© 2018 by authors.All right reserved. Embedding representation learning via neural networks is at the core foundation of modern similarity based search. While much effort has been put in developing algorithms for learning binary hamming code representations for search efficiency,: this still requires a linear scan of the entire dataset per each query and trades off the search accuracy through binarization. To this end, we consider the problem of directly learning a quantizable embedding representation and the sparse binary hash code end-to-end which can be used to construct an efficient hash table not only providing significant search reduction in the number of data but also achieving the state of the art search accuracy outperforming previ...
Abstract Algorithms to rapidly search massive image or video collections are crit-ical for many visi...
© 1979-2012 IEEE. Recent vision and learning studies show that learning compact hash codes can facil...
In this paper, we aim to learn a mapping (or embedding) from images to a compact binary space in whi...
Hash-based methods achieve fast similarity search by representing high-dimensional data with compact...
Hashing has been widely applied to approximate nearest neighbor search for large-scale multimedia re...
In this paper, we propose a new deep hashing (DH) ap-proach to learn compact binary codes for large ...
Approximate nearest neighbor search is an efficient strategy for large-scale image retrieval. Encour...
© 1992-2012 IEEE. Hashing has been proved an attractive technique for fast nearest neighbor search o...
In this thesis we explore methods which learn compact hash coding schemes to encode image databases ...
Due to the storage and retrieval efficiency, hashing has been widely deployed to approximate nearest...
© 2017, Springer Science+Business Media New York. Hashing methods aim to learn a set of hash functio...
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...
Nowadays, due to the exponential growth of user generated images and videos, there is an increasing ...
Hashing methods aim to learn a set of hash functions which map the original features to compact bina...
Abstract Algorithms to rapidly search massive image or video collections are crit-ical for many visi...
© 1979-2012 IEEE. Recent vision and learning studies show that learning compact hash codes can facil...
In this paper, we aim to learn a mapping (or embedding) from images to a compact binary space in whi...
Hash-based methods achieve fast similarity search by representing high-dimensional data with compact...
Hashing has been widely applied to approximate nearest neighbor search for large-scale multimedia re...
In this paper, we propose a new deep hashing (DH) ap-proach to learn compact binary codes for large ...
Approximate nearest neighbor search is an efficient strategy for large-scale image retrieval. Encour...
© 1992-2012 IEEE. Hashing has been proved an attractive technique for fast nearest neighbor search o...
In this thesis we explore methods which learn compact hash coding schemes to encode image databases ...
Due to the storage and retrieval efficiency, hashing has been widely deployed to approximate nearest...
© 2017, Springer Science+Business Media New York. Hashing methods aim to learn a set of hash functio...
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...
Nowadays, due to the exponential growth of user generated images and videos, there is an increasing ...
Hashing methods aim to learn a set of hash functions which map the original features to compact bina...
Abstract Algorithms to rapidly search massive image or video collections are crit-ical for many visi...
© 1979-2012 IEEE. Recent vision and learning studies show that learning compact hash codes can facil...
In this paper, we aim to learn a mapping (or embedding) from images to a compact binary space in whi...