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Tone Quality Recognition of Instruments Based on Multi-feature Fusion of Music Signal

机译:基于音乐信号多特征融合的乐器音质识别

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The traditional expert-based instrumental music evaluation strategy can't meet the requirements of the rapidly accumulated audio data. The traditional strategy not only takes a high cost of human's energy and time but also may have some problems on consistency and fairness of judgment. This paper aims at designing a complete recognition and evaluation strategy to automatically identify the timber of wind instruments. We take the clarinet as example and propose a strategy based on multi-feature fusion and random forest. First, we use the identification of fundamental frequency algorithm to automatically distinguish the notes performed by the instruments. Second, we extract 3 types of features including MFCC, brightness and roughness to describe the instrumental signals. Then, considering two kinds of variants: note and tone quality, we design 5 strategies to remove the influence of different notes in the evaluation of tone quality. By analyzing these strategies, we explore the optimal strategy for the recognition. The final evaluation results over 840 music slices demonstrate the effectiveness of this method.
机译:传统的基于专家的器乐评估策略无法满足快速积累的音频数据的需求。传统的策略不仅要花费大量的精力和时间,而且在判断的一致性和公正性上可能存在一些问题。本文旨在设计一种完整的识别和评估策略,以自动识别管乐器的木材。我们以单簧管为例,提出了一种基于多特征融合和随机森林的策略。首先,我们使用基频识别算法来自动区分乐器执行的音符。其次,我们提取3种类型的特征,包括MFCC,亮度和粗糙度来描述仪器信号。然后,考虑音符和音质的两种变体,我们设计了5种策略来消除不同音符在音质评估中的影响。通过分析这些策略,我们探索了识别的最佳策略。超过840个音乐片段的最终评估结果证明了该方法的有效性。

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