音乐特征根据胡时刻进行类型分类

Renia Lopes, Santosh V. Chapaneri, Deepak Jayaswal
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引用次数: 1

摘要

使用机器学习技术的自动音乐类型分类已经在研究和开发强大的工具来组织网络上可用的音乐收藏方面得到了普及。梅尔倒谱系数(MFCC's)已被成功地用于音乐类型分类,但它不能反映一帧梅尔滤波器相邻系数之间的相关性,也不能反映相邻帧梅尔滤波器相邻系数之间的关系。这会导致丢失有用的特性。本文从谱图中提取基于胡氏矩的特征,研究能量浓度对谱图的影响。在不同的音乐体裁下,体裁节奏的差异极大地改变了谱图图像的纹理。这改变了光谱图中的能量浓度。Hu矩不受平移、缩放和旋转的影响,可以从谱图中捕捉到MFCC没有考虑到的有用特征。由于谱矩是局部计算的,它们可以评估谱图中特定频率的能量集中强度,并证明它们是表征不同音乐类型的不同特征。基于Hu矩的特征与传统音乐特征相结合,对5种类型进行分类,准确率达到83.33%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Music features based on Hu moments for genre classification
Automated musical genre classification using machine learning techniques has gained popularity for research and development of powerful tools to organize music collections available on web. Mel cepstral co-efficients (MFCC's) have been successfully used in music genre classification but they do not reflect the correlation between the adjacent co-efficients of Mel filters of a frame neither the relation between adjacent co-efficients of Mel filters of neighboring frames. This leads to loss of useful features. In this work, Hu moment based features are extracted from the spectrogram to study impact of energy concentration in the spectrogram. Under different musical genres the difference in rhythm in genres drastically changes the texture of spectrogram image. This alters the energy concentration in spectrogram. Hu moments being invariant to translation, scaling as well as rotation can capture useful features from spectrogram that are not considered by the MFCC's. Since the spectral moments are computed locally, they can assess the intensity of energy concentration at certain frequencies in spectrogram and prove as distinct features in characterizing different genres of music. Hu moment based features along with conventional music features lead to an accuracy of 83.33% for classifying 5 genres.
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