Chord Recognition using FFT Based Segment Averaging and Subsampling Feature Extraction

Linggo Sumarno
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引用次数: 1

Abstract

This paper proposes a feature extraction subsystem for a chord recognition system, which gives a fewer number of feature extraction coefficients than the previous ones. The method of the proposed feature extraction is FFT (Fast Fourier Transform) based segment averaging and subsampling. Guitar chords were used in developing the proposed feature extraction. In general, the method of the proposed feature extraction is as follows. Firstly, the input signal is transformed using FFT. Secondly, the left half portion of the transformed signal is processed in succession using SHPS (Simplified Harmonic Product Spectrum), logarithmic scaling, segment averaging, and subsampling. The output of subsampling is the result of the proposed feature extraction. Based on the test results, the proposed feature extraction was quite efficient for use in a chord recognition system. For the recognition rate category above 98%, the chord recognition system only required a number of seven feature extraction coefficients. In addition, for the recognition rate category above 90%, the chord recognition system only required a number of six feature extraction coefficients.
基于FFT分段平均和子采样特征提取的和弦识别
本文提出了一种和弦识别系统的特征提取子系统,该子系统提供的特征提取系数比以往的特征提取系数少。提出的特征提取方法是基于快速傅里叶变换的分段平均和子采样。使用吉他和弦来开发所提出的特征提取。总的来说,我们提出的特征提取方法如下。首先,对输入信号进行FFT变换。其次,变换后信号的左半部分依次使用SHPS(简化谐波积谱)、对数缩放、段平均和子采样进行处理。子采样的输出是所提特征提取的结果。测试结果表明,所提出的特征提取方法在和弦识别系统中是非常有效的。对于识别率在98%以上的类别,和弦识别系统只需要7个特征提取系数。此外,对于识别率在90%以上的类别,和弦识别系统只需要6个特征提取系数的个数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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