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Dive into the research topics where Kostis Kyzirakos is active.

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Featured researches published by Kostis Kyzirakos.


international semantic web conference | 2010

Modeling and querying metadata in the semantic sensor web: the model stRDF and the query language stSPARQL

Manolis Koubarakis; Kostis Kyzirakos

RDF will often be the metadata model of choice in the Semantic Sensor Web. However, RDF can only represent thematic metadata and needs to be extended if we want to model spatial and temporal information. For this purpose, we develop the data model stRDF and the query language stSPARQL. stRDF is a constraint data model that extends RDF with the ability to represent spatial and temporal data. stSPARQL extends SPARQL for querying stRDF data. In our extension to RDF, we follow the main ideas of constraint databases and represent spatial and temporal objects as quantifier-free formulas in a first-order logic of linear constraints. Thus an important contribution of stRDF is to bring to the RDF world the benefits of constraint databases and constraint-based reasoning so that spatial and temporal data can be represented in RDF using constraints.


international semantic web conference | 2012

Strabon: a semantic geospatial DBMS

Kostis Kyzirakos; Manos Karpathiotakis; Manolis Koubarakis

We present Strabon, a new RDF store that supports the state of the art semantic geospatial query languages stSPARQL and GeoSPARQL. To illustrate the expressive power offered by these query languages and their implementation in Strabon, we concentrate on the new version of the data model stRDF and the query language stSPARQL that we have developed ourselves. Like GeoSPARQL, these new versions use OGC standards to represent geometries where the original versions used linear constraints. We study the performance of Strabon experimentally and show that it scales to very large data volumes and performs, most of the times, better than all other geospatial RDF stores it has been compared with.


extended semantic web conference | 2011

A semantically enabled service architecture for mashups over streaming and stored data

Alasdair J. G. Gray; Raúl García-Castro; Kostis Kyzirakos; Manos Karpathiotakis; Jean-Paul Calbimonte; Kevin R. Page; Jason Sadler; Alex Frazer; Ixent Galpin; Alvaro A. A. Fernandes; Norman W. Paton; Oscar Corcho; Manolis Koubarakis; David De Roure; Kirk Martinez; Asunción Gómez-Pérez

Sensing devices are increasingly being deployed to monitor the physical world around us. One class of application for which sensor data is pertinent is environmental decision support systems, e.g. flood emergency response. However, in order to interpret the readings from the sensors, the data needs to be put in context through correlation with other sensor readings, sensor data histories, and stored data, as well as juxtaposing with maps and forecast models. In this paper we use a flood emergency response planning application to identify requirements for a semantic sensor web. We propose a generic service architecture to satisfy the requirements that uses semantic annotations to support well-informed interactions between the services. We present the SemSor- Grid4Env realisation of the architecture and illustrate its capabilities in the context of the example application.


international semantic web conference | 2010

SPARQL query optimization on top of DHTs

Zoi Kaoudi; Kostis Kyzirakos; Manolis Koubarakis

We study the problem of SPARQL query optimization on top of distributed hash tables. Existing works on SPARQL query processing in such environments have never been implemented in a real system, or do not utilize any optimization techniques and thus exhibit poor performance. Our goal in this paper is to propose efficient and scalable algorithms for optimizing SPARQL basic graph pattern queries. We augment a known distributed query processing algorithm with query optimization strategies that improve performance in terms of query response time and bandwidth usage. We implement our techniques in the system Atlas and study their performance experimentally in a local cluster.


Journal of Web Semantics | 2010

Atlas: Storing, updating and querying RDF(S) data on top of DHTs

Zoi Kaoudi; Manolis Koubarakis; Kostis Kyzirakos; Iris Miliaraki; Matoula Magiridou; Antonios Papadakis-Pesaresi

The RDF(S) data model has been proposed for encoding metadata about Web resources. As more and more Web resources are annotated using RDF(S), there is an urgent need for efficiently dealing with this large volume of data. In this paper, we present Atlas, a peer-to-peer system for storing, updating and querying RDF(S) data. The Atlas system has been built using the distributed hash table Bamboo. Atlas was developed in the context of project OntoGrid, where it was used as a distributed repository for RDF(S) metadata describing Grid services and resources. The development of Atlas continues in other projects that our group participates currently. This paper gives an overview of the most recent version of Atlas and discusses a representative application.


Sensors | 2011

A semantic sensor web for environmental decision support applications

Alasdair J. G. Gray; Jason Sadler; Oles Kit; Kostis Kyzirakos; Manos Karpathiotakis; Jean-Paul Calbimonte; Kevin R. Page; Raúl García-Castro; Alex Frazer; Ixent Galpin; Alvaro A. A. Fernandes; Norman W. Paton; Oscar Corcho; Manolis Koubarakis; David De Roure; Kirk Martinez; Asunción Gómez-Pérez

Sensing devices are increasingly being deployed to monitor the physical world around us. One class of application for which sensor data is pertinent is environmental decision support systems, e.g., flood emergency response. For these applications, the sensor readings need to be put in context by integrating them with other sources of data about the surrounding environment. Traditional systems for predicting and detecting floods rely on methods that need significant human resources. In this paper we describe a semantic sensor web architecture for integrating multiple heterogeneous datasets, including live and historic sensor data, databases, and map layers. The architecture provides mechanisms for discovering datasets, defining integrated views over them, continuously receiving data in real-time, and visualising on screen and interacting with the data. Our approach makes extensive use of web service standards for querying and accessing data, and semantic technologies to discover and integrate datasets. We demonstrate the use of our semantic sensor web architecture in the context of a flood response planning web application that uses data from sensor networks monitoring the sea-state around the coast of England.


Reasoning Web International Summer School | 2012

Data Models and Query Languages for Linked Geospatial Data

Manolis Koubarakis; Manos Karpathiotakis; Kostis Kyzirakos; Charalampos Nikolaou; Michael Sioutis

The recent availability of geospatial information as linked open data has generated new interest in geospatial query processing and reasoning, a topic with a long tradition of research in the areas of databases and artificial intelligence. In this paper we survey recent advances in this important research topic, concentrating on issues of data modeling and querying.


international semantic web conference | 2013

Geographica: A Benchmark for Geospatial RDF Stores (Long Version)

George Garbis; Kostis Kyzirakos; Manolis Koubarakis

Geospatial extensions of SPARQL like GeoSPARQL and stSPARQL have recently been defined and corresponding geospatial RDF stores have been implemented. However, there is no widely used benchmark for evaluating geospatial RDF stores which takes into account recent advances to the state of the art in this area. In this paper, we develop a benchmark, called Geographica, which uses both real-world and synthetic data to test the offered functionality and the performance of some prominent geospatial RDF stores.


Journal of Web Semantics | 2014

Wildfire monitoring using satellite images, ontologies and linked geospatial data

Kostis Kyzirakos; Manos Karpathiotakis; George Garbis; Charalampos Nikolaou; Konstantina Bereta; Ioannis Papoutsis; Themistoklis Herekakis; Dimitrios Michail; Manolis Koubarakis; Charalambos Kontoes

Advances in remote sensing technologies have allowed us to send an ever-increasing number of satellites in orbit around Earth. As a result, Earth Observation data archives have been constantly increasing in size in the last few years, and have become a valuable source of data for many scientific and application domains. When Earth Observation data is coupled with other data sources many pioneering applications can be developed. In this paper we show how Earth Observation data, ontologies, and linked geospatial data can be combined for the development of a wildfire monitoring service that goes beyond applications currently deployed in various Earth Observation data centers. The service has been developed in the context of European project TELEIOS that faces the challenges of extracting knowledge from Earth Observation data head-on, capturing this knowledge by semantic annotation encoded using Earth Observation ontologies, and combining these annotations with linked geospatial data to allow the development of interesting applications.


Confederated International Conferences on On the Move to Meaningful Internet Systems, OTM 2012: CoopIS, DOA-SVI, and ODBASE 2012 | 2012

Building Virtual Earth Observatories Using Ontologies, Linked Geospatial Data and Knowledge Discovery Algorithms

Manolis Koubarakis; Michael Sioutis; George Garbis; Manos Karpathiotakis; Kostis Kyzirakos; Charalampos Nikolaou; Konstantina Bereta; Stavros Vassos; Corneliu Octavian Dumitru; Daniela Espinoza-Molina; Katrin Molch; Gottfried Schwarz; Mihai Datcu

Advances in remote sensing technologies have allowed us to send an ever-increasing number of satellites in orbit around Earth. As a result, satellite image archives have been constantly increasing in size in the last few years (now reaching petabyte sizes), and have become a valuable source of information for many science and application domains (environment, oceanography, geology, archaeology, security, etc.). TELEIOS is a recent European project that addresses the need for scalable access to petabytes of Earth Observation data and the discovery of knowledge that can be used in applications. To achieve this, TELEIOS builds on scientific databases, linked geospatial data, ontologies and techniques for discovering knowledge from satellite images and auxiliary data sets. In this paper we outline the vision of TELEIOS (now in its second year), and give details of its original contributions on knowledge discovery from satellite images and auxiliary datasets, ontologies, and linked geospatial data.

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Manolis Koubarakis

National and Kapodistrian University of Athens

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Manos Karpathiotakis

National and Kapodistrian University of Athens

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Charalampos Nikolaou

National and Kapodistrian University of Athens

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George Garbis

National and Kapodistrian University of Athens

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Konstantina Bereta

National and Kapodistrian University of Athens

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Ioannis Papoutsis

National Technical University of Athens

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