Similarity search plays an important role in many applications involving high-dimensional data. Due to the known dimensionality curse, the performance of most existing indexing structures degrades quickly as the feature dimensionality increases. Hashing methods, such as locality sensitive hashing (LSH) and its variants, have been widely used to achieve fast approximate similarity search by trading search quality for efficiency. However, most existing hashing methods make use of randomized algorithms to generate hash codes without considering the specific structural information in the data. In this paper, we propose a novel hashing method, namely, robust hashing with local models (RHLM), which learns a set of robust hash functions to map the...
© 2017 Elsevier B.V. Recent years have witnessed the promising capacity of hashing techniques in tac...
Indexing methods have been widely used for fast data retrieval on large scale datasets. When the dat...
Learning to hash has become a crucial technique to analyze the dramatically increasing data engaged ...
Similarity search plays an important role in many applications involving high-dimensional data. Due ...
Similarity search plays an important role in many applications involving high-dimensional data. Due ...
Efficient high-dimensional similarity search structures are essential for building scalable content-...
<p>Recent years have witnessed the promising capacity of hashing techniques in tackling nearest neig...
Locality Sensitive Hashing (LSH) is widely recognized as one of the most promising approaches to sim...
The need to locate the k-nearest data points with respect to a given query point in a multi- and hig...
Recent years have witnessed the growing popularity of hashing for efficient large-scale similarity s...
The need to locate the k-nearest data points with respect to a given query point in a multi- and hig...
Hashing has recently attracted considerable attention for large scale similarity search. However, le...
<p>Recent years have witnessed the promising capacity of hashing techniques in tackling nearest neig...
Hashing is very useful for fast approximate similarity search on large database. In the unsupervised...
Locality-Sensitive Hashing (LSH) approximates nearest neighbors in high dimensions by projecting ori...
© 2017 Elsevier B.V. Recent years have witnessed the promising capacity of hashing techniques in tac...
Indexing methods have been widely used for fast data retrieval on large scale datasets. When the dat...
Learning to hash has become a crucial technique to analyze the dramatically increasing data engaged ...
Similarity search plays an important role in many applications involving high-dimensional data. Due ...
Similarity search plays an important role in many applications involving high-dimensional data. Due ...
Efficient high-dimensional similarity search structures are essential for building scalable content-...
<p>Recent years have witnessed the promising capacity of hashing techniques in tackling nearest neig...
Locality Sensitive Hashing (LSH) is widely recognized as one of the most promising approaches to sim...
The need to locate the k-nearest data points with respect to a given query point in a multi- and hig...
Recent years have witnessed the growing popularity of hashing for efficient large-scale similarity s...
The need to locate the k-nearest data points with respect to a given query point in a multi- and hig...
Hashing has recently attracted considerable attention for large scale similarity search. However, le...
<p>Recent years have witnessed the promising capacity of hashing techniques in tackling nearest neig...
Hashing is very useful for fast approximate similarity search on large database. In the unsupervised...
Locality-Sensitive Hashing (LSH) approximates nearest neighbors in high dimensions by projecting ori...
© 2017 Elsevier B.V. Recent years have witnessed the promising capacity of hashing techniques in tac...
Indexing methods have been widely used for fast data retrieval on large scale datasets. When the dat...
Learning to hash has become a crucial technique to analyze the dramatically increasing data engaged ...