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A Two-Stage Approach to Note-Level Transcription of a Specific Piano

机译:特定钢琴音符转录的两阶段方法

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This paper presents a two-stage transcription framework for a specific piano, which combines deep learning and spectrogram factorization techniques. In the first stage, two convolutional neural networks (CNNs) are adopted to recognize the notes of the piano preliminarily, and note verification for the specific individual is conducted in the second stage. The note recognition stage is independent of piano individual, in which one CNN is used to detect onsets and another is used to estimate the probabilities of pitches at each detected onset. Hence, candidate pitches at candidate onsets are obtained in the first stage. During the note verification, templates for the specific piano are generated to model the attack of note per pitch. Then, the spectrogram of the segment around candidate onset is factorized using attack templates of candidate pitches. In this way, not only the pitches are picked up by note activations, but the onsets are revised. Experiments show that CNN outperforms other types of neural networks in both onset detection and pitch estimation, and the combination of two CNNs yields better performance than a single CNN in note recognition. We also observe that note verification further improves the performance of transcription. In the transcription of a specific piano, the proposed system achieves 82% on note-wise F-measure, which outperforms the state-of-the-art.
机译:本文介绍了针对特定钢琴的两阶段转录框架,该框架结合了深度学习和频谱图分解技术。在第一阶段,采用两个卷积神经网络(CNN)初步识别钢琴的音符,然后在第二阶段对特定个人进行音符验证。音符识别阶段与钢琴演奏者无关,其中一个CNN用于检测起音,而另一个CNN用于估计每个检测到的起音的音高概率。因此,在第一阶段获得候选起点处的候选音高。在音符验证期间,将生成特定钢琴的模板,以对每个音高的音符攻击建模。然后,使用候选音高的攻击模板将候选音周围段的频谱图分解。这样,不仅音高通过音符激活来拾取,而且音高也得到了修改。实验表明,CNN在发作检测和音高估计方面均胜过其他类型的神经网络,并且两个CNN的组合在音符识别方面的性能要优于单个CNN。我们还观察到音符验证进一步提高了转录性能。在特定钢琴的转录中,拟议的系统在按音符F度量上可达到82%,优于最新技术。

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