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首页> 外文期刊>ISPRS International Journal of Geo-Information >Indexing for Moving Objects in Multi-Floor Indoor Spaces That Supports Complex Semantic Queries
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Indexing for Moving Objects in Multi-Floor Indoor Spaces That Supports Complex Semantic Queries

机译:支持复杂语义查询的多层室内空间中移动对象的索引

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With the emergence of various types of indoor positioning technologies (e.g., radio-frequency identification, Wi-Fi, and iBeacon), how to rapidly retrieve indoor cells and moving objects has become a key factor that limits those indoor applications. Euclidean distance-based indexing techniques for outdoor moving objects cannot be used in indoor spaces due to the existence of indoor obstructions (e.g., walls). In addition, currently, the indexing of indoor moving objects is mainly based on space-related query and less frequently on semantic query. To address these two issues, the present study proposes a multi-floor adjacency cell and semantic-based index (MACSI). By integrating the indoor cellular space with the semantic space, the MACSI subdivides open cells (e.g., hallways and lobbies) using space syntax and optimizes the adjacency distances between three-dimensionally connected cells (e.g., elevators and stairs) based on the caloric cost that extends single floor indoor space to three dimensional indoor space. Moreover, based on the needs of semantic query, this study also proposes a multi-granularity indoor semantic hierarchy tree and establishes semantic trajectories. Extensive simulation and real-data experiments show that—compared with the indoor trajectories delta tree (ITD-tree) and the semantic-based index (SI)—the MACSI produces more reliable query results with significantly higher semantic query and update efficiencies; has superior semantic expansion capability; and supports multi-granularity complex semantic queries.
机译:随着各种类型的室内定位技术(例如,射频识别,Wi-Fi和iBeacon)的出现,如何快速检索室内小区和移动物体已成为限制这些室内应用的关键因素。由于存在室内障碍物(例如墙壁),无法在室内空间中使用用于室外移动物体的基于欧几里德距离的索引技术。另外,目前,室内运动物体的索引主要基于与空间有关的查询,而较少基于语义查询。为了解决这两个问题,本研究提出了一种多层邻接单元和基于语义的索引(MACSI)。通过将室内蜂窝空间与语义空间集成在一起,MACSI使用空间语法细分了开放式单元(例如,走廊和大厅),并根据热量成本优化了三维连接的单元(例如,电梯和楼梯)之间的邻接距离。将单层室内空间扩展到三维室内空间。此外,基于语义查询的需求,本研究还提出了一种多粒度的室内语义层次树,并建立了语义轨迹。大量的仿真和实际数据实验表明,与室内轨迹增量树(ITD-tree)和基于语义的索引(SI)相比,MACSI产生了更可靠的查询结果,并且语义查询和更新效率大大提高;具有卓越的语义扩展能力;并支持多粒度复杂语义查询。

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