语音识别的声学建模:隐马尔可夫模型和超越?

M. Gales
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引用次数: 8

摘要

隐马尔可夫模型(hmm)仍然是自动语音识别系统中声学模型的主要形式。然而,多年来,用于ASR的HMM的形式和训练已经得到了扩展和修改,因此,目前在最先进的语音识别系统中使用的形式与30年前最初提出的形式有很大不同。本讲座将回顾多年来提出的两个更重要的扩展:辨析训练;以及说话人与环境的适应。判别训练的使用现在很普遍,基于最小贝叶斯训练和最小分类误差的形式被应用于数百小时语音数据训练的系统。讲座将描述这些当前的方法,并讨论基于大利润训练方法的方案的当前趋势。基于线性变换的说话人自适应是说话人自适应的主要形式。当前的方法,包括扩展到线性变换和基于模型的噪声鲁棒性技术,以及趋势也将被描述。本文将详细介绍自适应/噪声变换的各种形式、训练准则和自适应训练的方法。讲座的最后一部分将讨论当前HMM框架之外的研究。将描述基于判别模型和函数以及非参数方法的方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Acoustic modelling for speech recognition: Hidden Markov models and beyond?
Hidden Markov models (HMMs) are still the dominant form of acoustic model used in automatic speech recognition (ASR) systems. However over the years the form, and training, of the HMM for ASR have been extended and modified, so that the current forms used in state-of-the-art speech recognition systems are very different to those originally proposed thirty years ago. This talk will review two of the more important extensions that have been proposed over the years: discriminative training; and speaker and environment adaptation. The use of discriminative training is now common with forms based on minimum Bayes' training and minimum classification error being applied to systems trained on many hundreds of hours of speech data. The talk will describe these current approaches, as well as discussing the current trends towards schemes based on large-margin training approaches. Linear transform based speaker adaptation is the dominant form for speaker adaptation. Current approaches, including extensions to linear transforms and model-based noise robustness techniques, and trends will also be described. Details of the various forms of the adaptation/noise transformation, training criterion and approaches for adaptive training will be given. The final part of the talk will discuss research beyond the current HMM framework. Schemes based on both discriminative models and functions, as well as non-parametric approaches will be described.
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