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Improved musical onset detection with Convolutional Neural Networks

机译:使用卷积神经网络改善音乐发作检测

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Musical onset detection is one of the most elementary tasks in music analysis, but still only solved imperfectly for polyphonic music signals. Interpreted as a computer vision problem in spectrograms, Convolutional Neural Networks (CNNs) seem to be an ideal fit. On a dataset of about 100 minutes of music with 26k annotated onsets, we show that CNNs outperform the previous state-of-the-art while requiring less manual preprocessing. Investigating their inner workings, we find two key advantages over hand-designed methods: Using separate detectors for percussive and harmonic onsets, and combining results from many minor variations of the same scheme. The results suggest that even for well-understood signal processing tasks, machine learning can be superior to knowledge engineering.
机译:音乐起病检测是音乐分析中最基本的任务之一,但对于和弦音乐信号仍然无法完美解决。卷积神经网络(CNN)被解释为声谱图中的计算机视觉问题,似乎是理想的选择。在大约有100分钟的音乐和26k批注的发作的数据集上,我们显示了CNN优于以前的最新技术,同时所需的人工预处理更少。研究它们的内部工作原理,我们发现与手工设计的方法相比有两个主要优势:使用单独的检测器来进行打击和谐波发作,以及组合来自同一方案的许多细微变化的结果。结果表明,即使对于很好理解的信号处理任务,机器学习也可以优于知识工程。

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