Query Optimisation for Data Mining in Peer-to-Peer Sensor Networks

One of the more recent sources of large volumes of generated data is sensor devices, where dedicated sensing equipment is used to monitor events and happenings in a wide range of domains, including monitoring human biometrics and behaviour. This chapter proposes an approach and an implementation of semi-automated enrichment of raw sensor data, where the sensor data can come from a wide variety of sources. The authors extract semantics from the sensor data using their XSENSE processing architecture in a multi-stage analysis. The net result is that sensor data values are transformed into XML data so that well-established XML querying via XPATH and similar techniques can be followed. The authors then propose to distribute the XML data on a peer-to-peer configuration and show, through simulations, what the computational costs of executing queries on this P2P network, will be. This approach is validated approach through the use of an array of sensor data readings taken from a range of biometric sensor devices, fitted to movie-watchers as they watched Hollywood movies. These readings were synchronised DOI: 10.4018/978-1-60566-328-9.ch011

[1]  Yannis Kotidis Processing proximity queries in sensor networks , 2006, DMSN '06.

[2]  Kristoffer Høgsbro Rose,et al.  Virtual XML: A toolbox and use cases for the XML world view , 2006, IBM Syst. J..

[3]  François Goasdoué,et al.  SomeWhere in the Semantic Web , 2005, PPSWR.

[4]  Tore Risch,et al.  EDUTELLA: a P2P networking infrastructure based on RDF , 2002, WWW.

[5]  Ching Hau Chan,et al.  The CDVPlex biometric cinema: sensing physiological responses to emotional stimuli in film , 2006 .

[6]  Zohra Bellahsene,et al.  Querying Distributed Data in a Super-Peer Based Architecture , 2004, DEXA.

[7]  Zohra Bellahsene,et al.  An Extended Preorder Index for Optimising XPath Expressions , 2005, XSym.

[8]  Lucy E. Dunne,et al.  Initial development and testing of a novel foam-based pressure sensor for wearable sensing , 2005, Journal of NeuroEngineering and Rehabilitation.

[9]  Kamin Whitehouse,et al.  Semantic Streams: A Framework for Composable Semantic Interpretation of Sensor Data , 2006, EWSN.

[10]  Noel E. O'Connor,et al.  Action Sequence Detection in Motion Pictures , 2004, EWIMT.

[11]  Ken Dancyger,et al.  The Technique of Film and Video Editing: History, Theory, and Practice , 1993 .

[12]  Noel E. O'Connor,et al.  Dialogue Sequence Detection in Movies , 2005, CIVR.

[13]  Hideyuki Kawashima,et al.  MeT: a real world oriented metadata management system for semantic sensor networks , 2006, DMSN '06.

[14]  Alan F. Smeaton,et al.  A System for Event-Based Film Browsing , 2006, TIDSE.

[15]  Noel E. O'Connor,et al.  Movie indexing via event detection , 2006 .

[16]  Beng Chin Ooi,et al.  An adaptive peer-to-peer network for distributed caching of OLAP results , 2002, SIGMOD '02.

[17]  David Bordwell,et al.  Film Art: An Introduction , 1979 .