Automatic onset detection using convolutional neural networks

W. Cornelissen, M. Loureiro
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引用次数: 0

Abstract

A very significant task for music research is to estimate instants when meaningful events begin (onset) and when they end (offset). Onset detection is widely applied in many fields: electrocardiograms, seismographic data, stock market results and many Music Information Research(MIR) tasks, such as Automatic Music Transcription, Rhythm Detection, Speech Recognition, etc. Automatic Onset Detection(AOD) received, recently, a huge contribution coming from Artificial Intelligence (AI) methods, mainly Machine Learning and Deep Learning. In this work, the use of Convolutional Neural Networks (CNN) is explored by adapting its original architecture in order to apply the approach to automatic onset detection on audio musical signals. We used a CNN network for onset detection on a very general dataset, well acknowledged by the MIR community, and examined the accuracy of the method by comparison to ground truth data published by the dataset. The results are promising and outperform another methods of musical onset detection.
使用卷积神经网络的自动发作检测
音乐研究的一个非常重要的任务是估计有意义的事件开始(开始)和结束(抵消)的时刻。起跳检测被广泛应用于许多领域:心电图、地震数据、股票市场结果和许多音乐信息研究(MIR)任务,如音乐自动转录、节奏检测、语音识别等。近年来,人工智能(AI)方法(主要是机器学习和深度学习)对自动发作检测(AOD)做出了巨大贡献。在这项工作中,通过调整卷积神经网络(CNN)的原始架构,探索其使用,以便将该方法应用于音频音乐信号的自动开始检测。我们使用CNN网络在一个非常通用的数据集上进行发作检测,该数据集得到了MIR社区的广泛认可,并通过与数据集发布的地面真实数据进行比较来检查该方法的准确性。结果是有希望的,并优于其他方法的音乐开始检测。
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