Abstra'/> Methodology for stage lighting control based on music emotions
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Methodology for stage lighting control based on music emotions

机译:基于音乐情绪的舞台照明控制方法

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Abstract Traditionally, stage lighting regulations have required that professionally trained technicians operate the lighting equipment; however, contemporary demands for higher-quality performances require more preparation before a performance. Thus, technicians or club DJs now spend double to triple the time previously required before a show on matching the lighting control sequence musical instrument digital interface (MIDI) with the music, which is very time consuming. Thus, a methodology for automatic stage-lighting regulation would be very useful. Recently, the development of music emotion recognition (MER) and neural network algorithms has progressed significantly. Feelings related to music can be recognized and are even quantifiable using a supervised machine learning approach. In this study, a variety of music signal features from 2,087 song clips were captured, and then, a cross-validation test based on the support vector machine's (SVM) accuracy of classifying them into Thayer's emotion plane was applied to the main features related to music emotions, in order to produce linear quantitative values for describing music emotions. Music emotions and color preferences for stage lighting were subsequently studied. Using the experimental results, a support vector regression (SVR) model was trained to construct simulations. To increase the realism of the simulations, we developed an automatic music segment detection methodology based on music signal intensity to capture the different music strengths and feelings in each segment. Furthermore, music genres were studied as a factor for developing a comprehensive automatic stage lighting system bas
机译:<![cdata [ 抽象 传统上,舞台照明法规要求专业培训的技术人员操作照明设备;然而,对更高质量表演的当代需求需要在表现前更准备。因此,技术人员或俱乐部DJ现在花费双倍到三倍以前所需的时间在匹配照明控制序列乐器数字接口(MIDI)与音乐时,这是非常耗时的。因此,自动舞台照明调节的方法非常有用。最近,音乐情感识别(MER)和神经网络算法的发展显着进展。可以识别与音乐相关的感受,并且使用监督机器学习方法甚至可以量化。在这项研究中,捕获了来自2,087个歌曲剪辑的各种音乐信号特征,然后,基于支持向量机(SVM)精度的交叉验证测试将它们分类为Thayer的情感飞机的准确性被应用于与之相关的主要特征音乐情绪,为了产生描述音乐情绪的线性定量值。随后研究了舞台照明的音乐情感和颜色偏好。使用实验结果,培训支持向量回归(SVR)模型以构建模拟。为了增加模拟的现实主义,我们根据音乐信号强度开发了自动音乐段检测方法,以捕获每个段中的不同音乐强度和感受。此外,研究了音乐类型作为开发综合自动舞台照明系统的因素

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