Introduction to Audio Analysis
eBook - ePub

Introduction to Audio Analysis

A MATLABÂź Approach

Theodoros Giannakopoulos,Aggelos Pikrakis

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eBook - ePub

Introduction to Audio Analysis

A MATLABÂź Approach

Theodoros Giannakopoulos,Aggelos Pikrakis

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À propos de ce livre

Introduction to Audio Analysis serves as a standalone introduction to audio analysis, providing theoretical background to many state-of-the-art techniques. It covers the essential theory necessary to develop audio engineering applications, but also uses programming techniques, notably MATLABÂź, to take a more applied approach to the topic. Basic theory and reproducible experiments are combined to demonstrate theoretical concepts from a practical point of view and provide a solid foundation in the field of audio analysis.

Audio feature extraction, audio classification, audio segmentation, and music information retrieval are all addressed in detail, along with material on basic audio processing and frequency domain representations and filtering. Throughout the text, reproducible MATLABÂź examples are accompanied by theoretical descriptions, illustrating how concepts and equations can be applied to the development of audio analysis systems and components. A blend of reproducible MATLABÂź code and essential theory provides enable the reader to delve into the world of audio signals and develop real-world audio applications in various domains.

  • Practical approach to signal processing: The first book to focus on audio analysis from a signal processing perspective, demonstrating practical implementation alongside theoretical concepts
  • Bridge the gap between theory and practice: The authors demonstrate how to apply equations to real-life code examples and resources, giving you the technical skills to develop real-world applications
  • Library of MATLAB code: The book is accompanied by a well-documented library of MATLAB functions and reproducible experiments

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Informations

Éditeur
Academic Press
Année
2014
ISBN
9780080993898
Part 1: Basic Concepts, Representations and Feature Extraction
Outline
Introduction
Getting Familiar with Audio Signals
Signal Transforms and Filtering Essentials
Audio Features
1

Introduction

Abstract

This chapter has an introductory purpose. A chapter outline is provided, along with general notes on the book’s exercises and the companion software. Before we proceed, it is important to note that, although in this book the term audio does not exclude the speech signal, we are not focusing on traditional speech-related problems that have been studied by the research community for decades, e.g., speech recognition and coding.
Keywords
Audio analysis
MATLAB
During recent years we have witnessed the increasing availability of audio content via numerous distribution channels both for commercial and non-profit purposes. The resulting wealth of data has inevitably highlighted the need for systems that are capable of analyzing the audio content in order to extract useful knowledge that can be consumed by users or subsequently exploited by other processing systems.
Before we proceed, it is important to note that, although in this book the term ‘audio’ does not exclude the speech signal, we are not focusing on traditional speech-related problems that have been studied by the research community for decades, e.g. speech recognition and coding. It is our intention to provide analysis methods that can be used to study various audio modalities and their relationships in mixed audio streams. Consider, for example, the task of segmenting a radio broadcast into homogeneous parts that contain either speech, music, or silence. The development of a solution for such a task demands that we are familiar with various audio modalities and how they affect the performance of segmentation algorithms in audio streams. In other words, we are not interested in providing solutions that are well tailored to specific audio types (e.g. the speech signal) but are not applicable to other modalities.
As with several other types of media, the automatic analysis of audio signals has been gaining increasing interest during the past decade. Depending on the storage/distribution format, the respective audio content classes, the co-existence of other media types (e.g. moving image), the user requirements, the data volume, the application context, and numerous other parameters, a diversity of applications and research trends have emerged to deal with various audio analysis tasks. The following list includes both speech and non-speech tasks so as to provide a general idea of the trends in several popular areas of speech/audio processing:
‱ Speech recognition: this is the task of ‘translating’ a speech signal to text using computational tools. Speech recognition is the oldest domain of audio analysis, but it is beyond the purpose of this book to provide a detailed study on speech recognition. We only present generic dynamic time warping and temporal modeling techniques that can also be applied on other audio signals.
‱ Speaker identification, verification and diarization: These speaker-related tasks focus on designing methods that discriminate between different speakers. Speaker identification and verification can be useful in the development of secure systems and speaker diarization, being able to answer the question ‘who spoke when?’, can be used in conversation summarization systems.
‱ Music information retrieval (MIR): due to the huge increase in the amount of available digital music data during the past few years, there has been an increasing need for the automatic analysis of this type of data. MIR focuses on automatically extracting information from the music signal for the purposes of content tagging, intelligent indexing; retrieval; browsing of music tracks; recommendation of new tracks based on music content (possibly combined with user preferences and collaborative knowledge); segmentation of music tracks, generation of summaries; extraction of automated music transcriptions, etc.
‱ Audio event detection: this is the tas...

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