Classification of Indonesian Music Using the Convolutional Neural Network Method

S. R. Juwita, S. Endah
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引用次数: 2

Abstract

Music has a variety of genres, namely pop, rock, jazz, and so on. Indonesia has its own music that other countries do not have, including campursari, dangdut, and keroncong music. The three types of music have musical instruments that are almost similar, which makes it difficult for listeners to distinguish the genre of music, especially the younger generation, so we need a tool called classification. This study uses a mel-spectogram and the Convolutional Neural Network (CNN) method to classify Indonesian music. The CNN parameters and architecture tested in this study were batch normalization, ReLU activation, dropout, activation of sigmoid and softmax output, epoch value, learning rate value, and dense layer value. The entire parameter is tested using input with two different data sharing methods, namely stratified split and k-fold cross validation. The highest accuracy of 82% was obtained by using the stratified split data distribution method and using batch normalization parameters, ReLU activation, activation of outputs sigmoid and softmax, 30 epoch values, 0.05 learning rate values, and 200 layer dense values. The model with the highest accuracy value is used as the basis for classifying Indonesian music into campursari, dangdut, or keroncong classes
用卷积神经网络方法对印尼音乐进行分类
音乐有多种类型,即流行音乐、摇滚音乐、爵士音乐等等。印度尼西亚有其他国家没有的自己的音乐,包括campursari, dangdut和keronong音乐。这三种类型的音乐有几乎相似的乐器,这使得听众很难区分音乐的类型,特别是年轻一代,所以我们需要一种叫做分类的工具。本研究使用梅尔谱和卷积神经网络(CNN)方法对印尼音乐进行分类。本研究测试的CNN参数和架构有批归一化、ReLU激活、dropout、sigmoid和softmax输出的激活、epoch值、学习率值、dense layer值。使用两种不同的数据共享方法,即分层分裂和k-fold交叉验证,对整个参数进行输入测试。采用分层分割数据分布方法,采用批归一化参数、ReLU激活、输出sigmoid和softmax激活、epoch值30个、学习率值0.05个、层密度值200个,准确率最高,达到82%。将准确度值最高的模型作为基础,将印尼音乐分为campursari, dangdut,或keronconong三类
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