abstract Hashing, which refers to the binary embedding of high-dimensional data, has been an effect...
In this paper, we propose a new deep hashing (DH) ap-proach to learn compact binary codes for large ...
Due to its effectivity and efficiency, deep hashing approaches are widely used for large-scale visua...
In recent years, a lot of attention has been de-voted to efficient nearest neighbor search by means ...