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Main Authors: Bornholdt, Johann, Chondrogiannis, Theodoros, Grossniklaus, Michael
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.03112
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author Bornholdt, Johann
Chondrogiannis, Theodoros
Grossniklaus, Michael
author_facet Bornholdt, Johann
Chondrogiannis, Theodoros
Grossniklaus, Michael
contents With recent sensor and tracking technology advances, the volume of available trajectory data is steadily increasing. Consequently, managing and analyzing trajectory data has seen significant interest from the research community. The challenges presented by trajectory data arise from their spatio-temporal nature as well as the uncertainty regarding locations between sampled points. In this paper, we present a data model that treats trajectories as first-class citizens, thus fully capturing their spatio-temporal properties. We also introduce a predicate logic that enable query processing under different uncertainty assumptions. Finally, we show that our predicate logic is expressive enough to capture all spatial and temporal relations put forward by previous work.
format Preprint
id arxiv_https___arxiv_org_abs_2407_03112
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Data Model and Predicate Logic for Trajectory Data (Extended Version)
Bornholdt, Johann
Chondrogiannis, Theodoros
Grossniklaus, Michael
Databases
With recent sensor and tracking technology advances, the volume of available trajectory data is steadily increasing. Consequently, managing and analyzing trajectory data has seen significant interest from the research community. The challenges presented by trajectory data arise from their spatio-temporal nature as well as the uncertainty regarding locations between sampled points. In this paper, we present a data model that treats trajectories as first-class citizens, thus fully capturing their spatio-temporal properties. We also introduce a predicate logic that enable query processing under different uncertainty assumptions. Finally, we show that our predicate logic is expressive enough to capture all spatial and temporal relations put forward by previous work.
title A Data Model and Predicate Logic for Trajectory Data (Extended Version)
topic Databases
url https://arxiv.org/abs/2407.03112