Music genre classification using multi-modal deep learning based fusion

Laisha Wadhwa, Prerana Mukherjee
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引用次数: 3

Abstract

Music genre classification is extensively used in almost all music streaming applications and websites. Most of them use it either to recommend playlists to their customers (such as Spotify, Soundcloud) or simply as a product (e.g. Shazam and MusixMatch). In this paper, we present a novel approach to classify a given song by encoding both textual and music features. The contribution of this work is twofold, i) We propose a multi modal fusion network approach which enables music genre classification utilizing both the textual features (lyrics) and musical features (mel spectrogram) achieving an accuracy of 90.4%. ii) We also propose a multiframe convolutional recurrent neural network (CRNN) based classifier that uses K-nearest neighbor approach over the predictions of every frame to predict the genre of a given song. In multi-modal fusion approach, we utilize co-attention between the textual and musical features for training classification network. The advantage of CRNN based multi frame approach is that it not only enriches the classification process but also enables to generate more training data from a smaller number of music files and thus helps in data augmentation. Our models and code are available on https://github.com/laishawadhwa/Multi-modal-music-genre-classification.
基于多模态深度学习融合的音乐类型分类
音乐类型分类广泛应用于几乎所有的音乐流媒体应用程序和网站。他们中的大多数要么使用它向客户推荐播放列表(如Spotify, Soundcloud),要么只是作为一种产品(如Shazam和MusixMatch)。在本文中,我们提出了一种通过编码文本和音乐特征来对给定歌曲进行分类的新方法。这项工作的贡献是双重的,i)我们提出了一种多模态融合网络方法,该方法可以利用文本特征(歌词)和音乐特征(mel谱图)进行音乐类型分类,准确率达到90.4%。ii)我们还提出了一种基于多帧卷积递归神经网络(CRNN)的分类器,该分类器在每帧的预测上使用k -最近邻方法来预测给定歌曲的类型。在多模态融合方法中,我们利用文本特征和音乐特征之间的共同关注来训练分类网络。基于CRNN的多帧方法的优点在于,它不仅丰富了分类过程,而且可以从更少的音乐文件中生成更多的训练数据,从而有助于数据的扩充。我们的模型和代码可以在https://github.com/laishawadhwa/Multi-modal-music-genre-classification上找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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