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Knowledge Discovery by Mining Association Rules and Temporal-Spatial Information from Large-Scale Geospatial Image Databases

机译:通过大规模地理空间图像数据库挖掘关联规则和时间空间信息的知识发现

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Discovering relevant knowledge from large-scale geospatial image databases is challenging because of the complexity of describing visual semantics, the computational cost of processing petabytes of data, and the difficulty in summarizing and presenting knowledge. In this paper, we revisit a selective set of core data mining algorithms, namely association rules mining, spatial mining, and temporal mining. We then customize these algorithms using visual content and potential objects extracted from geospatial image databases with other relevant information, such as text-based annotations. Queries utilizing the mining results are also discussed in this paper. These mining and query processing algorithms play an important role in GeoIRIS-Geospatial Information Retrieval and Indexing System.
机译:从大规模地理空间图像数据库发现相关知识是具有挑战性的,因为描述了视觉语义的复杂性,处理了数据的处理的计算成本,以及总结和呈现知识的难度。在本文中,我们重新审视了一种选择性核心数据挖掘算法,即关联规则挖掘,空间挖掘和时间挖掘。然后,我们使用从地理空间图像数据库中提取的视觉内容和潜在对象与其他相关信息(例如基于文本的注释)进行自定义这些算法。本文还讨论了利用采矿结果的查询。这些挖掘和查询处理算法在地理地理空间信息检索和索引系统中发挥着重要作用。

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