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Isolated guitar transcription using a deep belief network

机译:使用深层信仰网络进行孤立的吉他转录

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Music transcription involves the transformation of an audio recording to common music notation, colloquially referred to as sheet music. Manually transcribing audio recordings is a difficult and time-consuming process, even for experienced musicians. In response, several algorithms have been proposed to automatically analyze and transcribe the notes sounding in an audio recording; however, these algorithms are often general-purpose, attempting to process any number of instruments producing any number of notes sounding simultaneously. This paper presents a polyphonic transcription algorithm that is constrained to processing the audio output of a single instrument, specifically an acoustic guitar. The transcription system consists of a novel note pitch estimation algorithm that uses a deep belief network and multi-label learning techniques to generate multiple pitch estimates for each analysis frame of the input audio signal. Using a compiled dataset of synthesized guitar recordings for evaluation, the algorithm described in this work results in an 11% increase in the f-measure of note transcriptions relative to Zhou et al.’s (2009) transcription algorithm in the literature. This paper demonstrates the effectiveness of deep, multi-label learning for the task of polyphonic transcription.
机译:音乐转录涉及将录音转换为常用的音乐符号,俗称乐谱。即使对于有经验的音乐家,手动录制音频也是一个困难且耗时的过程。作为响应,已经提出了几种算法来自动分析和转录录音中的音符。但是,这些算法通常是通用的,试图处理可同时发出任何数量音符的任何数量的乐器。本文提出了一种复音转录算法,该算法只能用于处理单个乐器(特别是原声吉他)的音频输出。转录系统由新颖的音调估计算法组成,该算法使用深度置信网络和多标签学习技术为输入音频信号的每个分析帧生成多个音调估计。使用合成吉他录音的编译数据集进行评估,相对于文献中Zhou等人(2009)的转录算法,本文中描述的算法可使音符转录的f值提高11%。本文演示了深度,多标签学习对复音转录任务的有效性。

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