In recent years, a lot of attention has been de-voted to efficient nearest neighbor search by means of similarity-preserving hashing. One of the plights of existing hashing techniques is the intrinsic trade-off between performance and computational complexity: while longer hash codes allow for lower false positive rates, it is very difficult to increase the embedding dimensionality without incurring in very high false negatives rates or prohibiting compu-tational costs. In this paper, we propose a way to overcome this limitation by enforcing the hash codes to be sparse. Sparse high-dimensional codes enjoy from the low false positive rates typical of long hashes, while keeping the false negative rates similar to those of a shorter dense hash...
Approximate nearest neighbor (ANN) search is becoming an increasingly important technique in large-s...
© 1979-2012 IEEE. Recent vision and learning studies show that learning compact hash codes can facil...
© 2018 by authors.All right reserved. Embedding representation learning via neural networks is at th...
Recent studies have shown that hashing methods are effective for high dimensional nearest neighbor s...
Hashing is very useful for fast approximate similarity search on large database. In the unsupervised...
© 2017 IEEE. Learning based hashing has become increasingly popular because of its high efficiency i...
Hash-based methods achieve fast similarity search by representing high-dimensional data with compact...
Due to the storage and retrieval efficiency, hashing has been widely deployed to approximate nearest...
In this thesis we explore methods which learn compact hash coding schemes to encode image databases ...
Hashing is becoming increasingly important in large-scale image retrieval for fast approximate simil...
We study Nearest Neighbors (NN) retrieval by introducing a new approach: Robust Sparse Hashing (RSH)...
Hashing has recently attracted considerable attention for large scale similarity search. However, le...
Sparse representation and image hashing are powerful tools for data representation and image retriev...
Recent vision and learning studies show that learning compact hash codes can facilitate massive data...
By virtue of their simplicity and efficiency, hashing algorithms have achieved significant success o...
Approximate nearest neighbor (ANN) search is becoming an increasingly important technique in large-s...
© 1979-2012 IEEE. Recent vision and learning studies show that learning compact hash codes can facil...
© 2018 by authors.All right reserved. Embedding representation learning via neural networks is at th...
Recent studies have shown that hashing methods are effective for high dimensional nearest neighbor s...
Hashing is very useful for fast approximate similarity search on large database. In the unsupervised...
© 2017 IEEE. Learning based hashing has become increasingly popular because of its high efficiency i...
Hash-based methods achieve fast similarity search by representing high-dimensional data with compact...
Due to the storage and retrieval efficiency, hashing has been widely deployed to approximate nearest...
In this thesis we explore methods which learn compact hash coding schemes to encode image databases ...
Hashing is becoming increasingly important in large-scale image retrieval for fast approximate simil...
We study Nearest Neighbors (NN) retrieval by introducing a new approach: Robust Sparse Hashing (RSH)...
Hashing has recently attracted considerable attention for large scale similarity search. However, le...
Sparse representation and image hashing are powerful tools for data representation and image retriev...
Recent vision and learning studies show that learning compact hash codes can facilitate massive data...
By virtue of their simplicity and efficiency, hashing algorithms have achieved significant success o...
Approximate nearest neighbor (ANN) search is becoming an increasingly important technique in large-s...
© 1979-2012 IEEE. Recent vision and learning studies show that learning compact hash codes can facil...
© 2018 by authors.All right reserved. Embedding representation learning via neural networks is at th...