A vector quantization based k-NN approach for large-scale image classification

Ezgi C. Ozan, Ekaterina Riabchenko, S. Kiranyaz, M. Gabbouj
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引用次数: 2

Abstract

The k-nearest-neighbour classifiers (k-NN) have been one of the simplest yet most effective approaches to instance based learning problem for image classification. However, with the growth of the size of image datasets and the number of dimensions of image descriptors, popularity of k-NNs has decreased due to their significant storage requirements and computational costs. In this paper we propose a vector quantization (VQ) based k-NN classifier, which has improved efficiency for both storage requirements and computational costs. We test the proposed method on publicly available large scale image datasets and show that the proposed method performs comparable to traditional k-NN with significantly better complexity and storage requirements.
基于矢量量化的大规模图像分类k-NN方法
k近邻分类器(k-NN)是解决基于实例的图像分类学习问题最简单但最有效的方法之一。然而,随着图像数据集的规模和图像描述符维数的增加,由于k- nn的存储需求和计算成本较高,其受欢迎程度有所下降。本文提出了一种基于向量量化(VQ)的k-NN分类器,该分类器提高了存储要求和计算成本。我们在公开可用的大规模图像数据集上测试了所提出的方法,并表明所提出的方法与传统的k-NN相比具有明显更好的复杂度和存储要求。
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