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FIRST: Fractal Indexing and Retrieval SysTem for Image Databases

机译:首先:图像数据库的分形索引和检索系统

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摘要

We present an image indexing method and a system to perform content-based retrieval in heterogeneous image databases (IDB). The method is based upon the fractal framework of the iterated function systems (IFS) widely used for image compression. The image index is represented through a vector of numeric features, corresponding to contractive functions (CF) of the IFS framework. The construction of the index vector requires a preliminary processing of the images to select an appropriate set of indexing features (i.e. contractive functions). The latter will be successively used to fill in the vector components, computed as frequencies by which the selected contractive functions appear inside the images. In order to manipulate the index vectors efficiently we use discrete Fourier transform (DFT) to reduce their cardinalities and use a spatial access method (SAM), like R-tree, to improve search performances. The sound theoretical framework underlying the method enabled us to formally prove some properties of the index. However, for a complete validation of the indexing method, also in terms of effectiveness and efficacy, we performed several experiments on a large collection of images from different domains, which revealed good system performances with a low percentage of false alarms and false dismissals.
机译:我们提出一种图像索引方法和系统,以在异构图像数据库(IDB)中执行基于内容的检索。该方法基于广泛用于图像压缩的迭代功能系统(IFS)的分形框架。图像索引通过数值特征向量表示,该向量对应于IFS框架的收缩函数(CF)。索引向量的构造需要对图像进行初步处理,以选择适当的一组索引特征(即收缩函数)。后者将被依次用来填充矢量分量,这些矢量分量被计算为所选收缩函数出现在图像内部的频率。为了有效地操作索引向量,我们使用离散傅里叶变换(DFT)来减少其基数,并使用空间访问方法(SAM)(如R树)来提高搜索性能。该方法所依据的合理的理论框架使我们能够正式证明索引的某些属性。但是,为了对索引方法进行全面验证,包括有效性和有效性,我们对来自不同域的大量图像进行了多次实验,这些实验显示出良好的系统性能,且误报和误解的百分比较低。

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