Pedro Latorre Carmona
2011-Sep-16 13:02 UTC
[R] Call for Papers Special Sessions ICPRAM 2012
Dear R-members, My name is Pedro Latorre Carmona, program co-chair of the 2012 "International Conference on Pattern Recognition Applications and Methods" (ICPRAM 2012) http://www.icpram.org Please let me send you below the text version of the "Open Call for papers for Special Sessions" in the framework of this conference (deadline: October 24, 2011), which contains information about each Special Session, including the title, (co)chair(s), summary, etc. I would like to let you all know that papers accepted in a Special Session have the same "rights" and follow the same rules as those of "regular" type, i. e., they will appear in the conference proceedings, will be elegible for the conference best paper prize and could be selected to be part of the two Special Issues that ICPRAM 2012 has. Thanks! Pedro Latorre Carmona. ********************************************************************* 2012 International Conference on Pattern Recognition Applications and Methods (ICPRAM2012) CALL FOR PAPERS SPECIAL SESSIONS February 6-8, 2012 Vilamoura, Algarve, Portugal http://www.icpram.org ********************************************************************* Let me kindly inform you that there is an open call for papers, until October 24, for the following Special Sessions: - Algebraic Geometry in Machine Learning Chair: - Jason Morton, Pennsylvania State University, U.S.A. http://icpram.org/AGML.asp - Shape Analysis and Deformable Modeling Chair: - Xianghua Xie, Swansea University, U.K. http://icpram.org/SADM.asp - Machine Learning for Sequences Chair: - Thierry Artieres, Universite Pierre et Marie Curie (UPMC), France http://icpram.org/MLS.asp - Pattern Recognition Applications in Remotely Sensed Hyperspectral Image Analysis Chair: - Antonio Plaza, University of Extremadura, Spain http://icpram.org/PRARSHIA.asp - High-Dimensional Inference from Limited Data: Sparsity, Parsimony and Adaptivity Co-chairs: - Jarvis Haupt, University of Minnesota, U.S.A. - Rui M. Castro, Eindhoven University of Technology, The Netherlands http://icpram.org/HDILD.asp - Interactive and Adaptive Techniques for Machine Learning, Recognition and Perception Co-chairs: - Luisa Mico, University of Alicante, Spain - Francesc J. Ferri, University of Valencia, Spain http://icpram.org/IATMLRP.asp These special sessions are part of the International Conference on Pattern Recognition Applications and Methods (ICPRAM 2012 - http://www.icpram.org), which is sponsored by the Institute for Systems and Technologies of Information, Control and Communication (INSTICC) in cooperation with the Association for the Advancement of Artificial Intelligence (AAAI) and Pattern Analysis, Statistical Modelling and Computational Learning (PASCAL2), and technically co- sponsored by IEEE Signal Processing Society, Machine Learning for Signal Processing (MLSP) Technical Committee of IEEE, AERFAI (Asociacion Espanola de Reconocimiento de Formas y Analisis de Imagenes) and APRP (Associacao Portuguesa de Reconhecimento de Padroes). INSTICC is member of the Workflow Management Coalition (WfMC). ICPRAM will be held in Vilamoura, Algarve, Portugal next year, on February 6-8, 2012. IMPORTANT DATES: Paper Submission: October 24, 2011 Authors Notification: November 11, 2011 Final Paper Submission and Registration: November 25, 2011 1) Algebraic Geometry in Machine Learning Chair: - Jason Morton, Pennsylvania State University, U.S.A. Scope The philosophy of algebraic statistics is that for many models arising in statistics and machine learning, the space of parameters or probability distributions modeled has the structure of an algebraic variety. This observation has led to new precise characterizations of popular models, new insights into representational power, and new approaches to studying learning performance (e.g. in the neighborhood of singularities, or proving the existence of a MLE). For many classes of machine learning models, theoretical understanding has lagged behind experimental success. In many cases, representational power and performance characteristics are poorly understood, and even proponents are unsure why they work. Understanding the algebraic, polyhedral, and tropical geometry of graphical models and other popular models has provided a new set of tools enabling researchers to settle several open questions about their capabilities, and progress on this front is expected to continue. Topics for the special session may include the algebraic geometry and representation theory of machine learning models, the polyhedral and tropical geometry of the space of functions they can compute, geometric characterizations of architecture choice and asymptotic performance, and related topics. 2) Shape Analysis and Deformable Modeling Chair: - Xianghua Xie, Swansea University, U.K. Scope and Topics of interest: Deformable modeling is a powerful tool in extracting object shape, structure, and motion patterns. It is particularly suitable for non- rigid objects and has been widely used to measure and model, for instance, biological shape and shape evolution in medical data where shape extraction and analysis have shown enormous promise in understanding biological function and disease progression. Its application has a wide reach in all areas of computer vision. This special session is devoted to the discussion of recent advances in shape analysis and deformable modeling, in particular, for non rigid objects. Contributions presenting recent work on shape representation, extraction, learning, classification and dynamic modeling are particularly welcome. The technical topics include, but are not limited to: * Shape Representation and Learning * Shape Matching, Classification, and Registration * Active Shape Model and Active Appearance Model * Active Contour and Surface Model * Partial Differential Equations * Level Set Methods * Variational Methods * Shape Based Motion Analysis * Applications 3) Machine Learning for Sequences Chair: - Thierry Artieres, Universite Pierre et Marie Curie (UPMC), France Scope Sequence classification and sequence labeling is at the heart of many pattern recognition and data mining tasks, in fields such as speech and handwriting recognition, bioinformatics, etc. Beyond well known Hidden Markov Models (HMMs), which have been widely used for modeling sequences of patterns, a number of alternative methods and models have been proposed in the recent years. These approaches include for instance discriminative training (e.g. large margin) of Hidden Markov Models, on-line learning of such models, discriminative models based on Conditional Random Fields, etc. This special session aims at sharing new ideas and works on models and approaches for improving over state of the art methods for signal and sequence classification and labeling tasks. 4) Pattern Recognition Applications in Remotely Sensed Hyperspectral Image Analysis Chair: - Antonio Plaza, University of Extremadura, Spain Scope Hyperspectral imaging is concerned with the measurement, analysis and interpretation of spectra acquired from a given scene by an airborne or satellite imaging spectrometer providing information in narrow wavelengths. The special characteristics of remotely sensed hyperspectral images pose different processing problems which must be necessarily tackled under specific mathematical formalisms, such as classification and segmentation, or spectral unmixing. For instance, several machine learning techniques are now actively being applied to extract relevant information (in supervised, semi-supervised or unsupervised fashion) from remotely sensed hyperspectral data. This special session aims at providing an overview of recent advances in the use of pattern recognition and machine learning techniques for hyperspectral data interpretation, with particular attention to specific aspects of hyperspectral image analysis such as the presence of mixed pixels or the high computational requirements introduced by the processing of data sets provided by the latest generation of imaging instruments. 5) High-Dimensional Inference from Limited Data: Sparsity, Parsimony and Adaptivity Co-chairs: - Jarvis Haupt, University of Minnesota, U.S.A. - Rui M. Castro, Eindhoven University of Technology, The Netherlands Scope and Topics In recent years the signal processing and statistics communities have witnessed a flurry of research activity aimed at the development of new non- traditional sampling, sensing and inference methods, fueled by the growing need to understand highly complex processes from limited amounts of data. For example, recent breakthrough results in compressive sampling have shed new light on our understanding of sampling and reconstruction, leading to revolutionary new technologies in a variety of application domains, including RF communications and surveillance, imaging, and genomics. The enabling feature of this new wave of research is the notion that, in many practical applications, high-dimensional objects of interest possess some form of parsimonious or low-dimensional representation. Identifying these representations and designing strategies for effectively exploiting them comprises the central unifying theme of many active research directions, including compressive and adaptive sensing, matrix completion, and dictionary learning. This session is devoted to the presentation and discussion of recent advances in these broadly defined areas. Namely, we invite submissions of high quality contributions in theory, methods, and/or applications in the general area of high-dimensional inference from limited data. Specific topics of interest for this session include (but are not limited to): * Compressed Sensing * Active Learning and Adaptive Sensing * Sequential Experimental Design * Dictionary Learning * Optimal Information Gathering * Matrix Completion Approaches 6) Interactive and Adaptive Techniques for Machine Learning, Recognition and Perception Co-chairs: - Luisa Mico, University of Alicante, Spain - Francesc J. Ferri, University of Valencia, Spain Scope Human interaction is a very active field that is receiving increasing attention in the pattern recognition and machine learning community. In this new paradigm the systems do not perform only in an automatic way but also in an interactive fashion. The main reason for this is that automatic systems are not free from errors and, being high quality results the principal objective, a kind of supervision is needed. On the other hand, as time goes by, intrinsic interactive applications are more important and frequent.The use of the interactive paradigm in Pattern Recognition opens the door to new challenges in order to make convenient use of a number of emerging methods for supporting learning and data analysis in dynamics contexts: active and adaptive learning, hypothesis generation, data managed techniques, combining classifier techniques, probabilistic learning, interactive transduction, etc. Moreover, another challenge is the application of these ideas to interesting real-word tasks, as human behavior analysis, text transcription, content-based image retrieval, handwriting recognition, surveillance, biometric systems and many others. This special session welcomes articles on advances on all the aforementioned hot topics.