Pagliari, Roberto Pala, Pietro Panaget, Franck Parlangeli, Gianfranco Pascoal, Antonio Pastor, Dominique Paulus, Caroline Payan, Frédéric Pearson,
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1 P Pagliari, Roberto Pala, Pietro Panaget, Franck Parlangeli, Gianfranco Pascoal, Antonio Pastor, Dominique Paulus, Caroline Payan, Frédéric Pearson, Tom Pesquet, Jean Christophe Petit, Julien Petrausch, S. Petropoulos, Dimitris Phoong, See May Pikuz, Sergey Pinyero, Gema Next
2 P Pitas, Ioannis Plass, Simon Pop, Sorin Postaire, Jack Gérard Pouliquen, Mathieu Poulton, Daniel Prev
3 Roberto Pagliari University of Parma, Italy CLUSTERED DECENTRALIZED BINARY DETECTION: AN INFORMATION THEORETIC APPROACH (Abstract)
4 Pietro Pala Dipartimento Sistemi e Informatica, Università Degli Studi di Firenze, Italy QUERY BASED SAMPLING OF IMAGE LIBRARIES (Abstract)
5 Franck Panaget France Télécom, France FACE AND EYES DETECTION TO IMPROVE NATURAL HUMAN COMPUTER DIALOGUE (Abstract)
6 Gianfranco Parlangeli University of Lecce, Italy ON THRUSTER ALLOCATION, FAULT DETECTION AND ACCOMMODATION ISSUES FOR UNDERWATER ROBOTIC VEHICLES. (Abstract)
7 Antonio Pascoal ISR/IST, Portugal COORDINATED PATH FOLLOWING OF MULTIPLE UNDERACTUATED AUTONOMOUS VEHICLES WITH BIDIRECTIONAL COMMUNICATION CONSTRAINTS (Abstract)
8 Dominique Pastor Ecole Nationale Supérieure des Télécommunications de Bretagne, France SPEECH DENOISING IMPROVEMENT BY MUSICAL TONES SHAPE MODIFICATION (Abstract) ON THE APPLICATION OF RECENT RESULTS IN STATISTICAL DECISION AND ESTIMATION THEORY TO PERCEPTUAL FILTERING OF NOISY SPEECH SIGNALS (Abstract)
9 Caroline Paulus LIS, France MULTICOMPONENT SEISMIC DATA FILTERING BY MULTILINEAR METHODS (Abstract)
10 Frédéric Payan I3S, France MODEL BASED QUALITY CONTROL FOR THE COMPRESSION OF 3D MESH SEQUENCES WITH FIXED CONNECTIVITY (Abstract)
11 Tom Pearson Department of Agriculture Agricultural Research Service, USA USING IMPACT ACOUSTIC TIME FREQUENCY PATTERNS FOR DAMAGED WHEAT KERNEL SEPARATION (Abstract)
12 Jean Christophe Pesquet Universite de Marne la Vallée, France USING STEIN'S PRINCIPLE FOR MULTICHANNEL IMAGE DENOISING (Abstract)
13 Julien Petit Laboratoire de Neurophysiologie UMR 5543, France MODELING OF A RAT MUSCLE USING FRACTIONAL MULTIMODELS (Abstract)
14 S. Petrausch University Erlangen Nuremberg, Germany DIGITAL SOUND SYNTHESIS BY BLOCK BASED PHYSICAL MODELING (Abstract)
15 Dimitris Petropoulos University of Patras, Greece GEOELECTRIC FIELD SIGNAL INVESTIGATION USING MULTIDIMENSIONAL TECHNIQUES AND ITS POSSIBLE RELATION TO EARTHQUAKES IN WESTERN GREECE (Abstract)
16 See May Phoong National Taiwan University, Taiwan AN IMPROVED DESIGN OF DFT BANK TRANSCEIVERS FOR UNKNOWN CHANNELS (Abstract)
17 Sergey Pikuz Cornell University, USA ITERATIVE RESTORATION OF X RAY IMAGES TAKEN IN X PINCH RAYS (Abstract)
18 Gema Pinyero Universidad Politécnica de Valencia, Spain MULTICHANNEL ADAPTIVE AFFINE PROJECTION ALGORITHMS FOR LOCAL SOUND CONTROL (Abstract)
19 Ioannis Pitas Aristotle University of Thessaloniki, Greece A COMPARATIVE STUDY OF NMF, DNMF, AND LNMF ALGORITHMS APPLIED FOR FACE RECOGNITION (Abstract) IMPROVING CONCAVITY PERFORMANCE OF SNAKE ALGORITHMS (Abstract) AN EYE DETECTION ALGORITHM USING PIXEL TO EDGE INFORMATION (Abstract)
20 Simon Plass German Aerospace Center (DLR), Germany CAPACITY APPROXIMATIONS FOR UNCORRELATED MIMO CHANNELS USING RANDOM MATRIX METHODS (Abstract)
21 Sorin Pop LAPS UMR 5131 LASIS, France A TENSOR BASED DIFFUSION PROCESS TO ENHANCE FAULTS IN SEISMIC BLOCKS (Abstract)
22 Jack Gérard Postaire USTL Lille1, France CLUSTER ANALYSIS WITH CONTEXTUAL INFORMATION. APPLICATION TO TEXTURED MEDICAL IMAGE CLASSIFICATION (Abstract)
23 Mathieu Pouliquen GREYC, France FURTHER STABILITY AND CONVERGENCE ANALYSIS OF A SET MEMBERSHIP IDENTIFICATION (Abstract)
24 Daniel Poulton SUPELEC, France MODELLING THE IMPERFECTIONS OF ANALOG CIRCUITS USING SECOND ORDER STATISTICS (Abstract) ANTI ALIASING FILTER IN HYBRID FILTER BANKS (Abstract)
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