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Refinement of HMM Model Parameters for Punjabi Automatic Speech Recognition (PASR) System

机译:旁遮普自动语音识别(PASR)系统的HMM模型参数的改进

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摘要

An automatic speech recognition system follows an approach of pattern matching, which consists of a training phase and testing phase. Despite advancement in training phase, the performance of the acoustic model is adverse while adopting the statistical technique like hidden Markov model (HMM). However, HMM-based speech system faces high computational complexity and becomes challenging to provide accuracy during isolated Punjabi lexicon. As the corpus of the system increases, the complexity of training phase will also increase drastically. The redundancy and confusion occurred between feature distributions in training phase of the system. This paper proposes an approach for the generation of HMM parameters using two hybrid classifiers such as GA+ HMM and DE+ HMM. The proposed technique focuses on refinement of processed feature vectors after calculating its mean and variance. The refined parameters are further employed in the generation of HMM parameters that help in reduction of training complexity of the system. The proposed techniques are compared with an existing technique such as HMM on benchmark database and self-developed corpus in clean, noisy, and real-time environments. The results show the performance improvement in pattern matching of spoken utterance when demonstrated on large vocabulary isolated Punjabi lexicons.
机译:自动语音识别系统遵循模式匹配的方法,该方法包括训练阶段和测试阶段。尽管训练阶段有所进步,但采用像隐马尔可夫模型(HMM)这样的统计技术时,声学模型的性能仍然很差。但是,基于HMM的语音系统面临较高的计算复杂性,并且在孤立的旁遮普语词典中提供准确性变得颇具挑战性。随着系统语料库的增加,训练阶段的复杂性也将急剧增加。在系统训练阶段,特征分布之间存在冗余和混乱。本文提出了一种使用两个混合分类器(例如GA + HMM和DE + HMM)生成HMM参数的方法。所提出的技术着重于在计算出特征向量的均值和方差后对特征向量进行细化。在生成HMM参数的过程中进一步采用了改进的参数,这些参数有助于降低系统的训练复杂度。将提出的技术与现有技术(例如基准数据库上的HMM和在干净,嘈杂的实时环境中自行开发的语料库)进行比较。结果表明,在孤立的大型词汇旁遮普词库上进行演示时,语音话语模式匹配的性能得到了改善。

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