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Approaching End-to-End Optical Music Recognition for Homophonic Scores

机译:端到端光学音乐识别同声乐谱的方法

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The recognition of patterns that have a time dependency is common in areas like speech recognition or natural language processing. The equivalent situation in image analysis is present in tasks like text or video recognition. Recently, Recurrent Neural Networks (RNN) have been broadly applied to solve these task with good results in an end-to-end fashion. However, its application to Optical Music Recognition (OMR) is not so straightforward due to the presence of different elements at the same horizontal position, disrupting the linear flow of the time line. In this paper we study the ability of the RNNs to learn codes that represent this disruption in homophonic scores. The results prove that our serialized ways of encoding the music content are appropriate for Deep Learning-based OMR and they deserve further study.
机译:具有时间依赖性的模式的识别在语音识别或自然语言处理等领域很常见。图像分析中的等效情况存在于诸如文本或视频识别之类的任务中。最近,递归神经网络(RNN)已被广泛应用于以端到端的方式解决这些任务并取得良好的效果。但是,由于在同一水平位置上存在不同的元素,从而中断了时间线的线性流动,因此将其应用于光学音乐识别(OMR)并不是那么简单。在本文中,我们研究了RNN学习代表谐音分数破坏的代码的能力。结果证明,我们对音乐内容进行编码的序列化方法适用于基于深度学习的OMR,值得进一步研究。

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