基于散度统计度量的协方差描述子中的BVLCs和bdip

M. Rajesh, S. Sathiamoorthy
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引用次数: 1

摘要

本文提出了局部相关系数块差和逆概率块差作为图像识别和检索的协方差描述符。将RGB图像划分为R、G和B,计算每个通道的BVLCs和bdip,然后计算R、G和B之间的协方差BVLCs和bdip。所提出的协方差描述子中的BVLCs和bdip对于反映识别的纹理、边缘和谷间的线性关联程度是非常宝贵的。利用Chernoff和Bhattacharya的统计度量对查询图像和目标图像的相似度进行了分析,结果表明Chernoff明显优于Bhattacharya度量。在Corel- 1k、Corel- 5k和Corel-10k数据库上的综合实验表明,所提出的协方差描述子的BVLCs和bdip是令人满意的,并且比传统技术的检索精度显著提高。
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BVLCs and BDIPs in Covariance Descriptor with a Statistical Measure of Divergence for Image Retrieval
This paper proposes BVLC (block variation off local correlation coefficients) and BDIP (block difference of inverse probabilities) into covariance descriptors for image recognition and retrieval. The images in RGB is partitioned to R,G and B then BVLCs and BDIPs are computed for each channel then BVLCs and BDIPs in covariance among R,G and B is computed. The proposed BVLCs and BDIPs in covariance descriptor is extremely precious to reflect the degree of linear association among identified textures, edges and valleys. Degree of similarity among query and target images is analyzed using statistical measures of divergence namely Chernoff and Bhattacharya and results shown that Chernoff is noticeably outperform Bhattacharya measure. Comprehensive experiments on Corel- 1k, Corel- 5k and Corel-10k databases illustrates that proposed BVLCs and BDIPs in covariance descriptor is satisfactory and can attains significantly enhanced retrieval accuracies than traditional techniques.
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