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Signal Processing Methods for Music Transcription

  • Book
  • © 2006

Overview

  • The first book uniting state-of-the-art research in signal processing for music transcription

  • Covers a range of topics and approaches discussed by international experts in the field

  • Contributes to the dissemination of the increasingly relevant topic of MPEG-7 standardization

  • Describes models for the different subtopics of music transcription, including pitch analysis, percussion transcription, source separation, instrument recognition, and music structure analysis

  • Comprehensive review of existing methods

  • Ideal starting point for newcomers and a valuable reference source for people working in the field

  • Includes concrete algorithms and formulas for various methods, making it easy for the reader to implement and experiment

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Table of contents (12 chapters)

  1. Foundations

  2. Rhythm and Timbre Analysis

  3. Entire Systems, Acoustic and Musicological Modelling

Keywords

About this book

Signal Processing Methods for Music Transcription is the first book dedicated to uniting research related to signal processing algorithms and models for various aspects of music transcription such as pitch analysis, rhythm analysis, percussion transcription, source separation, instrument recognition, and music structure analysis. Following a clearly structured pattern, each chapter provides a comprehensive review of the existing methods for a certain subtopic while covering the most important state-of-the-art methods in detail. The concrete algorithms and formulas are clearly defined and can be easily implemented and tested. A number of approaches are covered, including, for example, statistical methods, perceptually-motivated methods, and unsupervised learning methods. The text is enhanced by a common reference and index.

Editors and Affiliations

  • Institute of Signal Processing, Tampere University of Technology, Tampere, Finland

    Anssi Klapuri

  • Ecole Centrale de Lille Cité Scientifique, LAGIS/CNRS, Cedex, France

    Manuel Davy

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