- ホーム
- > 洋書
- > 英文書
- > Computer / Databases
Full Description
Providing a complete review of existing work in music emotion developed in psychology and engineering, Music Emotion Recognition explains how to account for the subjective nature of emotion perception in the development of automatic music emotion recognition (MER) systems. Among the first publications dedicated to automatic MER, it begins with a comprehensive introduction to the essential aspects of MER—including background, key techniques, and applications.
This ground-breaking reference examines emotion from a dimensional perspective. It defines emotions in music as points in a 2D plane in terms of two of the most fundamental emotion dimensions according to psychologists—valence and arousal. The authors present a computational framework that generalizes emotion recognition from the categorical domain to real-valued 2D space. They also:
Introduce novel emotion-based music retrieval and organization methods
Describe a ranking-base emotion annotation and model training method
Present methods that integrate information extracted from lyrics, chord sequence, and genre metadata for improved accuracy
Consider an emotion-based music retrieval system that is particularly useful for mobile devices
The book details techniques for addressing the issues related to: the ambiguity and granularity of emotion description, heavy cognitive load of emotion annotation, subjectivity of emotion perception, and the semantic gap between low-level audio signal and high-level emotion perception. Complete with more than 360 useful references, 12 example MATLAB® codes, and a listing of key abbreviations and acronyms, this cutting-edge guide supplies the technical understanding and tools needed to develop your own automatic MER system based on the automatic recognition model.
Contents
Overview of Emotion Description and Recognition. Music Features. Dimensional MER by Regression. Ranking-Based Emotion Annotation and Model Training. Fuzzy Classification of Music Emotion. Personalized MER and Groupwise MER. Two-Layer Personalization. Probability Music Emotion Distribution Prediction. Lyrics Analysis and Its Application to MER. Chord Recognition and Its Application to MER. Genre Classification and Its Application to MER. Music Retrieval in the Emotion Plane. Future Research Directions.