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Feature extraction based on the high-pass filtering of audio signals for Acoustic Event Classification

机译:基于声音事件分类的音频信号高通滤波的特征提取

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摘要

In this paper, we propose a new front-end for Acoustic Event Classification tasks ( AEC). First, we study the spectral characteristics of different acoustic events in comparison with the structure of speech spectra. Second, from the findings of this study, we propose a new parameterization for AEC, which is an extension of the conventional Mel-Frequency Cepstral Coefficients ( MFCC) and is based on the high pass filtering of the acoustic event signal. The proposed front-end have been tested in clean and noisy conditions and compared to the conventional MFCC in an AEC task. Results support the fact that the high pass filtering of the audio signal is, in general terms, beneficial for the system, showing that the removal of frequencies below 100-275 Hz in the feature extraction process in clean conditions and below 400-500 Hz in noisy conditions, improves significantly the performance of the system with respect to the baseline.
机译:在本文中,我们为声学事件分类任务(AEC)提出了一个新的前端。首先,我们比较语音频谱的结构来研究不同声音事件的频谱特征。其次,从这项研究的发现出发,我们提出了一种针对AEC的新参数化方法,它是对传统梅尔频率倒谱系数(MFCC)的扩展,并基于对声事件信号的高通滤波。提议的前端已经在干净嘈杂的条件下进行了测试,并且在AEC任务中与常规MFCC进行了比较。结果支持这样一个事实,即音频信号的高通滤波总体上对系统有利,表明在干净的条件下特征提取过程中去除了低于100-275 Hz的频率,而去除了低于400-500 Hz的频率。在嘈杂的条件下,相对于基准而言,可以显着提高系统的性能。

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