Semantic hashing is an emerging technique for large-scale similarity search based on representing high-dimensional data using similarity-preserving binary codes used for efficient indexing and search. It has recently been shown that variational autoencoders, with Bernoulli latent representations parametrized by neural nets, can be successfully trained to learn such codes in supervised and unsupervised scenarios, improving on more traditional methods thanks to their ability to handle the binary constraints architecturally. However, the scenario where labels are scarce has not been studied yet. This paper investigates the robustness of hashing methods based on variational autoencoders to the lack of supervision, focusing on two semi-supervi...
Fast nearest neighbor search is becoming more and more crucial given the advent of large-scale data ...
Retrieval of similar objects is a key component in many applications. As databases grow larger, lear...
Due to its effectivity and efficiency, deep hashing approaches are widely used for large-scale visua...
Semantichashingisatechniquetorepresenthigh-dimensional data using similarity-preserving binary codes...
Compact hash code learning has been widely applied to fast similarity search owing to its significan...
Data hashing has been widely used to approximate large-scale similarity searches. Original text data...
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 ...
In this thesis we explore methods which learn compact hash coding schemes to encode image databases ...
Similarity search is a key problem in many real world applications including image and text retrieva...
<p>Recent years have witnessed the promising capacity of hashing techniques in tackling nearest neig...
Building on deep representation learning, deep supervised hashing has achieved promising performance...
<p>Recent years have witnessed the promising capacity of hashing techniques in tackling nearest neig...
Due to its low storage cost and fast query speed, hashing has been widely adopted for approximate ne...
Recent vision and learning studies show that learning compact hash codes can facilitate massive data...
Fast nearest neighbor search is becoming more and more crucial given the advent of large-scale data ...
Retrieval of similar objects is a key component in many applications. As databases grow larger, lear...
Due to its effectivity and efficiency, deep hashing approaches are widely used for large-scale visua...
Semantichashingisatechniquetorepresenthigh-dimensional data using similarity-preserving binary codes...
Compact hash code learning has been widely applied to fast similarity search owing to its significan...
Data hashing has been widely used to approximate large-scale similarity searches. Original text data...
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 ...
In this thesis we explore methods which learn compact hash coding schemes to encode image databases ...
Similarity search is a key problem in many real world applications including image and text retrieva...
<p>Recent years have witnessed the promising capacity of hashing techniques in tackling nearest neig...
Building on deep representation learning, deep supervised hashing has achieved promising performance...
<p>Recent years have witnessed the promising capacity of hashing techniques in tackling nearest neig...
Due to its low storage cost and fast query speed, hashing has been widely adopted for approximate ne...
Recent vision and learning studies show that learning compact hash codes can facilitate massive data...
Fast nearest neighbor search is becoming more and more crucial given the advent of large-scale data ...
Retrieval of similar objects is a key component in many applications. As databases grow larger, lear...
Due to its effectivity and efficiency, deep hashing approaches are widely used for large-scale visua...