Comparative Analysis of Content Based Image Retrieval Techniques Using Color Histogram: A Case Study of GLCM and K-Means Clustering

R. M. Rasli, T. Z. T. Muda, Y. Yusof, J. A. Bakar
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引用次数: 30

Abstract

Content based image retrieval is an active research issue that had been famous from 1990s till present. The main target of CBIR is to get accurate results with lower computational time. This paper discusses on the comparative method used in color histogram based on two major methods used frequently in CBIR which are; normal color histogram using GLCM, and color histogram using KMeans. A set of 9960 images are used to test the accuracy and the precision of each methods. Using Euclidean distance, similarity between queried image and the candidate images are calculated. Experiment results shows that color histogram with K-Means method had high accuracy and precise compared to GLCM. Future work will be made to add more features that are famous in CBIR which are texture, color, and shape features in order to get better results.
基于内容的颜色直方图图像检索技术的比较分析:以GLCM和K-Means聚类为例
基于内容的图像检索是从20世纪90年代开始兴起至今的一个活跃的研究课题。CBIR的主要目标是在较短的计算时间内得到准确的结果。本文在CBIR中常用的两种方法的基础上,讨论了颜色直方图的比较方法;正常颜色直方图使用GLCM,颜色直方图使用KMeans。用9960张图像对各方法的准确度和精密度进行了测试。利用欧氏距离计算查询图像与候选图像之间的相似度。实验结果表明,与GLCM相比,基于K-Means方法的颜色直方图具有较高的准确度和精密度。为了得到更好的效果,我们将在未来的工作中增加更多的CBIR中著名的纹理、颜色和形状特征。
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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