articleJun 1, 2008Closed access
Optimised KD-trees for fast image descriptor matching
Data61 · Australian National University
Indexed incrossref
Abstract
In this paper, we look at improving the KD-tree for a specific usage: indexing a large number of SIFT and other types of image descriptors. We have extended priority search, to priority search among multiple trees. By creating multiple KD-trees from the same data set and simultaneously searching among these trees, we have improved the KD-treepsilas search performance significantly.We have also exploited the structure in SIFT descriptors (or structure in any data set) to reduce the time spent in backtracking. By using Principal Component Analysis to align the principal axes of the data with the coordinate axes, we have further increased the KD-treepsilas search performance.
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Authors
2Topics & keywords
Topics
Keywords
- Scale-invariant feature transform
- Backtracking
- Principal component analysis
- Search engine indexing
- k-d tree
- Pattern recognition (psychology)
- Set (abstract data type)
- Matching (statistics)
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