Spectral hashing (SH) seeks compact binary codes of data points so that Hamming distances between codes correlate with data similarity. Quickly learning such codes typically boils down to principle component analysis (PCA). However, this is only justified for normally distributed data. For proportional data (normalized histograms), this is not the case. Due to the sum-to-unity constraint, features that are as independent as possible will not all be uncorrelated. In this paper, we show that a linear-time transformation efficiently copes with sum-to-unity constraints: first, we select a small number K of diverse data points by maximizing the volume of the simplex spanned by these prototypes; second, we represent each data point by means of it...
Abstract. Hashing has proven a valuable tool for large-scale informa-tion retrieval. Despite much su...
Compact hash code learning has been widely applied to fast similarity search owing to its significan...
Minwise hashing is a standard technique in the context of search for efficiently computing set simil...
With the growing availability of very large image databases, there has been a surge of interest in m...
Hashing methods are effective in generating compact binary signatures for images and videos. This pa...
With the explosive growth of the data volume in modern applications such as web search and multimedi...
In computer vision there has been increasing interest in learning hashing codes whose Hamming distan...
Hashing is becoming increasingly important in large-scale image retrieval for fast approximate simil...
Hashing methods aim to learn a set of hash functions which map the original features to compact bina...
Hashing has recently attracted considerable attention for large scale similarity search. However, le...
In this thesis we explore methods which learn compact hash coding schemes to encode image databases ...
We investigate probabilistic hashing techniques for addressing computational and memory challenges i...
© 2017, Springer Science+Business Media New York. Hashing methods aim to learn a set of hash functio...
Minwise hashing is a standard technique in the context of search for efficiently computing set simil...
Abstract. Hashing has proven a valuable tool for large-scale informa-tion retrieval. Despite much su...
Abstract. Hashing has proven a valuable tool for large-scale informa-tion retrieval. Despite much su...
Compact hash code learning has been widely applied to fast similarity search owing to its significan...
Minwise hashing is a standard technique in the context of search for efficiently computing set simil...
With the growing availability of very large image databases, there has been a surge of interest in m...
Hashing methods are effective in generating compact binary signatures for images and videos. This pa...
With the explosive growth of the data volume in modern applications such as web search and multimedi...
In computer vision there has been increasing interest in learning hashing codes whose Hamming distan...
Hashing is becoming increasingly important in large-scale image retrieval for fast approximate simil...
Hashing methods aim to learn a set of hash functions which map the original features to compact bina...
Hashing has recently attracted considerable attention for large scale similarity search. However, le...
In this thesis we explore methods which learn compact hash coding schemes to encode image databases ...
We investigate probabilistic hashing techniques for addressing computational and memory challenges i...
© 2017, Springer Science+Business Media New York. Hashing methods aim to learn a set of hash functio...
Minwise hashing is a standard technique in the context of search for efficiently computing set simil...
Abstract. Hashing has proven a valuable tool for large-scale informa-tion retrieval. Despite much su...
Abstract. Hashing has proven a valuable tool for large-scale informa-tion retrieval. Despite much su...
Compact hash code learning has been widely applied to fast similarity search owing to its significan...
Minwise hashing is a standard technique in the context of search for efficiently computing set simil...