VORTRAG ******* Oesterreichisches Forschungsinstitut fuer Artificial Intelligence(OeFAI) Freyung 6/6, A-1010 Wien Tel.: +43-1-53361120, Fax: +43-1-5336112-77, Email: sec@oefai.at ------------------------------------------------------------------------- Fabien Gouyon Universitat Pompeu Fabra, IUA, Music Technology Group, Barcelona und Oesterreichisches Forschungsinstitut fuer Artificial Intelligence, Music Processing Group FROM LOW-LEVEL SOUND PROCESSING TO CONTENT-BASED MUSIC PROCESSING: ACTIVITIES OF THE MUSIC TECHNOLOGY GROUP (MTG) IN BARCELONA Since its creation, the MTG focused on building signal models for the analysis and synthesis of musical sounds, extending the doctoral work of its director, Xavier Serra, on Spectral Modeling Synthesis in Stanford University. From this initial research direction, the focus has been widened to embrace related topics. Among others are singing voice synthesis and transformation, time-stretching of audio, interactive composition systems, fingerprinting techniques for song and music recording identification and audio content analysis, description and transformation. In this lecture, we will provide a short overview of current research efforts in the MTG and we will put a special focus on the work being done on music content-based processing. One aspect of processing musical content is the automatic description of music in terms of highly abstract representations. Applications to content-based description are manifold: browsing musical databases, performance analysis, etc. We will concentrate on musical expressiveness transformations; that is, the editing and transformation of musical audio signals triggered by musically-meaningful representational elements, in contrast to low-level signal descriptors. We will demonstrate a computer software for modifying rhythmic performances of polyphonic musical audio signals. The rhythmic dimension it triggers is the swing. It first describes offline the rhythmic content of an audio signal: determination of tempi and beat indexes at the quarter-note and eighth-note levels, as well as estimation of the swing ratio. Then, the signal is transformed in real-time using a time-stretch algorithm. We will present basic techniques provided by commercial products for swing modification and compare these to our system. Zeit: Dienstag, 16. Dezember 2003, 18:00 Uhr pktl. Ort: Institut fuer Medizinische Kybernetik und Artificial Intelligence der Universitaet Wien (IMKAI) Wien 1, Freyung 6, Stg.2 (Schottenhof), Tel. 4277-63101 www.ai.univie.ac.at/imkai OESTERREICHISCHES FORSCHUNGSINSTITUT FUER ARTIFICIAL INTELLIGENCE o.Univ.-Prof. Ing. Dr. Robert Trappl