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Visual exploration of latent space for traditional Chinese music

机译:传统中国音乐潜空间的视觉探索

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Generating compact and effective numerical representations of data is a fundamental step for many machine learning tasks. Traditionally, handcrafted features are used but as deep learning starts to show its potential, using deep learning models to extract compact representations becomes a new trend. Among them, adopting vectors from the model’s latent space is the most popular. There are several studies focused on visual analysis of latent space in NLP and computer vision. However, relatively little work has been done for music information retrieval (MIR) especially incorporating visualization. To bridge this gap, we propose a visual analysis system utilizing Autoencoders to facilitate analysis and exploration of traditional Chinese music. Due to the lack of proper traditional Chinese music data, we construct a labeled dataset from a collection of pre-recorded audios and then convert them into spectrograms. Our system takes music features learned from two deep learning models (a fully-connected Autoencoder and a Long Short-Term Memory (LSTM) Autoencoder) as input. Through interactive selection, similarity calculation, clustering and listening, we show that the latent representations of the encoded data allow our system to identify essential music elements, which lay the foundation for further analysis and retrieval of Chinese music in the future.
机译:生成紧凑且有效的数据数表示是许多机器学习任务的基本步骤。传统上,使用手工制作功能,但随着深度学习开始展示其潜力,使用深度学习模型提取紧凑型表示成为一种新的趋势。其中,采用模型的潜在空间的向量是最受欢迎的。有几项研究专注于NLP和计算机视觉潜在空间的视觉分析。然而,对于音乐信息检索(MIR)的工作已经完成了相对较少的作品,特别是包含可视化。为了弥合这一差距,我们提出了一种利用AutoEncoders的视觉分析系统,以促进传统中国音乐的分析和探索。由于缺乏适当的传统音乐数据,我们从预先录制的音频集合构建标记的数据集,然后将它们转换为频谱图。我们的系统从两个深度学习模型(完全连接的AutoEncoder和长短期内存(LSTM)AutoEncoder)中获取音乐功能作为输入。通过互动选择,相似性计算,聚类和聆听,我们表明编码数据的潜在表示允许我们的系统识别必要的音乐元素,这为未来进一步分析和检索的中国音乐奠定了基础。

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