使用机器学习算法的音乐类型分类

V. Prashanthi, Srinivas Kanakala, V. Akila, A. Harshavardhan
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引用次数: 1

摘要

音乐类型预测是音乐数据检索领域的难点之一。音乐组分类对于音乐推荐系统至关重要,因为类型在此类系统及其推荐中具有很高的权重。设计了一种能够自动分类音乐片段类型的机器学习模型。在这里,我们将借助数字信号处理提取原声音乐特征,然后借助机器学习方法对音乐进行分类。Librosa是一个我们将用于音频特征提取的工具,它为低级和高级音频特征提供了全功能的工作流程。在本文中,我们将使用k-最近邻方法,因为在许多研究中表明该方法在这种情况下给出了良好的结果。我们将使用音乐数据集GTZAN Genre Collection(1010个片段)。
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Music Genre Categorization using Machine learning Algorithms
Music genre prediction is a difficult job in the field in Retrieval of Musical Data. Music group categorization is essential for the music recommending systems, since genre has a high weight in such systems and their recommendations. A machine learning model is designed which automatically classifies the genre of a music clip. Here, we are going to extract acoustic music features with the help of digital signal processing and then classification of music is done with the help of machine learning methods. Librosa, is a tool we will be using for audio feature extraction, which offers a full-featured work-flow situation for low and high-level audio features. In this paper, we are going to utilize k-Nearest Neighbours method for the reason that in many research it is shown that this method gives good outcomes in such scenario. We will be using music dataset GTZAN Genre Collection (1010 clips).
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