基于MPEG-7音频特征和支持向量机的音频功率和音频谐波音乐情绪分类

Johanes Andre Ridoean, R. Sarno, Dwi Sunaryo, D. Wijaya
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引用次数: 17

摘要

音乐可以影响一个人的情绪。音乐心理学家一致认为,音乐对一个人的情绪有重大影响,而情绪又决定了一个人的行为。因此,我们的研究考察了影响情绪的音频特征。我们的方法是基于MPEG-7低级描述符进行特征提取。MPEG-7是ISO/IEC 15938标准的国际标准化多媒体元数据。本文对利用音频功率和音频谐波特征进行音乐情绪分类进行了研究。MPEG-7的提取结果得到了17个特征低级描述符。这些特征使用支持向量机(SVM)进行分类。SVM有两个阶段:训练阶段和预测阶段。训练阶段是机器学习识别标签上信号的特征,而预测阶段是在新的信号特征模式上给出标签的预测结果。使用音频功率和音频谐波的实验成功率为74.28%,使用音频频谱投影的实验成功率为37.14%,使用音频功率、音频谐波和音频频谱投影的实验成功率为28.57%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Music mood classification using audio power and audio harmonicity based on MPEG-7 audio features and Support Vector Machine
Music can affect a person's mood. Music psychologists agree that music has a significant impact on a person's mood that determines their behavior. Therefore, our research examines the audio features that affect mood. Our method is to perform feature extraction based on MPEG-7 Low-Level Descriptors. MPEG-7 is international standardized multimedia metadata in ISO/IEC 15938. In this paper, we have made a researched about music mood classification using Audio Power and Audio Harmonicity features. The result of the extraction of the MPEG-7 obtained 17 features low-level descriptors. These features are classified using Support Vector Machine (SVM). There are two stages of SVM: training and prediction phase. Traning phase is when the machine learns to recognize the characteristics of the signal on a label while in prediction phase, it gives the predicted outcome of a label on a new signal characteristic pattern. The success rate of this experiment was 74.28% using Audio Power and Audio Harmonicity, 37.14% using Audio Spectrum Projection, and 28.57% using Audio Power, Audio Harmonicity and Audio Spectrum Projection.
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