Novel affective features for multiscale prediction of emotion in music

Naveen Kumar, T. Guha, Che-Wei Huang, Colin Vaz, Shrikanth S. Narayanan
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引用次数: 4

Abstract

The majority of computational work on emotion in music concentrates on developing machine learning methodologies to build new, more accurate prediction systems, and usually relies on generic acoustic features. Relatively less effort has been put to the development and analysis of features that are particularly suited for the task. The contribution of this paper is twofold. First, the paper proposes two features that can efficiently capture the emotion-related properties in music. These features are named compressibility and sparse spectral components. These features are designed to capture the overall affective characteristics of music (global features). We demonstrate that they can predict emotional dimensions (arousal and valence) with high accuracy as compared to generic audio features. Secondly, we investigate the relationship between the proposed features and the dynamic variation in the emotion ratings. To this end, we propose a novel Haar transform-based technique to predict dynamic emotion ratings using only global features.
音乐情感多尺度预测的新情感特征
大多数关于音乐情感的计算工作都集中在开发机器学习方法上,以建立新的、更准确的预测系统,并且通常依赖于通用的声学特征。相对较少的工作投入到开发和分析特别适合该任务的特性上。本文的贡献是双重的。首先,本文提出了两个特征,可以有效地捕捉音乐中的情感相关属性。这些特征被称为可压缩性和稀疏谱分量。这些特征被设计用来捕捉音乐的整体情感特征(全局特征)。我们证明,与一般音频特征相比,它们可以以较高的准确性预测情绪维度(唤醒和效价)。其次,我们研究了所提出的特征与情绪评分动态变化之间的关系。为此,我们提出了一种新颖的基于Haar变换的技术,仅使用全局特征来预测动态情绪评级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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