语音和歌曲信号中准确呼吸检测算法

D. Ruinskiy, Yizhar Lavner
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引用次数: 3

摘要

语音和音频信号中预定义事件的自动可靠检测在许多应用中具有重要意义,近年来已成为广泛研究的课题。一个这样的应用是在专业录音中,其中录制的信号可能包含不需要的声音或效果,并且可以检测和处理这些声音的自动工具是非常需要的。在这项研究中,我们提出了一种有效的算法来检测语音或歌曲信号中的呼吸音,以提高录制声音的美观性。该算法的工作原理是,从几个呼吸样本的梅尔频率倒谱特征中创建一个模板特征矩阵,并将其与音频信号连续帧的特征矩阵进行比较,使用自适应距离阈值,将每帧标记为呼吸或非呼吸。初始检测随后通过基于各种波形参数的边缘检测算法进行细化,旨在划分每个呼吸事件的精确边界并消除可能的错误检测。在包含数百个呼吸音的语音和歌曲数据库上对该算法进行评估,正确识别率为94%,特异性为96%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Algorithm for Accurate Breath Detection in Speech and Song Signals
Automatic and reliable detection of pre-defined events in speech and audio signals is of great importance in many applications, and has been the subject of extensive research in recent years. One such application is in professional voice recordings, where the recorded signal may contain unwanted sounds or effects, and an automatic tool that could detect and manipulate these sounds is highly desirable. In this study we present an effective algorithm for detection of breath sounds in speech or song signals, in order to improve the aesthetics of the recorded voice. The algorithm works by creating a template feature matrix from the mel-frequency cepstral characteristics of several breath examples, and comparing it to feature matrices of consecutive frames of the audio signal, using an adaptive distance threshold, marking each frame as breathy or non-breathy. The initial detection is later refined by an edge detection algorithm, based on various waveform parameters, designed to demarcate the exact boundaries of each breath event and to eliminate possible false detections. Evaluation of the algorithm on a database of speech and songs containing several hundred breath sounds yielded a correct identification rate of 94%, with a specificity of 96%.
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