<p> This paper proposes a new hashing framework to conduct similarity search via the following steps: first, employing linear clustering methods to obtain a set of representative data points and a set of landmarks of the big dataset; second, using the landmarks to generate a probability representation for each data point. The proposed probability representation method is further proved to preserve the neighborhood of each data point. Third, PCA is integrated with manifold learning to lean the hash functions using the probability representations of all representative data points. As a consequence, the proposed hashing method achieves efficient similarity search (with linear time complexity) and effective hashing performance and high general...
© 1979-2012 IEEE. Nearest neighbor search is a problem of finding the data points from the database ...
Hashing is very useful for fast approximate similarity search on large database. In the unsupervised...
Hashing has recently attracted considerable attention for large scale similarity search. However, le...
© 2017 IEEE. This paper proposes a new hashing framework to conduct similarity search via the follow...
Similarity search is a key problem in many real world applications including image and text retrieva...
The nearest- or near-neighbor query problems arise in a large variety of database applications, usua...
Due to the simplicity and efficiency, many hashing methods have recently been developed for large-sc...
A novel access structure for similarity search in metric data, called Similarity Hashing (SH), is pr...
<p>Recent years have witnessed the promising capacity of hashing techniques in tackling nearest neig...
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 ...
We investigate probabilistic hashing techniques for addressing computational and memory challenges i...
Similarity search plays an important role in many applications involving high-dimensional data. Due ...
In this thesis we explore methods which learn compact hash coding schemes to encode image databases ...
The Approximate Nearest Neighbor (ANN) search problem is important in applications such as informati...
© 1979-2012 IEEE. Nearest neighbor search is a problem of finding the data points from the database ...
Hashing is very useful for fast approximate similarity search on large database. In the unsupervised...
Hashing has recently attracted considerable attention for large scale similarity search. However, le...
© 2017 IEEE. This paper proposes a new hashing framework to conduct similarity search via the follow...
Similarity search is a key problem in many real world applications including image and text retrieva...
The nearest- or near-neighbor query problems arise in a large variety of database applications, usua...
Due to the simplicity and efficiency, many hashing methods have recently been developed for large-sc...
A novel access structure for similarity search in metric data, called Similarity Hashing (SH), is pr...
<p>Recent years have witnessed the promising capacity of hashing techniques in tackling nearest neig...
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 ...
We investigate probabilistic hashing techniques for addressing computational and memory challenges i...
Similarity search plays an important role in many applications involving high-dimensional data. Due ...
In this thesis we explore methods which learn compact hash coding schemes to encode image databases ...
The Approximate Nearest Neighbor (ANN) search problem is important in applications such as informati...
© 1979-2012 IEEE. Nearest neighbor search is a problem of finding the data points from the database ...
Hashing is very useful for fast approximate similarity search on large database. In the unsupervised...
Hashing has recently attracted considerable attention for large scale similarity search. However, le...