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An Experimental Analysis of the Entanglement Problem in Neural-Network-based Music Transcription Systems

机译:基于神经网络的音乐转录系统纠缠问题的实验分析

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Several recent polyphonic music transcription systems have utilized deep neural networks to achieve state of the art results on various benchmark datasets, pushing the envelope on framewise and note-level performance measures. Unfortunately we can observe a sort of glass ceiling effect. To investigate this effect, we provide a detailed analysis of the particular kinds of errors that state of the art deep neural transcription systems make, when trained and tested on a piano transcription task. We are ultimately forced to draw a rather disheartening conclusion: the networks seem to learn combinations of notes, and have a hard time generalizing to unseen combinations of notes. Furthermore, we speculate on various means to alleviate this situation.
机译:最近的几个复音音乐转录系统已经利用了深度神经网络来实现了各种基准数据集的最新状态,在帧向上推动信封和音符级性能措施。不幸的是,我们可以观察一种玻璃天花板效果。为了调查这种效果,我们提供了在训练和在钢琴转录任务上进行训练和测试时所做的艺术深神经转录系统所做的特定类型的特定类型的详细分析。我们最终被迫绘制一个相当令人意意的结论:网络似乎学习了笔记的组合,并且难以概括到说明的票据组合。此外,我们推测各种手段来缓解这种情况。

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