Content Based Image Retrieval Using 3D Center Symmetric Local Binary Co-occurrence Pattern

Ankita Wadhera, Megha Agarwal
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引用次数: 1

Abstract

This paper presents a novel algorithm three dimensional center symmetric local binary co-occurrence pattern (3DC-SLBCoP) for retrieval of images. Standard local binary pattern and its forms uses 2D plane of the image. On the other hand, proposed method leads to 3D volume by extracting Gaussian filtered images using multiresolution Gaussian filter banks and computes the relationship between center pixel and its neighbors in five selected directions. Center symmetric local binary pattern (CSLBP) image is formed by encoding the relationship between focus pixel and its center symmetric neighboring pixels. Thus, gray level co-occurrence matrix (GLCM) of the CSLBP map in four directions leads to the formation of feature vector. Experiments are performed and results are analyzed on benchmark datasets. Analyzed retrieval results clearly better than the other well known methods by considering average retrieval precision and average retrieval rate as evaluation measures.
基于内容的三维中心对称局部二值共现模式图像检索
提出了一种三维中心对称局部二值共现模式(3DC-SLBCoP)图像检索算法。标准的局部二值模式及其形式采用二维平面的图像。另一方面,该方法利用多分辨率高斯滤波器组提取高斯滤波后的图像,并计算中心像素与五个选定方向上的相邻像素之间的关系,从而得到三维体。中心对称局部二值模式(CSLBP)图像是通过对焦点像素与其中心对称相邻像素之间的关系进行编码而形成的。因此,CSLBP地图在四个方向上的灰度共生矩阵(GLCM)导致特征向量的形成。在基准数据集上进行了实验并对实验结果进行了分析。以平均检索精度和平均检索率为评价指标,对检索结果的分析明显优于其他常用方法。
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