A conceptual view on trajectories

@article{Spaccapietra2008ACV,
  title={A conceptual view on trajectories},
  author={Stefano Spaccapietra and Christine Parent and Maria Luisa Damiani and Jos{\'e} Ant{\^o}nio Fernandes de Mac{\^e}do and F{\'a}bio Andr{\'e} Machado Porto and Christelle Vangenot},
  journal={Data Knowl. Eng.},
  year={2008},
  volume={65},
  pages={126-146}
}
Analysis of trajectory data is the key to a growing number of applications aiming at global understanding and management of complex phenomena that involve moving objects (e.g. worldwide courier distribution, city traffic management, bird migration monitoring). Current DBMS support for such data is limited to the ability to store and query raw movement (i.e. the spatio-temporal position of an object). This paper explores how conceptual modeling could provide applications with direct support of… 
From Conceptual Modeling to Logical Representation of Trajectories in DBMS-OR and DW Systems
TLDR
This paper extends previous work on the conceptual modeling of trajectories by generalizing the idea of stops and moves and by defining a set of aggregation functions on trajectory data to offer the flexibility needed to cope with the potential complexity of trajectory semantics in real time and historical analyses.
Modeling Trajectories: A Spatio-Temporal Data Type Approach
TLDR
The STT is an abstract data type endowed with a set of operations designed as a way to cover the syntax and semantics of a given trajectory that can be used for the design and implementation of spatio-temporal databases.
The datAcron Ontology for the Specification of Semantic Trajectories
TLDR
This paper proposes an ontology for modelling semantic trajectories, integrating spatio-temporal information regarding mobility of objects, at multiple, interlinked levels of abstraction, and validate the ontological specifications towards satisfying the needs of visual analysis tasks in the complex air traffic management domain, using real-world data.
Towards Semantic Trajectory Data Analysis: A Conceptual and Computational Approach
TLDR
This doctoral work aims at bringing semantic concepts and statistical computations together for trajectory data analysis, a “conceptual and computational” approach, which involves three major perspectives, i.e. trajectory modelling, trajectory computing, and trajectory pattern discovery.
A Semantic-Based Data Model for the Manipulation of Trajectories: Application to Urban Transportation
TLDR
The research presented in this paper develops a modeling approach that integrates the semantic, spatial and temporal dimensions when representing spatial trajectories at the abstract and logical levels and proposes a data manipulation language that supports the querying and analysis of large trajectory databases.
Querying and Mining Trajectory Databases Using Places of Interest
TLDR
This paper proposes a formal model and query language (denoted Lmo) to express complex queries involving spatial data stored in a GIS, non-spatial data (stored in a data warehouse) and moving object data, and shows that stops and moves are expressible in Lmo and that there exists a fragment of this language allowing to talk about temporally ordered sequences of stops and Moves.
Automatic construction and multi-level visualization of semantic trajectories
TLDR
This paper demonstrates the automatic construction and visualization capabilities of SeMiTri - a system the authors built that exploits 3rd party information sources containing geographic information, to semantically enrich trajectories.
A Hybrid Model and Computing Platform for Spatio-semantic Trajectories
TLDR
This paper presents a Hybrid Model and a Computing Platform for developing a semantic overlay - analyzing and transforming raw mobility data (GPS) to meaningful semantic abstractions, starting from raw feeds to semantic trajectories.
Semantic trajectories modeling and analysis
TLDR
A survey of the approaches and techniques for constructing trajectories from movement tracks, enriching trajectories with semantic information to enable the desired interpretations of movements, and using data mining to analyze semantic trajectories to extract knowledge about their characteristics.
Trajectory data mining: integrating semantics
TLDR
The purpose of this paper is to enrich trajectories with semantic annotations, such as the name of the location where the trajectory has stopped, so that the paper is able to attain quality decisions.
...
1
2
3
4
5
...

References

SHOWING 1-10 OF 42 REFERENCES
Dynamic Modeling of Trajectory Patterns using Data Mining and Reverse Engineering
TLDR
This paper claims that meaningful patterns can only be extracted from trajectories if the geographic space where trajectories are located is considered, and proposes a reverse engineering framework for mining and modeling semantic trajectory patterns.
A foundation for representing and querying moving objects
TLDR
The paper formally defines the types and operations, offers detailed insight into the considerations that went into the design, and exemplifies the use of the abstract data types using SQL.
Augmenting a conceptual model with geospatiotemporal annotations
TLDR
This work proposes an annotation-based approach that allows a database designer to focus first on nontemporal and nongeospatial aspects of the application and, subsequently, augment the conceptual schema with geospatiotemporal annotations (i.e., "when" and "where").
A multigranular spatiotemporal data model
TLDR
This paper presents a multigranular spatiotemporal data model that extends the ODMG model with multiple spatial and temporal granularities, and considers a set of generalization operators that guarantee topological consistency.
Discovering relative motion patterns in groups of moving point objects
TLDR
A generic geographic knowledge discovery approach for exploring the motion of moving point objects, the prime modelling construct to represent GPS tracked animals, people, or vehicles, based on the concept of geospatial lifelines is presented.
Modeling, storing and mining moving object databases
TLDR
This work describes the analysis, pre-processing, modeling, and storage techniques for trajectory data that constitute a moving object database (MOD), and presents the architecture of IXNH/spl Lambda/ATH/spl Sigma/; its core components are the characteriser, cluster finder, and associator, which are used to perform data extraction in MOD.
Approximate Aggregations in Trajectory Data Warehouses
TLDR
A novel way to compute an approximate, but nevertheless very accurate, presence aggregate function, which uses only a bounded amount of measures stored in the base cells of the authors' cuboid, and investigates in depth some issues related to the computation of a holistic aggregate function.
Modeling and querying moving objects in networks
TLDR
The ADT approach is extended by modeling networks explicitly and providing data types for static and moving network positions and regions and the new types and operations are integrated seamlessly into the ADT framework to achieve a relatively simple, consistent and powerful overall model and query language for constrained and unconstrained movement.
Hermes - A Framework for Location-Based Data Management
The aim of this paper is to demonstrate Hermes, a robust framework capable of aiding a spatio-temporal database developer in modeling, constructing and querying a database with dynamic objects that
Modelling geographic data with multiple representations
TLDR
The aim of this paper is to propose a framework suitable for vector data for use at different resolution levels, designed for the general problem of using multiple representations of geographical and thematic data.
...
1
2
3
4
5
...