High-Quality and Reproducible Automatic Drum Transcription from Crowdsourced Data

Signals Pub Date : 2023-11-10 DOI:10.3390/signals4040042
Mickaël Zehren, Marco Alunno, Paolo Bientinesi
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Abstract

Within the broad problem known as automatic music transcription, we considered the specific task of automatic drum transcription (ADT). This is a complex task that has recently shown significant advances thanks to deep learning (DL) techniques. Most notably, massive amounts of labeled data obtained from crowds of annotators have made it possible to implement large-scale supervised learning architectures for ADT. In this study, we explored the untapped potential of these new datasets by addressing three key points: First, we reviewed recent trends in DL architectures and focused on two techniques, self-attention mechanisms and tatum-synchronous convolutions. Then, to mitigate the noise and bias that are inherent in crowdsourced data, we extended the training data with additional annotations. Finally, to quantify the potential of the data, we compared many training scenarios by combining up to six different datasets, including zero-shot evaluations. Our findings revealed that crowdsourced datasets outperform previously utilized datasets, and regardless of the DL architecture employed, they are sufficient in size and quality to train accurate models. By fully exploiting this data source, our models produced high-quality drum transcriptions, achieving state-of-the-art results. Thanks to this accuracy, our work can be more successfully used by musicians (e.g., to learn new musical pieces by reading, or to convert their performances to MIDI) and researchers in music information retrieval (e.g., to retrieve information from the notes instead of audio, such as the rhythm or structure of a piece).
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高质量和可复制的自动鼓转录从众包数据
在被称为自动音乐转录的广泛问题中,我们考虑了自动鼓转录(ADT)的具体任务。这是一项复杂的任务,最近由于深度学习(DL)技术而取得了重大进展。最值得注意的是,从大量注释者那里获得的大量标记数据使得为ADT实现大规模监督学习架构成为可能。在这项研究中,我们通过解决三个关键点来探索这些新数据集的未开发潜力:首先,我们回顾了深度学习架构的最新趋势,并专注于两种技术,自注意机制和tatum-synchronous卷积。然后,为了减轻众包数据中固有的噪声和偏见,我们用额外的注释扩展了训练数据。最后,为了量化数据的潜力,我们通过组合多达六个不同的数据集来比较许多训练场景,包括零射击评估。我们的研究结果表明,众包数据集优于以前使用的数据集,无论采用何种深度学习架构,它们在规模和质量上都足以训练出准确的模型。通过充分利用这个数据源,我们的模型产生了高质量的鼓转录,实现了最先进的结果。由于这种准确性,我们的工作可以更成功地用于音乐家(例如,通过阅读学习新的音乐作品,或将他们的表演转换为MIDI)和音乐信息检索研究人员(例如,从音符而不是音频中检索信息,如节奏或结构)。
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来源期刊
CiteScore
3.20
自引率
0.00%
发文量
0
审稿时长
11 weeks
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