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Speeding up the similarity search in high-dimensional image database by multiscale filtering and dynamic programming

机译:通过多尺度滤波和动态编程加快高维图像数据库中的相似度搜索

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摘要

This paper presents a scalable content-based image indexing and retrieval system based on a new multiscale filter. Image databases often represent the image objects as high-dimensional feature vectors and access them via the feature vectors and similarity measure. A similarity measure based on the proposed multiscale filtering technique is defined to reduce the computational complexity of the similarity search in high-dimensional image database. Moreover, a special attention is paid to solve the problem of feature value correlation by dynamic programming. This problem arises from changes of images due to database updating or considering spatial layout in constructing feature vectors. The computational complexity of similarity measure in high-dimensional image database is very huge and the applications of image retrieval are restricted to certain areas. To demonstrate the effectiveness of the proposed algorithm, we conducted extensive experiments and compared the performance with the IBM's query by image content (QBIC) and Jain and Vailaya's methods. The experimental results demonstrate that the proposed method outperforms both of the methods in retrieval accuracy and noise immunity. The execution speed of the proposed method is much faster than that of QBIC method and it can achieve good results in terms of retrieval accuracy compared with Jain's method and QBIC method.
机译:本文提出了一种基于可扩展内容的基于图像的索引和检索系统,该系统基于新型多尺度滤波器。图像数据库通常将图像对象表示为高维特征向量,并通过特征向量和相似性度量对其进行访问。定义了一种基于提出的多尺度滤波技术的相似性度量,以减少高维图像数据库中相似性搜索的计算复杂度。而且,要特别注意通过动态编程来解决特征值相关性的问题。这个问题是由于数据库更新或在构造特征向量时考虑空间布局而引起的图像变化而引起的。高维图像数据库中相似度度量的计算复杂度非常高,图像检索的应用仅限于某些领域。为了证明该算法的有效性,我们进行了广泛的实验,并将其性能与IBM的图像内容查询(QBIC)以及Jain和Vailaya的方法进行了比较。实验结果表明,该方法在检索精度和抗噪性方面均优于两种方法。所提方法的执行速度比QBIC方法快得多,与Jain方法和QBIC方法相比,在检索精度方面可以取得良好的效果。

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