Musical genre's classification has been a relevant research topic. The association between music and genres is fundamental for the media industry, which manages musical recommendation systems, and for music streaming services, which may appear classified by genres. In this context, this work presents a feature extraction method for the automatic classification of musical genres, based on complex networks and their topological measurements. The proposed method initially converts the musics into sequences of musical notes and then maps the sequences as complex networks. Topological measurements are extracted to characterize the network topology, which composes a feature vector that applies to the classification of musical genres. The method was evaluated in the classification of 10 musical genres by adopting the GTZAN dataset and 8 musical genres by adopting the FMA dataset. The results were compared with methods in the literature. The proposed method outperformed all compared methods by presenting high accuracy and low standard deviation, showing its suitability for the musical genre's classification, which contributes to the media industry in the automatic classification with assertiveness and robustness. The proposed method is implemented in an open source in the Python language and freely available at https://github.com/omatheuspimenta/examinner.
翻译:音乐和基因之间的关联对于管理音乐建议系统的媒体行业和音乐流服务来说至关重要,而音乐流服务则可能按流流服务进行分类。在这方面,这项工作提出了一种根据复杂的网络及其地形测量对音乐流流进行自动分类的特征提取方法。拟议方法最初将音乐转换成音乐笔记的序列,然后将顺序绘制为复杂的网络。通过地形测量,对音乐流服务进行分类,对管理音乐建议系统和音乐流服务的媒体行业来说,是不可或缺的。在10种音乐流服务的分类中,采用了GTZAN数据集和8种音乐流流服务。结果与文献中的方法进行了比较。拟议方法通过显示高准确性和低标准偏差,将所有方法都比得更优,表明其适合音乐流流的分类,这有助于媒体行业以自信和稳健度进行自动分类。拟议方法通过采用FMA数据集对10种音乐流星和8种作了评估。拟议方法在开放源代码中得到了应用。在Pibasm/comma中,在开放源语言中可以使用。