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Acoustic modeling problem for automatic speech recognition system: conventional methods (Part Ⅰ)

机译:自动语音识别系统的声学建模问题:常规方法(第一部分)

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In automatic speech recognition (ASR) systems, the speech signal is captured and parameterized at front end and evaluated at back end using the statistical framework of hidden Markov model (HMM). The performance of these systems depend critically on both the type of models used and the methods adopted for signal analysis. Researchers have proposed a variety of modifications and extensions for HMM based acoustic models to overcome their limitations. In this review, we summarize most of the research work related to HMM-ASR which has been carried out during the last three decades. We present all these approaches under three categories, namely conventional methods, refinements and advancements of HMM. The review is presented in two parts (papers): (i) An overview of conventional methods for acoustic phonetic modeling, (ii) Refinements and advancements of acoustic models. Part I explores the architecture and working of the standard HMM with its limitations. It also covers different modeling units, language models and decoders. Part II presents a review on the advances and refinements of the conventional HMM techniques along with the current challenges and performance issues related to ASR.
机译:在自动语音识别(ASR)系统中,使用隐马尔可夫模型(HMM)的统计框架在前端捕获语音信号并对其进行参数设置,并在后端对其进行评估。这些系统的性能主要取决于所用模型的类型和信号分析所采用的方法。研究人员针对基于HMM的声学模型提出了各种修改和扩展,以克服其局限性。在这篇综述中,我们总结了在过去三十年中开展的与HMM-ASR相关的大多数研究工作。我们将所有这些方法归为三类,即常规方法,HMM的改进和改进。这篇综述分为两部分(论文):(i)声学语音建模的传统方法概述,(ii)声学模型的改进和改进。第一部分探讨了标准HMM的体系结构和工作及其局限性。它还涵盖了不同的建模单元,语言模型和解码器。第二部分介绍了传统HMM技术的进步和改进,以及与ASR相关的当前挑战和性能问题。

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