@techreport{14acb57e1d4a4d9b99dc3c009866254f,
title = "An Experimental Analysis of Indoor Spatial Queries: Modeling, Indexing, and Processing",
abstract = "Indoor location-based services (LBS), such as POI search and routing, are often built on top of typical indoor spatial queries. To support such queries and indoor LBS, multiple techniques including model/indexes and search algorithms have been proposed. In this work, we conduct an extensive experimental study on existing proposals for indoor spatial queries. We survey five model/indexes, compare their algorithmic characteristics, and analyze their space and time complexities. We also design an in-depth benchmark with real and synthetic datasets, evaluation tasks and performance metrics. Enabled by the benchmark, we obtain and report the performance results of all model/indexes under investigation. By analyzing the results, we summarize the pros and cons of all techniques and suggest the best choice for typical scenarios. ",
author = "Tiantian Liu and Huan Li and Hua Lu and Cheema, {Muhammad Aamir} and Lidan Shou",
note = "This is a pre-version of the EDBT 2021 paper.",
year = "2020",
language = "English",
volume = "abs/2010.03910",
series = "CoRR",
publisher = "ArXiv.org - Cornell University",
address = "United States",
type = "WorkingPaper",
institution = "ArXiv.org - Cornell University",
}