An Approach Based on Regression Line Features for Low Complexity Content Based Image Retrieval

R. P. Kumar, P. Nagabhushan
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引用次数: 6

Abstract

Similarity matching is one of the important tasks in content based image retrieval systems. Similarity matching involves the computation of distance between the feature vectors characterizing the image samples. Conventional techniques like pixel based similarity matching are computationally costly and time consuming. In recent years the tremendous increase in multi media databases, especially image databases calls for fast and efficient image retrieval mechanisms. Multiresolution based approaches through multiresolution histograms and wavelet histograms proposed recently are proven to be computationally efficient. In this paper, we propose a methodology based on regression line features for further reducing the computational complexity of these multiresolution histogram based techniques
基于回归线特征的低复杂度内容图像检索方法
相似度匹配是基于内容的图像检索系统的重要任务之一。相似度匹配涉及计算表征图像样本的特征向量之间的距离。传统的技术,如基于像素的相似度匹配,计算成本高,耗时长。近年来,多媒体数据库尤其是图像数据库的迅猛发展,对快速高效的图像检索机制提出了更高的要求。最近提出的基于多分辨率直方图和小波直方图的多分辨率方法计算效率很高。在本文中,我们提出了一种基于回归线特征的方法来进一步降低这些基于多分辨率直方图的技术的计算复杂度
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