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Fast Shape Index Framework Based on Principle Component Analysis Using Edge Co-occurrence Matrix

机译:基于主元分析的边缘共现矩阵快速形状索引框架

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The shape of an object is one of the most important features in content based image retrieval. However, the statistical feature of edge is rarely used as a feature that codes local spatial information. This paper presents an approach to represent spatial edge distributions using principal component analysis (PCA) on the edge co-occurrence matrix (ECM). The ECM is based on the statistical feature attained from the edge detection operators which applied on the image. The eigenvectors obtained from PCA of the ECM can preserve the high spatial frequencies components, so they are well suited for shape as well as texture representation. Projections of the ECM from the image database to the local PCs serve as a compact representation for the search database. The framework presented in the paper grantee the accuracy and speed of the content based image retrieval in our work.
机译:对象的形状是基于内容的图像检索中最重要的特征之一。但是,边缘的统计特征很少用作对局部空间信息进行编码的特征。本文提出了一种在边缘共生矩阵(ECM)上使用主成分分析(PCA)表示空间边缘分布的方法。 ECM基于从应用于图像的边缘检测算子获得的统计特征。从ECM的PCA获得的特征向量可以保留高空间频率分量,因此非常适合形状和纹理表示。 ECM从图像数据库到本地PC的投影充当搜索数据库的紧凑表示。本文中提出的框架使我们的工作基于内容的图像检索的准确性和速度得以提高。

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