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Detecting emotional expression of music with feature selection approach

机译:用特征选择方法检测音乐的情感表达

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This paper presents a mechanism on detecting emotional expression of music with feature selection approach. Happiness, sadness, anger, and peace are considered in the classification problem. The thirty-seven features were extracted to represent the characteristics of music samples, such as rhythm, dynamic, pitch, and timbre features. The kernel-based class separability (KBCS) was introduced to prioritize features for emotion classification because not all features have the same importance in achieving emotional expression. Two feature transformation techniques, principal component analysis (PCA) and linear discriminant analysis (LDA) were applied after the feature selection. The inclusion of these two techniques can effectively improve the classification accuracy. To the end, the k-nearest neighborhood (k-NN) classifier is adopted. The results indicate that the proposed method in the study can achieve accuracy at almost 90%.
机译:本文介绍了一种用特征选择方法检测音乐情绪表达的机制。在分类问题中考虑了幸福,悲伤,愤怒和和平。提取了三十七个特征,以表示音乐样本的特征,例如节奏,动态,俯仰和Timbre特征。基于内核的类别可分离性(KBCS)被引入到情感分类的优先考虑特征,因为并非所有功能都具有同样重要的实现情绪表达。在特征选择之后,应用了两个特征变换技术,主成分分析(PCA)和线性判别分析(LDA)。包含这两种技术可以有效地提高分类准确性。到结束时,采用k-最近的邻域(K-NN)分类器。结果表明,该研究中所提出的方法可以在近90%的情况下实现准确度。

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