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An Efficient Peak Valley Detection Based VAD Algorithm for Robust Detection of Speech Auditory Brainstem Responses

机译:一种有效的基于峰谷检测的VAD算法,用于语音听觉脑干反应的鲁棒检测

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Voice Activity Detection (VAD) problem considers detecting the presence of speech in a noisy signal. The speechon-speech classification task is not as trivial as it appears, and most of the VAD algorithms fail when th e level of background noise increases. In this research we are presenting a new technique for Voice Activity Detection (VAD) in EEG collected brain stem speech evoked potentials data [7, 8, 9]. This one is spectral subtraction method in which we have developed our own mathematical formula for the peak valley detection (PVD) of the frequency spectra to detect the voice activity [1]. The purpose of this research is to compare the performance of this SNR based PVD (SNRPVD ) method over Zero-Crossing rate detector [5] and statistical analysis based algorithms [10]. We have put into application of these three algorithms on these particular data sets of this experiment [7, 8, 9] and VAD is verified and compared the results of these three. MATLAB routines were developed on these particular methodologies. Finally we concluded that the method of SNRPVD surely performing better than the ZCR and statistical algorithms
机译:语音活动检测(VAD)问题考虑了检测嘈杂信号中语音的存在。语音/非语音分类任务并不像看起来那么琐碎,并且大多数VAD算法在背景噪声级别增加时都会失败。在这项研究中,我们提出了一种在脑电图收集的脑干语音诱发电位数据中进行语音活动检测(VAD)的新技术[7,8,9]。这是一种频谱相减法,其中,我们已经开发了自己的数学公式,用于频谱的峰谷检测(PVD)以检测语音活动[1]。本研究的目的是比较过零速率检测器[5]和基于统计分析的算法[10]的基于SNR的PVD(SNRPVD)方法的性能。我们将这三种算法应用于本实验的这些特定数据集[7、8、9],并验证了VAD并比较了这三种算法的结果。 MATLAB例程是根据这些特定方法开发的。最后我们得出结论,SNRPVD方法的性能肯定优于ZCR和统计算法

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