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A deep music genres classification model based on CNN with Squeeze Excitation Block

机译:基于CNN的挤压和激励块的深度音乐流派分类模型

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With the development of mobile terminals and Internet technology, people have increasingly convenient mediums to obtain digital music. However, complex music genres and massive music libraries have brought great challenges to music information retrieval. Music genres are high-level labels for music information, which would consume a lot of time and resources when manually tagged. This paper proposes a new model: in order to fully mine the latent information hidden in the input spectrum graph, we build a music genre classification system based on the convolutional neural network that includes Squeeze & Excitation Block (SE-Block), and then use Bayesian optimization to search the best parameters of SE-Block. Finally, we choose the GTZAN dataset for experiments and achieved a classification accuracy of 92%, which is significantly better than most previous research work.
机译:随着移动终端和互联网技术的发展,人们越来越方便的媒介获得数字音乐。然而,复杂的音乐类型和大规模的音乐图书馆对音乐信息检索带来了巨大的挑战。音乐类型是音乐信息的高级标签,它将在手动标记时消耗大量的时间和资源。本文提出了一种新模型:为了完全挖掘隐藏在输入频谱图中的潜在信息,我们构建了一种基于卷积神经网络的音乐类型分类系统,包括挤压和激励块(SE-Block),然后使用贝叶斯优化搜索SE-Block的最佳参数。最后,我们选择GTZAN数据集进行实验,并实现了92%的分类准确性,这显着优于以前的最先前的研究工作。

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