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Performance improvement using average query fired to bins of four statistical moments for CBIR

机译:使用平均查询对CBIR的四个统计时刻的速度进行绩效改进

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This paper explains the effectiveness of average feature vector used as compared to a single query image feature vector to be fired to the CBIR designed using bins approach based on the partitioning of the equalized histograms of R, G and B planes of images. The feature vectors of dimension 27 are extracted into bins holding the statistical information of first 4 centralize absolute moments of R, G and B colors separately. Three different similarity measures are used in this paper for comparing the query image and database images namely Absolute distance, Euclidean distance and Cosine correlation distance. Experimentation of this approach is demonstrated for image database of 2000 BMP images containing 100 images from 20 different classes. Three parameters are used namely PRCP, LSRR and Longest String to evaluate the performance of the approaches used in this paper for CBIR.
机译:本文解释了与单个查询图像特征向量相比使用的平均特征向量的有效性,该特征向量与基于均衡的R,G和B平面的均衡直方图的划分进行划分的CBIR。尺寸27的特征向量被提取到保持第一4个集中绝对矩的统计信息的箱子分开。本文使用了三种不同的相似度测量,用于比较查询图像和数据库图像即绝对距离,欧几里德距离和余弦相关距离。对于包含来自20个不同类别的100张图像的2000个BMP图像的图像数据库,证明了这种方法的实验。使用三个参数即PRCP,LSRR和最长串,以评估本文用于CBIR的方法的性能。

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