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首页> 外文期刊>SICE Journal of Control, Measurement, and System Integration (SICE JCMSI) >Hybrid Speaker Recognition Using Universal Acoustic Model
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Hybrid Speaker Recognition Using Universal Acoustic Model

机译:通用声学模型的混合说话人识别

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摘要

We propose a novel speaker recognition approach using a speaker-independent universal acoustic model (UAM) for sensornet applications. In sensornet applications such as "Business Microscope", interactions among knowledge workers in an organization can be visualized by sensing face-to-face communication using wearable sensor nodes. In conventional studies, speakers are detected by comparing energy of input speech signals among the nodes. However, there are often synchronization errors among the nodes which degrade the speaker recognition performance. By focusing on property of the speaker's acoustic channel, UAM can provide robustness against the synchronization error. The overall speaker recognition accuracy is improved by combining UAM with the energy-based approach. For 0.1 s speech inputs and 4 subjects, speaker recognition accuracy of 94percent is achieved at the synchronization error less than 100ms.
机译:我们提出了一种新颖的说话人识别方法,该方法使用了独立于说话人的通用声学模型(UAM)进行Sensornet应用。在诸如“ Business Microscope”之类的sensornet应用程序中,可以通过使用可穿戴传感器节点感应面对面通信来可视化组织中知识工作者之间的交互。在传统研究中,通过比较节点之间输入语音信号的能量来检测说话者。但是,节点之间通常存在同步错误,这会降低说话者的识别性能。通过关注扬声器声学通道的属性,UAM可以提供针对同步误差的鲁棒性。通过将UAM与基于能量的方法相结合,可以提高总体说话者识别的准确性。对于0.1 s的语音输入和4个主题,在小于100ms的同步误差下,说话人识别精度达到94%。

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