标题: | 时变性的音乐情绪成份分析研究 Analytic research on the time-varying ingredients of emotion evoked by the sound of music |
作者: | 吴伟廷 Wu, Wei-ting 郑泗东 Cheng, Stone 工学院声音与音乐创意科技硕士学位学程 |
关键字: | 音乐情绪辨识;时变性;特征萃取;音乐资讯检索;Music emotion recognition;Time-varying;Feature extraction;Music information retrieval;Mpeg-7;Support Vector Machine |
公开日期: | 2010 |
摘要: | 人们的情绪随着聆听音乐的过程被牵动,以往音乐情绪检索系统多半提出单一情绪分类。本研究以时变性的情绪变化为基础并尝试结合各种心理学家提出的情绪模型,包含二维情绪模型和类别式情绪模型,进而提出以Content、Depression、Anxious、Exuberant四种情绪为基础成分并隐含二维情绪模型资讯的即时性音乐成分分析系统。系统中采用Support Vector Machine当作分类的演算法,针对各种特征以192首训练歌曲建立两两情绪间的分类模型以此考虑二维情绪模型中的两个维度单独分析的情况。特征值上采用音乐特征和音讯特征两大类,共计11个特征。并依其特性以不同的音框长度作分析。最后再以音乐情绪的问卷调查来比对程式实验结果和实际聆听者感受是否符合。 While listening to music, people's emotions are affected. The common music emotion recognition systems used to provide only one emotion classification. This study presented a time-varying music emotion analysis, and tried to integrate several psychological emotion models, including two-dimensional emotion space and category type. And further to make a time-varying analytic system, based on four basic compositions: Content, Depression, Anxious and Exuberant, which also contains information from two-dimensional emotion space. This system uses Support Vector Machine as classified algorithm. This system uses Support Vector Machine as classified algorithm. Training in a variety of features by 192 music clips as training data to build emotional classification model between each two, in order to inspect the situations for analyzing the two dimensions separately. Feature extractions were divided into two categories: Music Features and Audio Features, total of 11 features. Each feature used different length of frame for analysis. In the end, this study performed a questionnaire survey to compare the program results with the actual listeners’ experiences. |
URI: | http://140.113.39.130/cdrfb3/record/nctu/#GT079802512 http://hdl.handle.net/11536/46621 |
显示于类别: | Thesis |
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