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An improved parallel model combination method for noisy speech recognition

机译:一种改进的并行模型组合方法用于噪声语音识别

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In this paper a novel method, called PC-PMC, is proposed to improve the performance of automatic speech recognition systems in noisy environments. This method is based on the parallel model combination (PMC) technique and uses the Cepstral Mean Subtraction (CMS) normalization ability and Principal Component Analysis (PCA) compression and de-correlation capabilities. It takes the advantages of both additive noise compensation of PMC and convolutive noise removal ability of CMS and PCA. The first problem to be solved in the realizing of PC-PMC is that PMC algorithm requires invertible modules in the front-end of the system while CMS normalization is not an invertible process. Also, it is required to design a framework for adaptation of the PCA transform in the presence of noise. The method proposed in this paper provides solutions to the both problems. Our evaluations are done on four different real noisy tasks using Nevisa Persian continuous speech recognition system. Experimental results demonstrate significant reduction in word error rate using PC-PMC in comparison with the standard robustness methods.
机译:本文提出了一种称为PC-PMC的新方法,以改善嘈杂环境中自动语音识别系统的性能。此方法基于并行模型组合(PMC)技术,并使用了倒谱均值减法(CMS)归一化功能和主成分分析(PCA)压缩和解相关功能。它具有PMC的附加噪声补偿以及CMS和PCA的卷积噪声消除能力的优点。实现PC-PMC时要解决的第一个问题是PMC算法需要系统前端的可逆模块,而CMS规范化不是可逆的过程。而且,需要设计一种在存在噪声的情况下适应PCA变换的框架。本文提出的方法为这两个问题提供了解决方案。我们使用Nevisa波斯语连续语音识别系统对四种不同的实际嘈杂任务进行了评估。实验结果表明,与标准鲁棒性方法相比,使用PC-PMC可以显着降低单词错误率。

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