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Knowledge discovery-based identification of musical pitches and instruments in polyphonic sounds

机译:基于知识发现的和弦声音中音高和乐器的识别

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Pitch and timber detection methods applicable to monophonic digital signals are common. Conversely, successful detection of multiple pitches and timbers in polyphonic time-invariant music signals remains a challenge. A review of these methods, sometimes called "Blind Signal Separation", is presented in this paper. We analyze how musically trained human listeners overcome resonance, noise, and overlapping signals to identify and isolate what instruments are playing and then what pitch each instrument is playing. The part of the instrument and pitch recognition system, presented in this paper, responsible for identifying the dominant instrument from a base signal uses temporal features proposed by Wieczorkowska [Slezak, D., Synak, P., Wieczorkowska, A., Wroblewski, J., 2002. Kdd-based approach to musical instrument sound recognition. Hacid, M.-S., Ras, Z.W., Zighed, D.A., Kodratoff, Y. (Eds.), Foundations of Intelligent Systems. Proceedings of 13th Symposium ISMIS 2002, Lyon, Franc 4519 Berlin, Heidelberg, pp. 28-36.] in addition to the standard 11 MPEG7 features. After retrieving a semantical match for that dominant instrument from the database, it creates a resulting foreign set of features to form a new synthetic basew signal which no longer bears the previously extracted dominant sound. The system may repeat this process until all recognizable dominant instruments are accounted for in the segment. The proposed methodology incorporates Knowledge Discovery, MPEG7 segmentation and Inverse Fourier Transforms.
机译:适用于单声道数字信号的音高和木材检测方法很常见。相反,成功检测和弦时不变音乐信号中的多个音高和木材仍然是一个挑战。本文对这些方法(有时称为“盲信号分离”)进行了综述。我们分析受过音乐训练的人类听众如何克服共振,噪声和重叠信号,以识别和隔离正在演奏的乐器,然后隔离每个乐器的音高。本文介绍的乐器和音高识别系统的一部分,负责从基本信号中识别主导乐器,使用Wieczorkowska [Slezak,D.,Synak,P.,Wieczorkowska,A.,Wroblewski,J ,2002年。基于Kdd的乐器声音识别方法。 Hacid,M.-S.,Ras,Z.W.,Zighed,D.A.,Kodratoff,Y.(编),智能系统基础。第13届ISMIS研讨会论文集,2002年,里昂,柏林,法郎4519,海德堡,第28-36页。]除了标准的11个MPEG7功能。从数据库中检索到该主导乐器的语义匹配之后,它将创建一个结果异物集,以形成一个新的合成basew信号,该信号不再承载先前提取的主导声音。系统可能会重复此过程,直到所有可识别的主导工具都计入细分市场。所提出的方法结合了知识发现,MPEG7分段和傅立叶逆变换。

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