4.7 Article

HiVG: A hierarchical indoor visibility-based graph for navigation guidance in multi-storey buildings

Journal

COMPUTERS ENVIRONMENT AND URBAN SYSTEMS
Volume 93, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.compenvurbsys.2021.101751

Keywords

Visibility; Hierarchical graph; Graph partitioning; Indoor route instructions; Level of detail

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This article proposes a hierarchical indoor visibility-based graph (HiVG) and its generation algorithm for navigation guidance in multi-storey buildings, demonstrating its potential and applicability through experiments and case studies.
A hierarchical data model is needed in mobile navigation systems to generate route instructions on multiple levels of detail (LODs), thereby adapting to users' various information needs during navigation. In complex multi-storey indoor environments, existing hierarchical data models mainly rely on logical graphs that represent indoor cellular spaces as nodes and adjacency as edges. Due to the lack of precise geometry, however, they have limited capability to support the accurate computation of walking distance and directions, which are essential in route instructions. This article proposes a hierarchical indoor visibility-based graph (HiVG) for navigation guidance in multi-storey buildings and presents a HiVG generation algorithm. The algorithm's input is an indoor visibility graph (iVG) in which the orientations of nodes to corridor areas are represented. In the algorithm, first the functions of edges in indoor route instructions are identified, after which an edge function-based graph partitioning iteration is performed to generate each level of the HiVG. Experiments with three buildings of different geometric configurations demonstrate the potential of our HiVG generation algorithm. Furthermore, the conducted case studies show that the proposed HiVG is appropriate for generating indoor route instructions on multiple LODs.

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