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Music Emotion Analysis Based on PSO-BP Neural Network and Big Data Analysis

机译:基于PSO-BP神经网络和大数据分析的音乐情感分析

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摘要

The current music teaching can effectively improve students' music emotional expression indirectly. How to use the PSO-BP neural network to realize the quantitative research of music emotional expression is the current development trend. Based on this, this paper studies the influence factors of music emotion expression based on PSO-BP neural network and big data analysis. Firstly, a music emotion expression analysis model based on PSO-BP neural network algorithm is proposed. The autocorrelation function is used to simulate the emotion expression information in music. Through the maximum value of the autocorrelation function curve in the detection process, the vocal music signal is restored, and then the emotion expressed is analyzed. Secondly, the influence factors of PSO-BP neural network algorithm in music emotion expression are analyzed. The improved PSO-BP neural network algorithm and multidimensional data model are used for comprehensive analysis to accurately analyze the emotion in music expression, and the fuzzy evaluation method and analytic hierarchy process are used for quality evaluation. Finally, the validity of the music emotion analysis model is verified by many experiments.
机译:目前的音乐教学可以间接有效地提高学生的音乐情感表达。如何利用PSO-BP神经网络实现音乐情感表达的定量研究是当前的发展趋势。基于此,本文基于PSO-BP神经网络和大数据分析,研究了音乐情感表达的影响因素。首先,提出一种基于PSO-BP神经网络算法的音乐情感表达分析模型;自相关函数用于模拟音乐中的情感表达信息。通过检测过程中自相关函数曲线的最大值,恢复人声音乐信号,进而分析所表达的情感。其次,分析了PSO-BP神经网络算法对音乐情感表达的影响因素;采用改进的PSO-BP神经网络算法和多维数据模型进行综合分析,准确分析音乐表达中的情感,并采用模糊评价法和层次分析法进行质量评价。最后,通过多次实验验证了音乐情感分析模型的有效性。

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