From gelmes@wvu.edu Tue Jun 3 21:45:28 2008 From: gelmes@wvu.edu (Greg Elmes) Date: Tue, 03 Jun 2008 16:45:28 -0400 Subject: [SAM] SDH 2008 - Programme 13th International Symposium on Spatial Data Handling 23rd to 25th June, 2008 Message-ID: <484575280200006D0003A4E7@WVUGW01.wvu.edu> SDH 2008 - The 13th International Symposium on Spatial Data Handling 23rd to 25th June, 2008 - Montpellier, France All papers have been submitted to full review by 3 members of the scientific programme committee The proceedings will be published by Springer and available at the conference. Inscription should be made through the web site: http://sdh-sageo.teledetection.fr Anne Ruas and Chris Gold =================================================== MONDAY 23rd June 2008 >From 9:15 - Registration Desk 10:00-11:00 - Opening Session & Guest talk GI Systems and Science, David Maguire (ESRI) 11:00-13:00 - Classification Classification of Landslide Susceptibility in the Development of Early Warning Systems, Dominik Gallus, Andreas Abecker, Daniela Richter Clusters in Aggregated Health Data, Kevin Buchin, Maike Buchin, Marc van Kreveld, Maarten, Loffler, Jun Luo, Rodrigo I. Silveira Spatial Simulation of Agricultural Practices using a Robust Extension of Randomized Classifica-tion Tree Algorithms, J. Stéphane Bailly, Anne Biarnes, Philippe Lagacherie Impact of a Change of Support on the Assessment of Biodiversity with Shannon Entropy, Didier Josselin, Ilene Mahfoud, Bruno Fady 13:00-14:00 - Lunch 14:00-15:30 - Shape and Spatial Relations 1 A Study on how Humans Describe Relative Positions of Image Objects, Xin Wang, Pascal Mat-sakis, Lana Trick, Blair Nonnecke, Melanie Veltman Perceptual Sketch Interpretation, Markus Wuersch, Max J. Egenhofer The Shape Cognition and Query supported by Fourier Transform, Tinghua Ai, Yun Shuai, Jing-zhong Li 15:30-16:00 - Coffee Break 16:00-17:30 - Classification and Image Analysis Implicit Spatial Information Extraction from Remote Sensing Images, Erick López-Ornelas, Guy Flouzat The Application of the Concept of Indicative Neighbourhood on Landsat ETM+ Images and Or-thophotos using Circular and Annulus Kernels, Madli Linder, Kalle Remm, Hendrik Proosa Sensitivity of the C-band SRTM DEM vertical accuracy to terrain characteristics and spatial reso-lution*, Thierry Castel, Pascal Oettli =============================== TUESDAY 24th June 2008 9:00 – 10:30 - Process modelling Improving the Reusability of Spatiotemporal Simulation models : Using MDE to Implement Cellular Automata, Falko Theisselmann, Doris Dransch Support Vector Machines for Spatiotemporal Analysis in Geosensor Networks, Jon Devine, Tony Stefanidis Towards a Method to Generally Describe Physical Spatial Processes*, Barbara Hofer, Andrew U. Frank 10:30-11:00 - Coffee Break 11:00 – 13:00 - 3D and relief Implementation of Building Reconstruction Algorithm using Real World Lidar Data, Rebecca O. C. Tse, Chris Gold, Dave Kidner A New Approach for Mountain Areas Cartography, Loïc Gondol, Arnaud Le Bris, François Leco-rdix Slope Accuracy and Path Planning on Compressed Terrain, W Randolph Franklin, Daniel M Tracy, Marcus Andrade, Jonathan Muckell, Metin Inanc, Zhongyi Xie, Barbara M Cutler Processing 3D Geo-Information for Augmenting Georeferenced and Oriented Photographs with Text Labels*, Arnoud de Boer, Eduardo Dias, Edward Verbree 14:00 – 15:30 - Generalisation and Multiple Representation A Data Model for Multi-Scale Topographic Data, J.E. Stoter, J.M. Morales, R.L.G. Lemmens, B.M. Meijers, P.J.M van Oosterom, C.W. Quak, H.T. Uitermark, and L. van den Brink An interoperable web service architecture to provide base maps empowered by automated gener-alization, Theodor Foerster, Jantien Stoter, Rob Lemmens Combining Three Multi-Agent Based Generalisation Models: AGENT, CartACom and GAEL, Cécile Duchêne, Julien Gaffuri 16:00 – 17:30 - 3D Interactive Geovisualization and Geometric Modelling of 3D Data - A Case Study from the Åknes Rockslide Site, Norway, Trond Nordvik, Chris Harding FieldGML: An Alternative Representation for Fields, Hugo Ledoux Marine GIS : Progress in 3D Visualization for Dynamic GIS, Rafal Goralski, Christopher Gold The IGN-E Case : Integration through a Hidden Ontology, Asunción Gómez-Pérez, José Ángel Ramos, Antonio Rodríguez-Pascual, Luis M Vilchez-Blázquez All Roads Lead to Rome - Geospatial Modeling of Hungarian Street Names with Destination Ref-erence, Antal Guszlev, Lilla Lukács Where is the Terraced House? On the Use of Ontologies for Recognition of Urban Concepts in Cartographic Databases*, Patrick Lüscher, Robert Weibel, William A. Mackaness 10:30-11:00 - Coffee Break 11:00 – 13:00 - Shape and Spatial Relation 2 Spatial Support and Spatial Confidence for Spatial Association Rules, Patrick Laube, Mark de Berg, Marc van Kreveld Deriving Topological Relationships between Simple Regions with Holes, Mark McKenney, Reasey Praing, Markus Schneider Spatial Rules Generate Urban Patterns: Emergence of the Small-World Network, Hani Rezayan, Mahmoud Reza Delavar, Andrew U. Frank, Amir Mansouri Conceptual Neighborhoods of Topological Relations Between Lines, Rui M.P. Reis, Max J. Egen-hofer, João L.G. Matos 13:00-14:00 - Lunch 14:00 – 15:30 – Uncertainty and Matching Information Processes Produce Imperfections in Data—The Information Infrastructure Compen-sates for Them, Andrew U. Frank Moving from Pixels to Parcels : The Use of Possibility Theory to Explore the Uncertainty Associ-ated Object Oriented Remote Sensing, Alexis Comber, Alan Brown, Katie Medcalf, Richard Lu-cas, Daniel Clewley, Johanna Breyer, Peter Bunting, Steve Keyworth Data matching - a matter of belief*, Ana-Maria Olteanu-Raimond, Sébastien Mustière 15:30-16:00 - Coffee Break 16:00 – 17:30 - Road and Navigation A Primer of Picture-Aided Navigation in Mobile Systems, Robert Laurini, Silvia Gordillo, Fran-çoise Raffort, Sylvie Servigne, Gustavo Rossi, Nan Wang, Andrés Fortier Road Network Model for Vehicule Navigation using Traffic Direction Approach, Yang Yue, An-thony Gar-On Yeh, Qingquan Li Clustering Algorithm for Network Constraint Trajectories, Ahmed Kharrat, Iulian Sandu Popa, Karine Zeitouni, Sami Faiz 17:30 - END OF THE CONFERENCE ======================== The International Symposium on Spatial Data Handling (SDH) is the premier international research forum for Geographic Information Science. It commenced in 1984, in Zurich, Switzerland, organized by the International Geographical Union Commission. The conference is run biannually and is coming to Montpellier (South of France) in 2008. PROGRAMME COMMITTEE: Dave Abel, CSIRO, Au Bénédicte Bucher, COGIT Laboratory, Fr Eliseo Clementini, University of L'Aquila, It Alexis Comber, Leicester University, UK Thomas Devogèle, Ecole Navale, Fr Gregory Elmes, West Virginia University, USA Peter Fisher, University of Leicester, UK Andrew Frank, Vienna University, At W. Randolph Franklin, Rensselaer Polytechnic Inst, USA Michael Goodchild, University of California, USA Chris Gold, Glamorgan University, UK Hans Guesgen, Massey University, NZ Francis Harvey, University of Minnesota, USA Claire Jarvis, Leicester University, UK Bin Jiang, Gävle University, Se Christopher B. Jones, Cardiff University, UK Brian Klinkenberg, British Colombia University, Ca Menno-Jan Kraak, ITC, Nl Michael Leitner, Louisiana State University, USA Chao Li, CASA, UK William Mackaness, Edinburgh University, UK Paola Magillo, Genova University, It Hervé Martin, Grenoble University, Fr Martien Molennar, ITC, Nl Sébastien Mustière, COGIT Laboratory, Fr Peter van Oosterom, Delft University of Technology, Nl Henk Ottens, Utrecht University, Nl Donna Peuquet, Pennsylvania State University, USA Ross Purves, Zurich University, Ch Sanjay Rana, University College London, UK Andreas Riedl, Vienna University, At Juri Roosaare, Tartu University, Ee Anne Ruas, COGIT Laboratory, Fr Monika Sester, IKG, University of Hannover, Ge Bettina Speckmann, Technical University of Eindhoven, Nl Monica Wachowicz, Wageningen University, Nl Robert Weibel, Zurich UAnthony Yeh, Hong Kong University, Chn Sisi Zlatanova, Delft University of Technology, Nl CONFERENCE WEB SITE: http://sdh-sageo.teledetection.fr ================================== Programme Committee Chairs: Anne Ruas ( Laboratoire COGIT- IGN France) ; Chris Gold (University of Glamorgan) Gregory A. Elmes 349 Brooks Hall Department of Geology and Geography West Virginia University Morgantown WV 26506-6300 (304) 293 4685 greg.elmes@mail.wvu.edu http://www.geo.wvu.edu/~elmes/ From jmennis@temple.edu Thu Jun 5 15:09:35 2008 From: jmennis@temple.edu (Jeremy Mennis) Date: Thu, 5 Jun 2008 10:09:35 -0400 Subject: [SAM] CFP: Spatial Data Mining special issue in CEUS Message-ID: <319308FEB0B5F8408C15C6214674CBC1018950B4@EXC1VS1.temple> This is a multi-part message in MIME format. ------_=_NextPart_001_01C8C715.CFAFEEB5 Content-Type: multipart/alternative; boundary="----_=_NextPart_002_01C8C715.CFAFEEB5" ------_=_NextPart_002_01C8C715.CFAFEEB5 Content-Type: text/plain; charset="US-ASCII" Content-Transfer-Encoding: quoted-printable Manuscripts are invited for a special issue of Computers, Environment and Urban Systems focusing on the theme of Spatial Data Mining: Methods and Applications.=20 Guest Editors Diansheng Guo, University of South Carolina=20 Jeremy Mennis, Temple University=20 Authors are advised to email the editors at spatialdatamining@gmail.com of the their intent to submit a manuscript by August 15, 2008. Manuscripts should be submitted through the Elsevier electronic system ( http://ees.elsevier.com/ceus/) by September 1, 2008. Please make sure to select the Article Type "Special Issue: Spatial Data Mining". All submissions will be peer-reviewed in line with Computers, Environment and Urban Systems policy. The Guide for Authors is available at: ( http://www.elsevier.com/wps/find/journaldescription.cws_home/304/authori nstructions).=20 Please see the attachment for more information. =20 =20 ------_=_NextPart_002_01C8C715.CFAFEEB5 Content-Type: text/html; charset="US-ASCII" Content-Transfer-Encoding: quoted-printable

Manuscripts are invited for a special issue of Computers, Environment and Urban Systems focusing on the theme of = Spatial Data Mining: Methods and Applications.

Guest Editors

     Diansheng Guo, University of South = Carolina
     Jeremy Mennis, Temple University 

Authors are advised to email the editors at spatialdatamining@gmail.com of the their intent to submit a manuscript by August 15, 2008. = Manuscripts should be submitted through the Elsevier electronic system (http://ees.elsevier.com/ceus/)= by September 1, 2008. Please make sure to select the Article Type "Special Issue: Spatial Data Mining". All submissions will = be peer-reviewed in line with Computers, Environment and Urban = Systems policy. The Guide for Authors is available at: (http://www.elsevier.com/wps/find/journaldescription.c= ws_home/304/authorinstructions).

Please see the attachment for more information.

 

 

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ICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAg ICAgICAgICAgICAgICAgICAgICAgCiAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAg ICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAg ICAgICAgICAKICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAg ICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgIAogICAg ICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAg ICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgCiAgICAgICAgICAgICAgICAg ICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAg ICAgICAgICAgICAgICAgICAgICAgICAgICAKICAgICAgICAgICAgICAgICAgICAgICAgICAgICAg ICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAg ICAgICAgICAgICAgIAogICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAg ICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAg CiAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAg ICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgICAKICAgICAgICAgICAg ICAgICAgICAgICAgICAgCjw/eHBhY2tldCBlbmQ9InciPz4NCmVuZHN0cmVhbQ1lbmRvYmoNNiAw IG9iajw8L0NyZWF0aW9uRGF0ZShEOjIwMDgwNTI3MTMwMDQyLTA0JzAwJykvUHJvZHVjZXIoUHJp bmNlIDYuMCBcKHd3dy5wcmluY2V4bWwuY29tXCkpL01vZERhdGUoRDoyMDA4MDUyNzEzMDIwMy0w NCcwMCcpPj4NZW5kb2JqDXhyZWYNCjAgNw0KMDAwMDAwMDAwMCA2NTUzNSBmDQowMDAwMDk4OTAz IDAwMDAwIG4NCjAwMDAxMDAwOTMgMDAwMDAgbg0KMDAwMDEwMDE4MCAwMDAwMCBuDQowMDAwMTAw MjU1IDAwMDAwIG4NCjAwMDAxMDAzMDYgMDAwMDAgbg0KMDAwMDEwMzYyMyAwMDAwMCBuDQp0cmFp bGVyDQo8PC9TaXplIDc+Pg0Kc3RhcnR4cmVmDQoxMTYNCiUlRU9GDQo= ------_=_NextPart_001_01C8C715.CFAFEEB5-- From brenning@fesmail.uwaterloo.ca Fri Jun 20 17:09:27 2008 From: brenning@fesmail.uwaterloo.ca (Alexander Brenning) Date: Fri, 20 Jun 2008 12:09:27 -0400 Subject: [SAM] CFP: Spatial Classification at IFCS 2009, Dresden Message-ID: <485BD637.6060507@fes.uwaterloo.ca> Dear colleagues, I would like to invite you to contribute to a Special Interest Session on Spatial Classification that I will chair at the 11th Biennial Conference of the International Federation of Classification Societies (IFCS), which will take place at the University of Technology of Dresden, Germany, March 13-18, 2009, in combination with the 33rd annual conference of the German Classification Society - Gesellschaft fr Klassifikation (GfKl). Abstract deadline is November 3, 2008. The focus of this Special Interest Session will be on applications and methodological challenges of the classification of spatial data, especially in, but not limited to, the context of remote sensing and the geosciences. Such applications include land cover classification and change detection, landslide susceptibility modeling, mineral potential mapping, or habitat analysis. Dealing with spatial autocorrelation in model fitting and error estimation is one of the challenges encountered in spatial classification. Specific applications such as hyperspectral remote sensing result in additional challenges such as high-dimensional data. Both applied and theoretical scientists with diverse backgrounds are invited to contribute to this session that is intended to provide an interdisciplinary discussion forum. Papers of the conference will be published in a post-conference proceedings volume in the series Studies in Classification, Data Analysis and Knowledge Organization with Springer-Verlag after having passed a refereeing process (deadlines are listed below). Long or advanced versions of papers can be submitted to the journals Advances in Data Analysis and Classification (ADAC) and Journal of Classification that both will publish a Special Issue for IFCS 2009. I look forward to meeting you at the IFCS, Alexander Brenning Conference website: http://www.ifcs2009.de/ Important Dates: - November 03, 2008: deadline for abstracts - December 17, 2009: notification of acceptance of abstracts - January 19, 2009: end of early-bird registration - March 13-18, 2009: conference - April 6, 2009: deadline for papers for post-conference proceedings - June 29, 2009: notification of acceptance of papers - July 20, 2009: camera-ready version of papers -- Alexander Brenning brenning@fes.uwaterloo.ca - T +1-519-888-4567 ext 35783 Department of Geography and Environmental Management University of Waterloo 200 University Ave. W - Waterloo, ON - Canada N2L 3G1 http://www.fes.uwaterloo.ca/geography/faculty/brenning/ From daij@leda.nvc.cs.vt.edu Tue Jun 24 17:35:56 2008 From: daij@leda.nvc.cs.vt.edu (daij@leda.nvc.cs.vt.edu) Date: Tue, 24 Jun 2008 12:35:56 -0400 Subject: [SAM] ACM GIS 2008 - Final Call for Papers Message-ID: <20080624163556.GA9837@leda.nvc.cs.vt.edu> --sm4nu43k4a2Rpi4c Content-Type: text/plain; charset=us-ascii Content-Disposition: inline We will accept submissions until June 24 9pm PST even if the abstract was not submitted by the June 17 deadline as we are aware of the time pressures due to simultaneous submission deadlines for other conferences. With best regards, ACM-GIS 08 Organization Committee --------------------------------------------- 16th ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems (ACM GIS 2008) Call for Papers --------------------------------------------- November 5-7, 2008 Irvine, CA, USA http://acmgis08.cs.umn.edu Corporate Sponsorship by ESRI Microsoft Oak Ridge National Laboratory The ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems 2008 (ACM GIS 2008) is the sixteenth event of a series of symposia and workshops that began in 1993 with the aim of bringing together researchers, developers, users, and practitioners carrying out research and development in novel systems based on geo-spatial data and knowledge, and fostering interdisciplinary discussions and research in all aspects of geographic information systems. The conference provides a forum for original research contributions covering all conceptual, design, and implementation aspects of GIS ranging from applications, user interface considerations, and visualization down to storage management and indexing issues. This year's conference builds on last year's conference great success and on being the premier annual conference of the newly formed ACM Special Interest Group on Spatial Information (ACM SIGSPATIAL). Researchers, students, and practitioners are invited to submit their contributions to this year's ACM GIS. ============ Invited Speakers ============ 1. Wednesday, November 5, 2008: Jack Dangermond, President of ESRI 2. Thursday, November 6, 2008: Vinton Cerf, Vice-President and Chief Internet Evangelist at Google and 2004 ACM Turing Award Winner TOPICS OF INTEREST Suggested topics include but are not limited to: * Cartography and Geodesy * Computational Geometry * Computer Vision Applications in GIS * Distributed, Parallel, and GPU algorithms for GIS * Earth Observation * Geographic Information Retrieval * Human Computer Interaction and Visualization * Image and Video Understanding * Location-based Services * Location Privacy, Data Sharing and Security * Performance Evaluation * Photogrammetry * Similarity Searching * Spatial Analysis and Integration * Spatial and Spatio-temporal Information Acquisition * Spatial Data Mining and Knowledge Discovery * Spatial Data Quality and Uncertainty * Spatial Data Structures and Algorithms * Spatial Data Warehousing, OLAP, and Decision Support * Spatial Information and Society * Spatial Modeling and Reasoning * Spatial Query Processing and Optimization * Spatio-temporal Data Handling * Spatio-temporal Sensor Networks * Spatio-temporal Stream Processing * Spatio-textual Searching * Standardization and Interoperability for GIS * Storage and Indexing * Systems, Architectures and Middleware for GIS * Traffic Telematics * Transportation * Urban and Environmental Planning * Visual Languages and Querying * Wireless, Web, and Real-time Applications PAPER FORMAT AND SUBMISSION Authors are invited to submit full, original, unpublished research papers that are not being considered for publication in any other forum. Manuscripts should be submitted in PDF format and formatted using the ACM camera-ready templates available at http://www.acm.org/sigs/pubs/proceed/template.html. Papers cannot exceed 10 pages in length. In addition to the regular full-length papers, the Program Committee may accept some as poster papers which may be requested to be shortened. All submitted papers will be refereed for quality, originality, and relevance by the Program Committee. Submissions will be made electronically and online only at: http://acmgis08.cs.umn.edu. Ph.D. DISSERTATION SHOWCASE Ph.D. students are encouraged to submit their Ph.D. research contributions and work-in-progress. Submissions cannot exceed 6 pages -- Add (Ph.D. Showcase) to the title. Student authors of the accepted papers will be given an opportunity to present a summary of their research at the conference. Successful Ph.D. showcase papers will appear in the ACM SIGSPATIAL Newsletter. DEMONSTRATIONS Authors are invited to submit Demo papers that describe their original demonstrations to be presented during the conference. Demo paper submissions cannot exceed 2 pages -- Add (Demo Paper) to the title. They will appear in the Conference Proceedings. IMPORTANT DATES (Research, Ph.D, and Demo papers) Abstract Submission: Jun. 17, 2008 Full Paper Submission: Jun. 24, 2008 Notification of Acceptance: Aug. 11, 2008 Camera Ready Copy: Sept. 1, 2008 Conference Date: November 5-7, 2008 ORGANIZATION COMMITTEE General Chairs: Hanan Samet, University of Maryland Cyrus Shahabi, University of Southern California Ouri Wolfson, University of Illinois at Chicago Program Chair: Walid G. Aref, Purdue University Program Co-chairs: Mohamed Mokbel, University of Minnesota Markus Schneider, University of Florida Local Arrangements: Erik Hoel, ESRI, USA Pusheng Zhang, Microsoft Corporation, USA Treasurer: Yan Huang, University of North Texas Publicity Chair: Chang-Tien Lu, Virginia Tech Proceedings Chair: Alejandro Pauly, University of Florida Poster Chair: Jagan Sankaranarayanan, University of Maryland Program Committee: Ghaleb M Abdulla, Lawrence Livermore Lab, USA Houman Alborzi, Google, USA Mohamed Ali, Microsoft Corporation, USA Luc Anselin, Arizona State University, USA Lars Arge, MADALGO - University of Aarhus, Denmark Elisa Bertino, Purdue University, USA Michela Bertolotto, University College Dublin, Ireland Budhendra Bhaduri, Oak Ridge National Laboratory, USA Omar Boucelma, Aix-Marseille University, France Frantisek Brabec, Cooper Notification, USA Thomas Brinkhoff, Oldenburg University of Applied Sciences, Germany Amitabh Chaudhary, University of Notre Dame, USA Sanjay Chawla, University of Sydney, Australia Reynold Cheng, Hong Kong Polytechnic University, China Christophe Claramunt, Naval Academy Research Institute, France Eliseo Clementini, University of L'Aquila, Italy Anthony G. Cohn, Univ. of Leeds, UK Isabel F. Cruz, University of Illinois at Chicago, USA Andrew Danner, Swarthmore College, USA Gordon Deecker, Statistics Canada, Canada Leila De Floriani, University of Genova, Italy Matt Duckham, University of Melbourne, Australia Alon Efrat, University of Arizona, USA Claudio Esperanca, COPPE/Universidade Federal do Rio de Janeiro, Brazil Peter Fisher, University of Leicester, UK A. Stewart Fotheringham, National University of Ireland, Maynooth, IRELAND Andrew U. Frank, TU Wien, Austria Randolph Franklin, Rensselaer Polytechnic Institute, USA Michael Gertz, University of California at Davis, USA Michael F. Goodchild, University of California, Santa Barbara, USA Michael T. Goodrich, University of California, Irvine, USA Le Gruenwald, University of Oklahoma and National Science Foundation, USA Ralf Hartmut Guting, Fernuniversitat Hagen, Germany Klaus Hinrichs, Westfaelische Wilhelms-Universitaet, Germany Stephen Hirtle, University of Pittsburgh, USA Erik Hoel, ESRI, USA Yan Huang, University of North Texas, USA Ihab F. Ilyas, University of Waterloo, Canada Edwin Jacox, National Institutes of Health, USA Christian S. Jensen, Aalborg University, Denmark Christopher Jones, Cardiff University, UK Joseph M. Joy, Microsoft Research India, India Michael Kallay, Microsoft Corporation, USA Ibrahim Kamel, University of Sharjah, UAE Craig Knoblock, University of Southern California, USA Marc van Kreveld, Utrecht University, the Netherlands Robert Laurini, INSA-Lyon, France Franz Leberl, Graz University of Technology, Austria Scott Leutenegger, University of Denver, USA Ki-Joune Li, Pusan National University, South Korea Xuan Liu, IBM T.J. Watson Research Center, USA Mario A. Lopez, University of Denver, USA Chang-Tien Lu, Virginia Tech, USA Nikos Mamoulis, University of Hong Kong, China Duane F. Marble, Ohio State University/Oregon State University, USA Claudia Bauzer Medeiros, University of Campinas (UNICAMP), Brazil Richard Muntz, UCLA, USA Bradford G. Nickerson, University of New Brunswick, Canada Silvia Nittel, University of Maine, USA Eyal Ofek, Microsoft Reseearch, USA Beng Chin Ooi, National University of Singapore, Singapore Dimitris Papadias, Hong Kong University of Science and Technology, Hong Kong Jignesh M. Patel, University of Michigan, USA Alejandro Pauly, Sage Software, USA Dieter Pfoser, RA Computer Technology Institute, Greece Sunil Prabhakar, Purdue University, USA Philippe Rigaux, Universite Paris-Dauphine, France Peter I. Scheuermann, Northwestern University, USA Timos Sellis, IMIS-R.C. Athena and NTUA, Greece Sylvie Servigne, LIRIS INSA Lyon, France Mohamed A. Sharaf, University of Toronto, Canada Mehdi Sharifzadeh, Google, USA Jayant Sharma, Oracle USA Inc., USA Shashi Shekhar, University of Minnesota, USA Emmanuel Stefanakis, Harokopio University of Athens, Greece Alfred Stein, ITC, The Netherlands Roberto Tamassia, Brown University, USA Egemen Tanin, University of Melbourne, Australia Kentaro Toyama, Microsoft Research, India Agma Traina, University of Sao Paulo, Brazil Goce Trajcevski, Northwestern University, USA E. Lynn Usery, U.S. Geological Survey, USA Agnes Voisard, Fraunhofer ISST and FU Berlin, Germany Elizabeth Wentz, Arizona State University, USA Peter Widmayer, ETH Zentrum, Switzerland Stephan Winter, University of Melbourne, Australia Ouri Wolfson, University of Illinois, Chicago, USA Michael Worboys, University of Maine, USA Xiaopeng Xiong, IBM Silicon Valley Lab, USA May Yuan, University of Oklahoma, USA Donghui Zhang, Northeastern University, USA Pusheng Zhang, Microsoft Corporation, USA Roger Zimmermann, National University of Singapore, Singapore Conference Webmaster: Justin Levandoski, University of Minnesota, USA --sm4nu43k4a2Rpi4c Content-Type: text/plain; charset=us-ascii Content-Disposition: attachment; filename="ACMGIS2008_CFP.txt" We will accept submissions until June 24 9pm PST even if the abstract was not submitted by the June 17 deadline as we are aware of the time pressures due to simultaneous submission deadlines for other conferences. With best regards, ACM-GIS 08 Organization Committee --------------------------------------------- 16th ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems (ACM GIS 2008) Call for Papers --------------------------------------------- November 5-7, 2008 Irvine, CA, USA http://acmgis08.cs.umn.edu Corporate Sponsorship by ESRI Microsoft Oak Ridge National Laboratory The ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems 2008 (ACM GIS 2008) is the sixteenth event of a series of symposia and workshops that began in 1993 with the aim of bringing together researchers, developers, users, and practitioners carrying out research and development in novel systems based on geo-spatial data and knowledge, and fostering interdisciplinary discussions and research in all aspects of geographic information systems. The conference provides a forum for original research contributions covering all conceptual, design, and implementation aspects of GIS ranging from applications, user interface considerations, and visualization down to storage management and indexing issues. This year's conference builds on last year's conference great success and on being the premier annual conference of the newly formed ACM Special Interest Group on Spatial Information (ACM SIGSPATIAL). Researchers, students, and practitioners are invited to submit their contributions to this year's ACM GIS. ============ Invited Speakers ============ 1. Wednesday, November 5, 2008: Jack Dangermond, President of ESRI 2. Thursday, November 6, 2008: Vinton Cerf, Vice-President and Chief Internet Evangelist at Google and 2004 ACM Turing Award Winner TOPICS OF INTEREST Suggested topics include but are not limited to: * Cartography and Geodesy * Computational Geometry * Computer Vision Applications in GIS * Distributed, Parallel, and GPU algorithms for GIS * Earth Observation * Geographic Information Retrieval * Human Computer Interaction and Visualization * Image and Video Understanding * Location-based Services * Location Privacy, Data Sharing and Security * Performance Evaluation * Photogrammetry * Similarity Searching * Spatial Analysis and Integration * Spatial and Spatio-temporal Information Acquisition * Spatial Data Mining and Knowledge Discovery * Spatial Data Quality and Uncertainty * Spatial Data Structures and Algorithms * Spatial Data Warehousing, OLAP, and Decision Support * Spatial Information and Society * Spatial Modeling and Reasoning * Spatial Query Processing and Optimization * Spatio-temporal Data Handling * Spatio-temporal Sensor Networks * Spatio-temporal Stream Processing * Spatio-textual Searching * Standardization and Interoperability for GIS * Storage and Indexing * Systems, Architectures and Middleware for GIS * Traffic Telematics * Transportation * Urban and Environmental Planning * Visual Languages and Querying * Wireless, Web, and Real-time Applications PAPER FORMAT AND SUBMISSION Authors are invited to submit full, original, unpublished research papers that are not being considered for publication in any other forum. Manuscripts should be submitted in PDF format and formatted using the ACM camera-ready templates available at http://www.acm.org/sigs/pubs/proceed/template.html. Papers cannot exceed 10 pages in length. In addition to the regular full-length papers, the Program Committee may accept some as poster papers which may be requested to be shortened. All submitted papers will be refereed for quality, originality, and relevance by the Program Committee. Submissions will be made electronically and online only at: http://acmgis08.cs.umn.edu. Ph.D. DISSERTATION SHOWCASE Ph.D. students are encouraged to submit their Ph.D. research contributions and work-in-progress. Submissions cannot exceed 6 pages -- Add (Ph.D. Showcase) to the title. Student authors of the accepted papers will be given an opportunity to present a summary of their research at the conference. Successful Ph.D. showcase papers will appear in the ACM SIGSPATIAL Newsletter. DEMONSTRATIONS Authors are invited to submit Demo papers that describe their original demonstrations to be presented during the conference. Demo paper submissions cannot exceed 2 pages -- Add (Demo Paper) to the title. They will appear in the Conference Proceedings. IMPORTANT DATES (Research, Ph.D, and Demo papers) Abstract Submission: Jun. 17, 2008 Full Paper Submission: Jun. 24, 2008 Notification of Acceptance: Aug. 11, 2008 Camera Ready Copy: Sept. 1, 2008 Conference Date: November 5-7, 2008 ORGANIZATION COMMITTEE General Chairs: Hanan Samet, University of Maryland Cyrus Shahabi, University of Southern California Ouri Wolfson, University of Illinois at Chicago Program Chair: Walid G. Aref, Purdue University Program Co-chairs: Mohamed Mokbel, University of Minnesota Markus Schneider, University of Florida Local Arrangements: Erik Hoel, ESRI, USA Pusheng Zhang, Microsoft Corporation, USA Treasurer: Yan Huang, University of North Texas Publicity Chair: Chang-Tien Lu, Virginia Tech Proceedings Chair: Alejandro Pauly, University of Florida Poster Chair: Jagan Sankaranarayanan, University of Maryland Program Committee: Ghaleb M Abdulla, Lawrence Livermore Lab, USA Houman Alborzi, Google, USA Mohamed Ali, Microsoft Corporation, USA Luc Anselin, Arizona State University, USA Lars Arge, MADALGO - University of Aarhus, Denmark Elisa Bertino, Purdue University, USA Michela Bertolotto, University College Dublin, Ireland Budhendra Bhaduri, Oak Ridge National Laboratory, USA Omar Boucelma, Aix-Marseille University, France Frantisek Brabec, Cooper Notification, USA Thomas Brinkhoff, Oldenburg University of Applied Sciences, Germany Amitabh Chaudhary, University of Notre Dame, USA Sanjay Chawla, University of Sydney, Australia Reynold Cheng, Hong Kong Polytechnic University, China Christophe Claramunt, Naval Academy Research Institute, France Eliseo Clementini, University of L'Aquila, Italy Anthony G. Cohn, Univ. of Leeds, UK Isabel F. Cruz, University of Illinois at Chicago, USA Andrew Danner, Swarthmore College, USA Gordon Deecker, Statistics Canada, Canada Leila De Floriani, University of Genova, Italy Matt Duckham, University of Melbourne, Australia Alon Efrat, University of Arizona, USA Claudio Esperanca, COPPE/Universidade Federal do Rio de Janeiro, Brazil Peter Fisher, University of Leicester, UK A. Stewart Fotheringham, National University of Ireland, Maynooth, IRELAND Andrew U. Frank, TU Wien, Austria Randolph Franklin, Rensselaer Polytechnic Institute, USA Michael Gertz, University of California at Davis, USA Michael F. Goodchild, University of California, Santa Barbara, USA Michael T. Goodrich, University of California, Irvine, USA Le Gruenwald, University of Oklahoma and National Science Foundation, USA Ralf Hartmut Guting, Fernuniversitat Hagen, Germany Klaus Hinrichs, Westfaelische Wilhelms-Universitaet, Germany Stephen Hirtle, University of Pittsburgh, USA Erik Hoel, ESRI, USA Yan Huang, University of North Texas, USA Ihab F. Ilyas, University of Waterloo, Canada Edwin Jacox, National Institutes of Health, USA Christian S. Jensen, Aalborg University, Denmark Christopher Jones, Cardiff University, UK Joseph M. Joy, Microsoft Research India, India Michael Kallay, Microsoft Corporation, USA Ibrahim Kamel, University of Sharjah, UAE Craig Knoblock, University of Southern California, USA Marc van Kreveld, Utrecht University, the Netherlands Robert Laurini, INSA-Lyon, France Franz Leberl, Graz University of Technology, Austria Scott Leutenegger, University of Denver, USA Ki-Joune Li, Pusan National University, South Korea Xuan Liu, IBM T.J. Watson Research Center, USA Mario A. Lopez, University of Denver, USA Chang-Tien Lu, Virginia Tech, USA Nikos Mamoulis, University of Hong Kong, China Duane F. Marble, Ohio State University/Oregon State University, USA Claudia Bauzer Medeiros, University of Campinas (UNICAMP), Brazil Richard Muntz, UCLA, USA Bradford G. Nickerson, University of New Brunswick, Canada Silvia Nittel, University of Maine, USA Eyal Ofek, Microsoft Reseearch, USA Beng Chin Ooi, National University of Singapore, Singapore Dimitris Papadias, Hong Kong University of Science and Technology, Hong Kong Jignesh M. Patel, University of Michigan, USA Alejandro Pauly, Sage Software, USA Dieter Pfoser, RA Computer Technology Institute, Greece Sunil Prabhakar, Purdue University, USA Philippe Rigaux, Universite Paris-Dauphine, France Peter I. Scheuermann, Northwestern University, USA Timos Sellis, IMIS-R.C. Athena and NTUA, Greece Sylvie Servigne, LIRIS INSA Lyon, France Mohamed A. Sharaf, University of Toronto, Canada Mehdi Sharifzadeh, Google, USA Jayant Sharma, Oracle USA Inc., USA Shashi Shekhar, University of Minnesota, USA Emmanuel Stefanakis, Harokopio University of Athens, Greece Alfred Stein, ITC, The Netherlands Roberto Tamassia, Brown University, USA Egemen Tanin, University of Melbourne, Australia Kentaro Toyama, Microsoft Research, India Agma Traina, University of Sao Paulo, Brazil Goce Trajcevski, Northwestern University, USA E. Lynn Usery, U.S. Geological Survey, USA Agnes Voisard, Fraunhofer ISST and FU Berlin, Germany Elizabeth Wentz, Arizona State University, USA Peter Widmayer, ETH Zentrum, Switzerland Stephan Winter, University of Melbourne, Australia Ouri Wolfson, University of Illinois, Chicago, USA Michael Worboys, University of Maine, USA Xiaopeng Xiong, IBM Silicon Valley Lab, USA May Yuan, University of Oklahoma, USA Donghui Zhang, Northeastern University, USA Pusheng Zhang, Microsoft Corporation, USA Roger Zimmermann, National University of Singapore, Singapore Conference Webmaster: Justin Levandoski, University of Minnesota, USA --sm4nu43k4a2Rpi4c--