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Interesting spatiotemporal rules discovery: Application to remotely sensed image databases

机译:有趣的时空规则发现:在遥感图像数据库中的应用

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Knowledge discovery in databases aims to discover useful and significant information from multiple databases. However, in the remote sensing field, the large size of discovered information makes it hard to manually look for interesting information quickly and easily. The purpose of this paper is to automate the process of identifying interesting spatiotemporal knowledge (expressed as rules). Design/methodology/approach: The proposed approach is based on case-based reasoning (CBR) process. CBR allows the recognition of useful and interesting rules by simulating a human reasoning process, and combining objective and subjective interestingness measures. It takes advantage of statistics' power from objective criteria and the reliability of subjective criteria. This helps improve the discovery of interesting rules by taking into consideration the different properties of interestingness measures. Findings: The proposed approach combines several interestingness measures with complementary properties to improve the detection of the interesting rules. Based on a CBR process, it, also, offers three main advantages to users in a remote sensing field: automatism, integration of the users' expectations and combination of several interestingness measures while taking into account the reliability of each one. The performance of the proposed approach is evaluated and compared to other approaches using several real-world datasets. Originality/value: This study reports a valuable decision support tool for engineers, environmental authority and personnel who want to identify relevant discovered rules. The resulting rules are useful for many fields such as: disaster prevention and monitoring, growth volume and crops on farm or grassland, planting status of agricultural products, and tree distribution of forests.
机译:数据库中的知识发现旨在从多个数据库中发现有用的重要信息。但是,在遥感领域,发现的信息量很大,很难快速,轻松地手动查找有趣的信息。本文的目的是使识别有趣的时空知识(以规则表示)的过程自动化。设计/方法/方法:提出的方法基于基于案例的推理(CBR)过程。 CBR通过模拟人类的推理过程,并结合客观和主观的趣味性度量,可以识别有用和有趣的规则。它利用了客观标准和主观标准的可靠性所具有的统计能力。通过考虑兴趣度度量的不同属性,这有助于改善对兴趣规则的发现。研究结果:所提出的方法结合了一些具有互补性的兴趣度度量,以改善对有趣规则的检测。它还基于CBR流程,在遥感领域为用户提供了三个主要优势:自动性,用户期望的集成以及几种有趣程度的组合,同时考虑到每个可靠性。评估了所提出方法的性能,并将其与使用一些实际数据集的其他方法进行比较。独创性/价值:本研究报告了一个有价值的决策支持工具,适用于希望识别相关发现规则的工程师,环境主管部门和人员。由此产生的规则可用于许多领域,例如:防灾和监测,农场或草地的生长量和农作物,农产品的种植状况以及森林树木的分布。

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