基于内容的遥感图像搜索与聚类

G. Marchisio, J. Cornelison
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引用次数: 14

摘要

地球观测系统数据信息系统(EOSDIS)将收集的图像数量不断增加,这强调需要智能检索基础设施,使模型拟合和假设检验能够在非常大的范围内进行,而不是在现有数据的一小部分进行。作者的工作解决了两个战略挑战:数据流和组织。首先,将原始多光谱图像数据简化为属性项,从而量化一些具有科学意义的参数及其在不同空间尺度上的时间演变。为此,他们正在开发特征提取算法,这对大量图像的自动分类有很大的希望。第二个挑战是提供一种技术来组织提取的特征并将其转化为信息。该解决方案需要在数据库管理系统中定制和嵌入复杂的统计算法。例如数据库属性的聚集或分裂聚类,用于检查任何属性对两个或多个其他属性的依赖性的多变量技术,以及用于发现属性之间隐藏关系的分类和回归树。数据库中的知识发现(KDD)这一新兴领域催生了统计计算的复兴,如果遥感界要充分利用新测量量,它可以为它们提供很多东西。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Content-based search and clustering of remote sensing imagery
The increasing amount of imagery to be collected by the Earth Observing System Data Information System (EOSDIS) emphasizes the need for intelligent retrieval infrastructures which enable model fitting and hypothesis testing on a very large scale, rather than on a small subset of the available data. The authors' work addresses two strategic challenges: data streaming and organization. The first involves the reduction of raw multispectral image data into attribute terms, which quantify a number of parameters of scientific interest and their temporal evolution at different spatial scales. To this end, they are developing algorithms for feature extraction which hold great promise for the automatic categorization of large collections of images. The second challenge is to provide the technology which can organize the extracted features and turn them into information. The solution requires the customization and embedding of sophisticated statistical algorithms in a database management system. Examples are agglomerative or divisive clustering of database attributes, multivariate techniques for inspecting the dependence of any attribute on two or more other attributes, and classification and regression trees for discovering hidden relationships among attributes. The emerging field of knowledge discovery in databases (KDD) has spawned a renaissance in statistical computing and has much to offer to the remote sensing community, if they are to make the best use of the volume of the new measurements.
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