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A post-processing of onset detection based on verification with neural network

机译:基于神经网络验证的开始检测的后处理

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Onset detection is the primary task of music transcription that aims to find the start time of each note, which directly associated with the beats perception in the auditory system. Researchers attempted to find a data representation of universal onset function. However, the onset detection would not generalize to all cases. For example, onset detection in solo singing has a lower performance than solo playing the instrument in MIREX challenge every year. This paper presents a postprocessing step to singing onset detection that solely reduces false detected onsets. In the post-processing step, the system checks the onsets picked from local maximums of onset function, and uses the neural network model to discern onset or non-onset feature rather than consider a complicated onset function. The performance of the network has a close relationship to the onset detection. In the public dataset about the research of singing transcription, the pipeline with post-processing presents a higher performance than the standard and novelty method, when it was focused on the onsets, that it reduces false alarms from feature methods. It can provide further supports for the research of singing transcription when the data-driven approach provided an effective method to eliminate spurious peaks, which can be the state-of-art of singing onset detection.
机译:发病检测是音乐转录的主要任务,旨在找到每个音符的开始时间,它直接与听觉系统中的节拍感知相关联。研究人员试图找到通用发作函数的数据表示。但是,开始检测不会概括所有情况。例如,独奏歌曲中的发病检测具有比每年在Mirex挑战中扮演仪器的单独性能较低。本文介绍了唱现出生效检测的后处理步骤,该步骤仅减少了伪检测到的持续的持续的持续性。在后处理步骤中,系统检查从局部最大值函数拾取的持续件,并使用神经网络模型辨别开始或非发作功能,而不是考虑复杂的起始功能。网络的性能与开始检测有密切的关系。在关于唱歌转录研究的公共数据集中,具有后处理的管道比标准和新颖性方法具有更高的性能,当它集中在持续上时,它会减少特征方法的误报。当数据驱动方法提供了消除寄生峰的有效方法时,可以进一步支持唱歌转录的研究,这可以是歌唱发作检测的最先进的。

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