Query processing issues in image (multimedia) databases

S. Nepal, M. Ramakrishna
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引用次数: 274

Abstract

Multimedia database systems are essential for the effective and efficient use of large collections of image data. The aim of such systems is to enable retrieval of images based on their contents. As part of our research in this area, we are building a prototype content-based image retrieval system called CHITRA. This uses a four-level data model, and we have defined a fuzzy object query language (FOQL) for this system. This system enables retrieval based on high-level concepts, such as "retrieve images of mountains and sunset". A problem faced in this system is the processing of complex queries such as "retrieve all images that have a similar color histogram and a similar texture to the given example image". Such problems have attracted research attention in recent times. R. Fagin (1996) has given an algorithm for processing such queries and provided a probabilistic upper bound for the complexity of the algorithm (which has been implemented in IBM's Garlic project). In this paper, we provide a theoretical (probabilistic) analysis of the expected cost of this algorithm. We propose a new multi-step query processing algorithm and prove that it performs better than Fagin's algorithm in all cases. Our algorithm requires fewer database accesses. We have evaluated both algorithms against an image database of 1000 images on our CHITRA system. We have used both color histogram and Gabor texture features. Our analysis is presented and the reported experimental results validate our algorithm (which has a significant performance improvement).
图像(多媒体)数据库中的查询处理问题
多媒体数据库系统对于有效和高效地利用大量图像数据是必不可少的。这种系统的目的是使检索图像的基础上,他们的内容。作为该领域研究的一部分,我们正在构建一个名为CHITRA的基于内容的图像检索系统原型。这使用了一个四层数据模型,并且我们为这个系统定义了一个模糊对象查询语言(FOQL)。该系统支持基于高级概念的检索,例如“检索山脉和日落图像”。该系统面临的一个问题是处理复杂的查询,例如“检索与给定示例图像具有相似颜色直方图和相似纹理的所有图像”。这些问题引起了近年来的研究关注。R. Fagin(1996)给出了处理此类查询的算法,并提供了算法复杂度的概率上限(已在IBM的Garlic项目中实现)。在本文中,我们对该算法的期望成本进行了理论(概率)分析。我们提出了一种新的多步查询处理算法,并证明了它在所有情况下都优于Fagin算法。我们的算法需要更少的数据库访问。我们针对CHITRA系统上的1000张图像数据库对这两种算法进行了评估。我们使用了颜色直方图和Gabor纹理特征。我们的分析和报告的实验结果验证了我们的算法(有显着的性能改进)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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