EUSIPCO 2014 papers announced

The program for EUSIPCO 2014 has been announced. Papers of interest for me include:
Comparison of Different Representations Based on Nonlinear Features for Music Genre Classification Athanasia Zlatintsi (National Technical University of Athens, Greece); Petros Maragos (National Technical University of Athens, Greece)
Fast Music Information Retrieval with Indirect Matching Takahiro Hayashi (Niigata University & Department of Information Engineering, Faculty of Engineering, Japan); Nobuaki Ishii (Niigata University, Japan); Masato Yamaguchi (Niigata University, Japan)
Audio Concept Classification with Hierarchical Deep Neural Networks Mirco Ravanelli (Fondazione Bruno Kessler (FBK), Italy); Benjamin Elizalde (ICSI Berkeley, USA); Karl Ni (Lawrence Livermore National Laboratory, USA); Gerald Friedland (International Computer Science Institute, USA)
Unsupervised Learning and Refinement of Rhythmic Patterns for Beat and Downbeat Tracking Florian Krebs (Johannes Kepler University, Linz, Austria); Filip Korzeniowski (Johannes Kepler University, Linz, Austria); Maarten Grachten (Austrian Research Institute for Artificial Intelligence, Austria); Gerhard Widmer (Johannes Kepler University Linz, Austria)
Speech-Music Discrimination: a Deep Learning Perspective Aggelos Pikrakis (University of Piraeus, Greece); Sergios Theodoridis (University of Athens, Greece)
Exploring Superframe Co-occurrence for Acoustic Event Recognition Huy Phan (University of Lübeck, Germany); Alfred Mertins (Institute for Signal and Image Processing, University of Luebeck, Germany)
Detecting Sound Objects in Audio Recordings Anurag Kumar (Carnegie Mellon University, USA); Rita Singh (Carnegie Mellon University, USA); Bhiksha Raj (Carnegie Mellon University, USA)
A Montage Approach to Sound Texture Synthesis Sean O’Leary (IRCAM, France); Axel Roebel (IRCAM, France)
A Compressible Template Protection Scheme for Face Recognition Based on Sparse Representation Yuichi Muraki (Tokyo Metropolitan University, Japan); Masakazu Furukawa (Tokyo Metropolitan University, Japan); Masaaki Fujiyoshi (Tokyo Metropolitan University, Japan); Yoshihide Tonomura (NTT, Japan); Hitoshi Kiya (Tokyo Metropolitan University, Japan)
Sparse Reconstruction of Facial Expressions with Localized Gabor Moments André Mourão (Universidade Nova Lisbon, Portugal); Pedro Borges (Universidade Nova de Lisboa, Portugal); Nuno Correia (Computer Science, Portugal); Joao Magalhaes (Universidade Nova Lisboa, Portugal)
Pornography Detection Using BossaNova Video Descriptor Carlos Caetano (Federal University of Minas Gerais, Brazil); Sandra Avila (University of Campinas, Brazil); Silvio Guimarães (PUC Minas, Brazil); Arnaldo Araújo (Federal University of Minas Gerais, Brazil)
Feature Level Combination for Object Recognition Abdollah Amirkhani-Shahraki (IUST & IranUniversity of Science and Technology, Iran)
Sparse Representation and Least Squares-based Classification in Face Recognition Michael Iliadis (Northwestern University, USA); Leonidas Spinoulas (Northwestern University, USA); Albert S. Berahas (Northwestern University, USA); Haohong Wang (TCL Research America, USA); Aggelos K Katsaggelos (Northwestern University, USA)
Greedy Methods for Simultaneous Sparse Approximation Leila Belmerhnia (CRAN, Université de Lorraine, CNRS, France); El-Hadi Djermoune (CRAN, Nancy-Universite, CNRS, France); David Brie (CRAN, Nancy Université, CNRS, France)
Sparse Matrix Decompositions for Clustering Thomas Blumensath (University of Southampton, United Kingdom)
Evaluation of Non-Linear Combinations of Rescaled Reassigned Spectrograms Maria Sandsten (Lund University, Sweden)

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