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Statistical voice activity detection using a multiple observation likelihood ratio test

机译:使用多重观察似然比检验进行统计语音活动检测

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摘要

Currently, there are technology barriers inhibiting speech processing systems that work in extremely noisy conditions from meeting the demands of modern applications. This letter presents a new voice activity detector (VAD) for improving speech detection robustness in noisy environments and the performance of speech recognition systems. The algorithm defines an optimum likelihood ratio test (LRT) involving multiple and independent observations. The so-defined decision rule reports significant improvements in speechonspeech discrimination accuracy over existing VAD methods that are defined on a single observation and need empirically tuned hangover mechanisms. The algorithm has an inherent delay that, for several applications, including robust speech recognition, does not represent a serious implementation obstacle. An analysis of the overlap between the distributions of the decision variable shows the improved robustness of the proposed approach by means of a clear reduction of the classification error as the number of observations is increased. The proposed strategy is also compared to different VAD methods, including the G.729, AMR, and AFE standards, as well as recently reported algorithms showing a sustained advantage in speechonspeech detection accuracy and speech recognition performance.
机译:当前,存在技术上的障碍,阻碍了在非常嘈杂的条件下工作的语音处理系统无法满足现代应用的需求。这封信提出了一种新的语音活动检测器(VAD),用于提高嘈杂环境中语音检测的鲁棒性和语音识别系统的性能。该算法定义了一个涉及多个独立观测值的最佳似然比检验(LRT)。如此定义的决策规则报告了语音/非语音辨别准确性的显着提高,优于现有的VAD方法,这些方法是在单个观察值上定义的,并且需要根据经验调整宿醉机制。该算法具有固有的延迟,对于某些应用程序(包括健壮的语音识别)而言,它并不构成严重的实现障碍。对决策变量分布之间的重叠进行的分析表明,随着观察次数的增加,分类误差的明显减少将提高所提出方法的鲁棒性。还将所提出的策略与不同的VAD方法(包括G.729,AMR和AFE标准)以及最近报告的在语音/非语音检测准确性和语音识别性能方面显示出持续优势的算法进行了比较。

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