Nearest Neighbour search is a widely used technique in Pattern Recognition. In order to speed up the search many indexing techniques have been proposed. However, most of the proposed techniques are static, that is, once the index is built the incorporation of new data is not possible unless a costly rebuilt of the index is performed. The main effect is that changes in the environment are very costly to be taken into account. In this work, we propose a technique to allow the insertion of elements in the LAESA index. The resulting index is exactly the same as the one that would be obtained by building it from scratch. In this paper we also obtain an upper bound for its expected running time. Surprisingly, this bound is independent of the data...
Several modern applications call for novel forms of queries that aspire to find objects pleasing bot...
Some fast nearest neighbor search (NNS) algorithms using metric properties have appeared in the last...
In this paper we present an indexing method for probably approximately correct nearest neighbor quer...
Nearest Neighbour search is a widely used technique in Pattern Recognition. In order to speed up the...
To speed up similarity based searches many indexing techniques have been proposed in order to addres...
This work focus on fast nearest neighbor (NN) search algorithms that can work in any metric space (n...
Effective similarity search indexing in general metric spaces has traditionally received special att...
Several methods exists for performing similarity searches quickly using metric indexing. However, mo...
Similarity search is a widely employed technique in Pattern Recognition. In order to speed up the se...
Choosing which fast Nearest Neighbour search algorithm to use depends on the task we face. Usually k...
In this paper, we present a fast and versatile algorithm which can rapidly perform a variety of near...
Similarity search is the basis for many data analytics techniques, including k-nearest neighbor clas...
Many fast similarity search techniques relies on the use of pivots (specially selected points in the...
Abstract. Many pattern recognition tasks make use of the k nearest neighbour (k–NN) technique. In th...
Abstract—We consider the problem of finding similar patterns in a time sequence. Typical application...
Several modern applications call for novel forms of queries that aspire to find objects pleasing bot...
Some fast nearest neighbor search (NNS) algorithms using metric properties have appeared in the last...
In this paper we present an indexing method for probably approximately correct nearest neighbor quer...
Nearest Neighbour search is a widely used technique in Pattern Recognition. In order to speed up the...
To speed up similarity based searches many indexing techniques have been proposed in order to addres...
This work focus on fast nearest neighbor (NN) search algorithms that can work in any metric space (n...
Effective similarity search indexing in general metric spaces has traditionally received special att...
Several methods exists for performing similarity searches quickly using metric indexing. However, mo...
Similarity search is a widely employed technique in Pattern Recognition. In order to speed up the se...
Choosing which fast Nearest Neighbour search algorithm to use depends on the task we face. Usually k...
In this paper, we present a fast and versatile algorithm which can rapidly perform a variety of near...
Similarity search is the basis for many data analytics techniques, including k-nearest neighbor clas...
Many fast similarity search techniques relies on the use of pivots (specially selected points in the...
Abstract. Many pattern recognition tasks make use of the k nearest neighbour (k–NN) technique. In th...
Abstract—We consider the problem of finding similar patterns in a time sequence. Typical application...
Several modern applications call for novel forms of queries that aspire to find objects pleasing bot...
Some fast nearest neighbor search (NNS) algorithms using metric properties have appeared in the last...
In this paper we present an indexing method for probably approximately correct nearest neighbor quer...