论文
论文题目: A hierarchical spatio-temporal object knowledge graph model for dynamic scene representation
第一作者: Zhao Xinke, Cao Yibing, Wang Jiahe, Fan Xinhua etc.
联系作者:
发表年度: 2023
摘  要: Spatio-temporal knowledge is essential in understanding the dynamic aspects of complex scenes. However, existing knowledge graphs have limitations, such as inadequate time description, inflexible expression of semantic relationships, and difficulties in accessing GIS platforms. The article proposes the spatio-temporal object knowledge graph (STOKG), consisting of the object concept layer, spatio-temporal object layer, and dynamic version layer. To demonstrate the practical usefulness of the STOKG model, the Henan epidemic knowledge graph is created using epidemiological data from early 2020, which shows the dynamic evolution of the spatio-temporal objects of cases from the geography and semantic perspectives. Finally, the STOKG model is compared with the existing models in terms of accuracy, completeness and repetitiveness. The experimental results show that the STOKG model provides a more flexible and comprehensive approach to representing spatio-temporal knowledge, which is useful for applications in fields such as geography, epidemiology, and environmental science.
英文摘要:
刊物名称: TRANSACTIONS IN GIS
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论文类别: SCI