2010 IEEE International Conference on Acoustics, Speech, and Signal Processing

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2010 IEEE International Conference on Acoustics, Speech, and Signal Processing 2010 IEEE International Conference on Acoustics, Speech, and Signal Processing Proceedings March 14–19, 2010 Sheraton Dallas Hotel Dallas, Texas, U.S.A. Sponsored by The Institute of Electrical and Electronics Engineers Signal Processing Society IEEE Catalog Number: CFP10ICA ISBN: 978-1-4244-4296-6 Copyright ©2010 by The Institute of Electrical and Electronics Engineers, Inc. All rights reserved. Copyright and Reprint Permission: Abstracting is permitted with credit to the source. Libraries are permitted to photocopy beyond the limit of U.S. copyright law for private use of patrons those articles in this volume that carry a code at the bottom of the first page, provided the per-copy fee indicated in the code is paid through the Copyright Clearance Center, 222 Rosewood Drive, Danvers, MA 01923. For other copying, reprint or republication permission, write to IEEE Copyrights Manager, IEEE Operations Center, 445 Hoes Lane, P.O. Box 1331, Piscataway, NJ 08855-1331. All rights reserved. Copyright ©2010 by the Institute of Electrical and Electronics Engineers, Inc. The papers in this book comprise the proceedings of the meeting mentioned on the cover and title page. They reflect the authors’ opinions and, in the interests of timely dissemination, are published as presented and without change. Their inclusion in this publication does not necessarily constitute endorsement by the editors, the IEEE Signal Processing Society, or the Institute of Electrical and Electronics Engineers, Inc. IEEE is committed to the principle that all persons shall have equal access to programs, facilities, services, and employment without regard to personal characteristics not related to ability, performance, or qualifications as determined by IEEE policy and/or applicable laws. To find more information about the IEEE policy visit www.ieee.org. Any person who believes that he or she has been the victim of illegal discrimination or harassment should contact IEEE Staff Director - Human Resources, at [email protected] or +1 732 465 6434. The mailing address is IEEE Human Resources, 445 Hoes Lane, Piscataway, NJ, USA. IEEE Catalog Number: CFP10ICA ISBN: 978-1-4244-4296-6 ISSN: 1520-6149 Assembled by Conference Management Services, Inc. ii Technical Program commiTTee Audio and Electroacoustics Roxana Saint-Nom Walter Kellermann Buenos Aires Institute of Technology University of Erlangen-Nuremberg Signal Processing for Communications and Bio Imaging and Signal Processing Networking Jean-Christophe Olivo-Marin Geert Leus Institut Pasteur Delft University of Technology Zhi-Quan (Tom) Luo Image, Video, and Multidimensional Signal University of Minnesota Processing Gaurav Sharma Signal Processing Theory and Methods University of Rochester Ali H. Sayed John Apostolopoulos University of California, Los Angeles Hewlett-Packard Laboratories Abdelhak Zoubir Darmstadt University of Technology Design and Implementation of Signal Processing Systems Speech Processing Wonyong Sung Steve Young Seoul National University Cambridge University Shuvra S. Bhattacharyya Spoken Language Processing University of Maryland Steve Young Industry Technology Track Cambridge University Jon McElvain Digital Imaging Systems Area Chairs Information Forensics and Security Image, Video, and Multimedia Signal Processing Ed Delp Ricardo De Queiroz Purdue University Universidade de Brasilia James Fowler Machine Learning for Signal Processing Mississippi State University Kostas Diamantaras Pascal Frossard TEI of Thessaloniki EPFL Tülay Adali Lina Karam University of Maryland, Baltimore County Arizona State University Multimedia Signal Processing Jiebo Luo Anthony Vetro Eastman Kodak Company Mitsubishi Electric Research Labs Peyman Milanfar Philip A. Chou University of California, Santa Cruz Microsoft Research Carlo Regazzoni University of Genova Sensor Array and Multichannel Signal Processing Speech Processing Kristine Bell Thomas Hain George Mason University University of Sheffield Mats Viberg Timothy J. Hazen Chalmers University of Technology MIT Lincoln Laboratory Brian Kingsbury Signal Processing Education IBM T. J. Watson Research Center v Spoken Language Processing Paolo Banelli, University of Perugia Pascale Fung Serene Banerjee, HP Research Labs, India Hong Kong University of Science and Forrest Sheng Bao, Texas Tech University Farhan Baqai, Technology Sergio Barbarossa, University of Rome - La Sapienza Reviewers Jon Barker, University of Sheffield Kenneth Barner, University of Delaware Til Aach, RWTH Aachen University Mauro Barni, University of Sienna Alberto Abad, INESC-ID Portugal Claude Barras, LIMSI-CNRS & University Paris-Sud Thushara Abhayapala, Australian National University Erhan Bas, Northeastern University Charith Abhayaratne, University of Sheffield Anton Batliner, Friedrich-Alexander-Universität Erlangen- Patrice Abry, Ecole Normale Supérieure de Lyon - CNRS Nürnberg Burak Acar, Bogazici University Aziz Umit Batur, Texas Instruments Alex Acero, Microsoft Research Christian Bauckhage, Fraunhofer IAIS Tülay Adali, University of Maryland, Baltimore County Genevieve Baudoin, ESIEE Paris Gilles Adda, LIMSI/CNRS Azeddine Beghdadi, Universite Paris 13 Martine Adda-Decker, LIMSI Ali Belabbas, Harvard University Chowdary Adsumilli, Citrix Online Juan Pablo Bello, New York University Ashish Aggarwal, SNAP Networks Abdessamad Ben Hamza, Concordia University Masato Akagi, Japan Advanced Institute of Science and Amel Benazza-Benyahia, SUP’COM, Unité de Recherche en Technology Imagerie Satellitaire et ses Applications (URISA) Ozgu Alay, Polytechnic Institute of NYU Mats Bengtsson, KTH, Sweden Alberto Albiol, Universidad Politecnica Valencia Jenny Benois-Pineau, University Bordeaux 1/LABRI Felix Albu, Politehnica University of Bucharest Visar Berisha, Naofal Al-Dhahir, University of Texas at Dallas Kay Berkling, Inline Internet Services GmbH Paavo Alku, Helsinki University of Technology Riccardo Bernardini, University of Udine Mohammed Al-Mualla, Khalifa University of Science, Laurent Besacier, Lab LIG / UJF Technology and Research Olivier Besson, Institut Superieur Aeronautique Espace (ISAE) Yucel Altunbasak, Georgia Institute of Technology Vijayakumar Bhagavatula, Carnegie Mellon University Abeer Alwan, UCLA Shuvra S. Bhattacharyya, University of Maryland Alon Amar, Delft University of Technology Ali Bilgin, University of Arizona David Anderson, Georgia Institute of Technology Alan W Black, Carnegie Mellon University Walter Andrews, BBN Technologies Laure Blanc-Feraud, CNRS Dimitri Androutsos, Ryerson University Nadya T. Bliss, MIT Lincoln Laboratory Pongtep Angkititrakul, TOYOTA Central R&D Labs Mats Blomberg, Kungliga Tekniska Högskolan (KTH) Xavier Anguera, Telefonica Research Jeffrey Bloom, Dialogic Media Labs Rashid Ansari, University of Illinois at Chicago Thierry Blu, Chinese University of Hong Kong Marc Antonini, University of Nice-Sophia Antipolis and CNRS Rick Blum, Lehigh University John Apostolopoulos, Hewlett-Packard Laboratories Enrico Bocchieri, AT&T Labs - Research Takayuki ARAI, Sophia University Holger Boche, Heinrich-Hertz-Institut for Telecommunications Shoko Araki, NTT Communication Science Laboratories Jean-francois Bonastre, University of Avignon Jerónimo Arenas-García, Universidad Carlos III de Madrid Charles Boncelet, University of Delaware Antonis Argyros, FORTH Hynek Boril, The University of Texas at Dallas John Arnold, University of New South Wales Marina Bosi, Stanford University Levent Arslan, Bogazici University Martin Bouchard, University of Ottawa Amir Asif, York University Bruno Bougard, Septentrio Satellite Navigation Jaakko Astola, Tampere University of Technology Herve Boulard, Idiap Research Institute Bishnu Atal, University of Washington Gilles Boulianne, Centre de recherche informatique de Hasan Ates, Isik University Montréal Les Atlas, Emmanuel Boutillon, Universite de Bretagne Sud Oscar C. Au, Hong Kong University of Science and Lou Boves, Radboud University Nijmegen Technology Alan Bovik, The University of Texas at Austin Yannis Avrithis, National Technical University of Athens Karlheinz Brandenburg, Fraunhofer IDMT & Technische Michiel Bacchiani, Google Inc. Universität Ilmenau Wael Badawy, IntelliView Technologies Inc. Michael Brandstein, MIT Lincoln Laboratory Xiao Bai, Beihang University Catherine Breslin, Toshiba Research Gerard Bailly, GIPSA-Lab John Bridle, Novauris Technologies Ltd Ivan Bajic, Simon Fraser University Dana H. Brooks, Northeastern University Brendan Baker, Queensland University of Technology Niko Brummer, Agnitio vi Madhukar Budagavi, Henry Chu, University of Louisiana at Lafayette Andreas Burg, ETH Zurich Stephen Chu, IBM T. J. Watson Research Center Lukas Burget, Brno University of Technology Wei Chu, University of California, Los Angeles Ian Burnett, RMIT University Pei-Jung Chung, University of Edinburgh Ozgun Y. Bursalioglu, University of Southern California Philippe Ciblat, ENST Maja Bystrom, Styrka Consulting M. Reha Civanlar, Ozyegin University Joseph Camp, Southern Methodist University Michael Clausen, University of Bonn Joseph Campbell, MIT Lincoln Laboratory William Clem Karl, Boston University William Campbell, MIT Lincoln Laboratory Douglas Cochran, Arizona State University Gustavo Camps-Valls, Universitat de València Israel Cohen, Technion - Israel Institute of Technology Olivier Cappé, TELECOM ParisTech and CNRS Pierre Comon, CNRS - University of Nice Michael Carey, Universitiy of Birmingham Nicola Conci, University of Trento Alberto Carini, University of Urbino Alistair Conkie, AT&T Labs - Research
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