A fast nearest neighbor search algorithm by filtration

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摘要

Classifying an unknown input is a fundamental problem in Pattern Recognition. One standard method is finding its nearest neighbors in a reference set. It would be very time consuming if computed feature by feature for all templates in the reference set; this naı̈ve method is O(nd) where n is the number of templates in the reference set and d is the number of features or dimension. For this reason, we present a technique for quickly eliminating most templates from consideration as possible neighbors. The remaining candidate templates are then evaluated feature by feature against the query vector. We utilize frequencies of features as a pre-processing to reduce query processing time burden. Our approach is simple to implement and achieves great speedup experimentally. The most notable advantage of the new method over other existing techniques occurs where the number of features is large and the type of each feature is binary although it works for other type features. We improved our OCR system at least twice (without a threshold) or faster (with higher threshold value) by using the new algorithm.

论文关键词:Nearest neighbor searching,Filtration,Additive binary tree,OCR,GSC classifier

论文评审过程:Received 17 March 2000, Revised 19 November 2000, Accepted 19 November 2000, Available online 26 November 2001.

论文官网地址:https://doi.org/10.1016/S0031-3203(01)00032-2