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Music Emotion Detection Using Hierarchical Sparse Kernel Machines

机译:使用分层稀疏内核机器的音乐情感检测

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摘要

For music emotion detection, this paper presents a music emotion verification system based on hierarchical sparse kernel machines. With the proposed system, we intend to verify if a music clip possesses happiness emotion or not. There are two levels in the hierarchical sparse kernel machines. In the first level, a set of acoustical features are extracted, and principle component analysis (PCA) is implemented to reduce the dimension. The acoustical features are utilized to generate the first-level decision vector, which is a vector with each element being a significant value of an emotion. The significant values of eight main emotional classes are utilized in this paper. To calculate the significant value of an emotion, we construct its 2-class SVM with calm emotion as the global (non-target) side of the SVM. The probability distributions of the adopted acoustical features are calculated and the probability product kernel is applied in the first-level SVMs to obtain first-level decision vector feature. In the second level of the hierarchical system, we merely construct a 2-class relevance vector machine (RVM) with happiness as the target side and other emotions as the background side of the RVM. The first-level decision vector is used as the feature with conventional radial basis function kernel. The happiness verification threshold is built on the probability value. In the experimental results, the detection error tradeoff (DET) curve shows that the proposed system has a good performance on verifying if a music clip reveals happiness emotion.
机译:对于音乐情感检测,本文提出了一种基于等级稀疏内核机器的音乐情感验证系统。通过提出的系统,我们打算核实音乐剪辑是否具有幸福情感。分层稀疏内核机器中有两个级别。在第一级中,提取一组声学特征,并实现了原理分量分析(PCA)以减少维度。声学特征用于生成第一级别判定向量,其是具有每个元素的矢量的向量,其情绪的显着价值。本文利用了八个主要情绪课程的显着价值。为了计算情感的重要价值,我们将其2级SVM构建了平静的情感作为SVM的全球(非目标)。计算采用的声学特征的概率分布,并且在第一级SVM中应用概率产品内核以获得第一级决策传染媒介特征。在分层系统的第二级,我们仅仅用幸福构建一个2级相关矢量机(RVM)作为目标方面和其他情绪作为RVM的背景侧。第一级别判定向量用作具有传统径向基函数内核的特征。幸福验证阈值建立在概率值上。在实验结果中,检测误差权衡(Det)曲线表明,如果音乐剪辑揭示幸福情绪,则验证拟议的系统具有良好的性能。

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