AbstractÐA new fast nearest-neighbor algorithm is described that uses principal component analysis to build an efficient search tree. At each node in the tree, the data set is partitioned along the direction of maximum variance. The search algorithm efficiently uses a depth-first search and a new elimination criterion. The new algorithm was compared to 16 other fast nearest-neighbor algorithms on three types of common benchmark data sets including problems from time series prediction and image vector quantization. This comparative study illustrates the strengths and weaknesses of all of the leading algorithms. The new algorithm performed very well on all of the data sets and was consistently ranked among the top three algorithms. Index Term...
Nearest neighbor search is a basic primitive method used for machine learning and information retrie...
Similarity search problems in high-dimensional data arise in many areas of computer science such as ...
Similarity search in multimedia databases requires an effi-cient support of nearest-neighbor search ...
[[abstract]]The problem of k-nearest neighbors (kNN) is to find the nearest k neighbors for a query ...
In many computer vision problems, answering the nearest neighbor queries efficiently, especially in ...
Nearest neighbor searching is an important geometric subproblem in vector quantization. Existing stu...
For many computer vision and machine learning problems, large training sets are key for good perform...
International audienceWe compare the performance of three nearest neighbor search algorithms: the Or...
English: Nearest neighbour search is the one of the most simple and used technique in Pattern Recogn...
For many computer vision and machine learning problems, large training sets are key for good perform...
In this article, we propose a new fast nearest neighbor search algorithm, based on vector quantizati...
Abstract—In this work, we consider two fast nearest-neighbor search methods based on the projections...
In this paper, we present a fast and versatile algorithm which can rapidly perform a variety of near...
The technological developments of the last twenty years are leading the world to a new era. The inve...
This paper presents an efficient indexing method for similarity searches in highdimensional image da...
Nearest neighbor search is a basic primitive method used for machine learning and information retrie...
Similarity search problems in high-dimensional data arise in many areas of computer science such as ...
Similarity search in multimedia databases requires an effi-cient support of nearest-neighbor search ...
[[abstract]]The problem of k-nearest neighbors (kNN) is to find the nearest k neighbors for a query ...
In many computer vision problems, answering the nearest neighbor queries efficiently, especially in ...
Nearest neighbor searching is an important geometric subproblem in vector quantization. Existing stu...
For many computer vision and machine learning problems, large training sets are key for good perform...
International audienceWe compare the performance of three nearest neighbor search algorithms: the Or...
English: Nearest neighbour search is the one of the most simple and used technique in Pattern Recogn...
For many computer vision and machine learning problems, large training sets are key for good perform...
In this article, we propose a new fast nearest neighbor search algorithm, based on vector quantizati...
Abstract—In this work, we consider two fast nearest-neighbor search methods based on the projections...
In this paper, we present a fast and versatile algorithm which can rapidly perform a variety of near...
The technological developments of the last twenty years are leading the world to a new era. The inve...
This paper presents an efficient indexing method for similarity searches in highdimensional image da...
Nearest neighbor search is a basic primitive method used for machine learning and information retrie...
Similarity search problems in high-dimensional data arise in many areas of computer science such as ...
Similarity search in multimedia databases requires an effi-cient support of nearest-neighbor search ...