基于本体的多模态时空数据语义关联模型

Yan Zhou, Qingqing Yang, Fan Jiang
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引用次数: 0

摘要

多模态时空数据是具有时空信息、类型多样、模态复杂的混合数据。不同的模态数据通常是相互关联的。有效组织和关联时空数据是海量数据管理和数据信息挖掘的重点。针对时空数据具有多维度、多尺度、多时间、多模态的特点,通过分析其丰富的时空信息和语义信息,提出了以时间信息、空间信息和内容对象语义信息为三个相关因素的多模态时空数据语义关联模型。同时,基于多模态时空数据具有底层特征异质性的特点,基于本体理论,定义并构建了能够统一描述数据信息的时空数据语义表达本体模型。关联查询通过构造不同模态时空数据的多个实例来实现。实验分析表明,该多模态时空数据语义关联模型能够有效关联不同模态的时空数据,并具有一定的可扩展性。
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A Multi-modal Spatio-temporal Data Semantic Association Model Based on Ontology
Multi-modal spatio-temporal data is mixed data with spatio-temporal information, various types and complex modalities. Different modal data are usually related to each other. Effective organization and associated spatio-temporal data are the focus of massive data management and data information mining. Aiming at the characteristics of multidimensional, multi-scale, multi-temporal and multi-modality of spatio-temporal data, by analyzing its rich spatio-temporal information and semantic information, this paper proposes a multi-modal spatio-temporal data semantic association model with time information, spatial information and content object semantic information as three related factors. At the same time, based on the characteristics of multi-modal spatio-temporal data features low-level features heterogeneity, the ontology model of spatio-temporal data semantic expression that can describe data information uniformly is defined and constructed based on Ontology theory. The association query is realized by constructing multiple instances of different modal spatio-temporal data. The experimental analysis shows that the multi-modal spatio-temporal data semantic association model can effectively correlate spatio-temporal data of different modalities and has certain scalability.
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