Nearest Neighbour Search using binary neural networks

Demetrio Ferro, Vincent Gripon, Xiaoran Jiang
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引用次数: 9

Abstract

The problem of finding nearest neighbours in terms of Euclidean distance, Hamming distance or other distance metric is a very common operation in computer vision and pattern recognition. In order to accelerate the search for the nearest neighbour in large collection datasets, many methods rely on the coarse-fine approach. In this paper we propose to combine Product Quantization (PQ) and binary neural associative memories to perform the coarse search. Our motivation lies in the fact that neural network dimensions of the representation associated with a set of k vectors is independent of k. We run experiments on TEXMEX SIFT1M and MNIST databases and observe significant improvements in terms of complexity of the search compared to raw PQ.
最近邻搜索使用二进制神经网络
根据欧几里得距离、汉明距离或其他距离度量来寻找最近邻居的问题是计算机视觉和模式识别中非常常见的操作。为了在大数据集中加速对最近邻的搜索,许多方法依赖于粗-细方法。本文提出结合积量化(PQ)和二值神经联想记忆来进行粗搜索。我们的动机在于,与一组k向量相关的表示的神经网络维度与k无关。我们在TEXMEX SIFT1M和MNIST数据库上运行实验,观察到与原始PQ相比,搜索的复杂性有了显着改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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