用于ICSI会议记录器的多扬声器语音活动检测

T. Pfau, Daniel P. W. Ellis, Andreas Stolcke
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引用次数: 114

摘要

作为会议环境中语音识别项目的一部分,我们收集了多通道会议录音的语料库。考虑到参与者有单独的麦克风,我们期望扬声器活动的识别是直截了当的,但简单的方法产生了不可接受的错误标签,主要是由于附近扬声器之间的串扰和通道特性的广泛变化。因此,我们开发了一种更复杂的多通道语音活动检测方法,使用简单的隐马尔可夫模型(HMM)。将基线HMM语音活动检测器扩展到使用混合高斯函数来实现对不同说话者在不同条件下的鲁棒性。特征归一化和互相关处理用于增加信道独立性和检测串扰。使用能量归一化和基于互相关的后处理使得帧错误率相对降低了35%。语音识别实验表明,在这种多扬声器设置下,使用语音活动检测器的输出对识别器的输入进行预分割是有益的,可以将单词错误率提高到人工回合标记的10%以内。
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Multispeaker speech activity detection for the ICSI meeting recorder
As part of a project into speech recognition in meeting environments, we have collected a corpus of multichannel meeting recordings. We expected the identification of speaker activity to be straightforward given that the participants had individual microphones, but simple approaches yielded unacceptably erroneous labelings, mainly due to crosstalk between nearby speakers and wide variations in channel characteristics. Therefore, we have developed a more sophisticated approach for multichannel speech activity detection using a simple hidden Markov model (HMM). A baseline HMM speech activity detector has been extended to use mixtures of Gaussians to achieve robustness for different speakers under different conditions. Feature normalization and crosscorrelation processing are used to increase the channel independence and to detect crosstalk. The use of both energy normalization and crosscorrelation based postprocessing results in a 35% relative reduction of the frame error rate. Speech recognition experiments show that it is beneficial in this multispeaker setting to use the output of the speech activity detector for presegmenting the recognizer input, achieving word error rates within 10% of those achieved with manual turn labeling.
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