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An Adaptive Utterance Verification Framework Using Minimum Verification Error Training

机译:使用最小验证错误训练的自适应话语验证框架

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This paper introduces an adaptive and integrated utterance verification (UV) framework using minimum verification error (MVE) training as a new set of solutions suitable for real applications. UV is traditionally considered an add-on procedure to automatic speech recognition (ASR) and thus treated separately from the ASR system model design. This traditional two-stage approach often fails to cope with a wide range of variations, such as a new speaker or a new environment which is not matched with the original speaker population or the original acoustic environment that the ASR system is trained on. In this paper, we propose an integrated solution to enhance the overall UV system performance in such real applications. The integration is accomplished by adapting and merging the target model for UV with the acoustic model for ASR based on the common MVE principle at each iteration in the recognition stage. The proposed iterative procedure for UV model adaptation also involves revision of the data segmentation and the decoded hypotheses. Under this new framework, remarkable enhancement in not only recognition performance, but also verification performance has been obtained.
机译:本文介绍了一种自适应和集成话语验证(UV)框架,该框架使用最小验证误差(MVE)培训作为适合实际应用的新解决方案集。传统上,UV被认为是自动语音识别(ASR)的附加程序,因此与ASR系统模型设计分开处理。这种传统的两阶段方法通常无法应对各种各样的变化,例如新的扬声器或与原始扬声器人群或在其上训练ASR的原始声学环境不匹配的新环境。在本文中,我们提出了一种集成解决方案,以增强此类实际应用中的整体UV系统性能。通过在识别阶段的每次迭代中,基于通用MVE原理,将UV的目标模型与ASR的声学模型相适应和合并,即可完成集成。所提出的用于UV模型适应的迭代过程还涉及数据分段和已解码假设的修订。在这种新框架下,不仅在识别性能上得到了显着提高,而且在验证性能上也得到了显着提高。

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