Cross-lingual context sharing and parameter-tying for multi-lingual speech recognition

Aanchan Mohan, R. Rose
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引用次数: 2

Abstract

This paper is concerned with the problem of building acoustic models for automatic speech recognition (ASR) using speech data from multiple languages. Techniques for multi-lingual ASR are developed in the context of the subspace Gaussian mixture model (SGMM)[2, 3]. Multi-lingual SGMM based ASR systems have been configured with shared subspace parameters trained from multiple languages but with distinct language dependent phonetic contexts and states[11, 12]. First, an approach for sharing state-level target language and foreign language SGMM parameters is described. Second, semi-tied covariance transformations are applied as an alternative to full-covariance Gaussians to make acoustic model training less sensitive to issues of insufficient training data. These techniques are applied to Hindi and Marathi language data obtained for an agricultural commodities dialog task in multiple Indian languages.
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多语言语音识别的跨语言上下文共享和参数关联
本文研究了基于多语言语音数据的自动语音识别声学模型的建立问题。多语种ASR技术是在子空间高斯混合模型(SGMM)的背景下发展起来的[2,3]。基于多语言SGMM的ASR系统已经配置了从多种语言训练的共享子空间参数,但具有不同的语言依赖的语音上下文和状态[11,12]。首先,描述了一种共享国家级目标语言和外语SGMM参数的方法。其次,采用半捆绑协方差变换作为全协方差高斯变换的替代方法,使声学模型训练对训练数据不足的问题不那么敏感。这些技术应用于印地语和马拉地语数据,这些数据是为多种印度语言的农产品对话任务获得的。
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