Research on Intelligent Vocal Music Training System Based on Wavelet Transform

Chen Nan
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引用次数: 1

Abstract

In the process of vocal music learning, most of the learning is through the traditional learning mode, that is, learning knowledge in class. For vocal music lovers who want to learn vocal music knowledge, vocal music learning has many requirements on the arrangement of learning place, time and personnel. The purpose of this paper is to develop and design an intelligent training system for vocal music. The flow of audio fingerprint extraction algorithm based on wavelet transform is to transform audio signals into spectrograms. Then, according to the characteristics that wavelet transform can better represent picture information in both time domain and frequency domain, wavelet transform is used for a series of processing of spectrograms. Finally, a more compact fingerprint is obtained by dimension reduction algorithm. This paper applies this algorithm to vocal intelligent training system for the first time. When the humming quality is high, the detection rate can reach more than 90%.
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基于小波变换的智能声乐训练系统研究
在声乐学习的过程中,大部分的学习都是通过传统的学习模式,即在课堂上学习知识。对于想要学习声乐知识的声乐爱好者来说,声乐学习对学习地点、时间和人员的安排都有很多要求。本文的目的是开发和设计一个智能的声乐训练系统。基于小波变换的音频指纹提取算法的流程是将音频信号转换成频谱图。然后,根据小波变换在时域和频域都能更好地表示图像信息的特点,利用小波变换对谱图进行一系列处理。最后,通过降维算法得到更紧凑的指纹。本文首次将该算法应用于语音智能训练系统。当嗡嗡声质量高时,检出率可达90%以上。
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