• Aucun résultat trouvé

Semantic Enablement for Integrated Sensor Web and Spatial Data Infrastructure: Location Intelligence from Sensors (LISENS) - Abstract

N/A
N/A
Protected

Academic year: 2022

Partager "Semantic Enablement for Integrated Sensor Web and Spatial Data Infrastructure: Location Intelligence from Sensors (LISENS) - Abstract"

Copied!
1
0
0

Texte intégral

(1)

Semantic Enablement for Integrated Sensor Web and Spatial Data Infrastructure: Location Intelligence from Sensors (LISENS)

Devanjan Bhattacharya

School of Law and School of Informatics, University of Edinburgh,

United Kingdom

Abstract: The talk is going to cover research on the development of a globally shared open spatial expert system(ES), LISENS, a first of a kind geo-enabled KBES for multiple fields, smarter cities to climate modelling. LISENS is integration of SW and SDI with domain KB on data and problems, ready to infer solutions. Semantic interoperability of SW, SDI spatio-semantic KBs with inferencing logics of geometry, topology management are critical aspects of work. The session will throw light on several well-known challenges in big data arena such as : i) how to build open source spatial ontologies for spatial phenomenon using causative factors ii) how to connect ontologies to intelligent inferencing logics iii) how to build specialized knowledge bases for a generalized spatial KBES iv) how to apply the system to automate procedures viz. urban and natural v) how to integrate sensor web(SW), other data sources and spatial data infrastructure(SDI) with open source technologies.

1. Short Biography

My areas of research and teaching being geomatics and geo-spatial technologies, I work towards intelligent geospatial analytics merging remotely sensed data, navigation technologies, informatics and GIS together, which are proving a strong platform to progress towards sustainable smart societies, and I continue my endeavour towards that goal, through research, development and teaching.

______________________________

ISIC’21:International Semantic Intelligence Conference, February 25–27, 2021, New Delhi, India

: [email protected] (D. Bhattacharya)

Copyright © 2021 for this paper by the authors. Use permitted under Creative Commons License Attribution 4.0 International (CC BY 4.0).

CEUR Workshop Proceedings (CEUR-WS.org)

I am a Marie Curie Postdoc Fellow on data- driven innovation at Edinburgh University under TRAIN@ED project. I am working with peace- building processes compiling spatial data collected online, using AI, NLP and geo- visualization. I am proposing to set up a spatial data center “PeaceTech Edinburgh” to aid United Nations peace-building tasks through geospatial intelligence.

Références

Documents relatifs

Each application ontology is created by using ontology merging software [16] to combine new, local content with generic content taken over from relevant

ontology provides support to represent one or more Bayesian node in the BN represents either an observation or an inferred observation variable represents the observation

Originating from a semantic aware service discovery that fits into SOAs and is based upon the SOAR rule engine, we have developed a semantic component to aid the

In order to build such a model, this component queries and interacts with the available data sources, both private and public ones, and identifies the knowledge “bits” useful

Not only can spatial reasoning be delegated to a geoserver; the land use categories defined in IMRO and INSPIRE provide a standard intermediary for communicating normative content

What is missing is a shared and transparent semantic enablement layer for Spatial Data Infrastructures which also integrates reasoning services known from the Semantic Web.. Focusing

(2) heterogeneity of data sources and data transport methods; (3) integrating data streams from different sources and modalities (esp. contextual information), and

work carried out since these early use cases has been concerned with solutions for specific problems associated with semantic integration, such as mapping between