Parallel processing capabilities in the process of speech recognition

Rakhimov Mekhriddin Fazliddinovich, Berdanov Ulug'bek Abdumurodovich
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引用次数: 13

Abstract

A Speech recognition is one of the important process of information technology. Speech recognition plays a key role in many systems like voice control, IP-telephony, personal identification, recognition of individual words and phrases, accepting applications for reference services and searching system. There are many researching companies in this area, which developing and improving methods, algorithms and applications for the segmentation of the speech signal and for the calculation of parametric indicators of the selected fragments of the speech signals. In the preliminary stages of speech processing is being implemented algorithms for the allocation of phonetic characteristics, which are subjected to syntactic and semantic analysis in subsequent stages. In isolating the phonetic characteristics of the input speech signals the calculation cepstral characteristics one of the important processes in speech recognition. The Mel-frequency cepstrum is gives good results for isolating phonetic characteristics of speech signals. The calculation of Mel-frequency cepstral coefficients takes a lot of time in speech recognition process. This is clearly evident in real time systems like IP-telephony. The calculation of Mel-frequency cepstral coefficients takes a lot of time in speech recognition process. This is clearly evident in real time systems like a IP-telephony. For the solving these problem we need to create a stream computing. A practical solution of the problem of faster processing is the use of parallel computing algorithms. The hardware platform implementation of parallel algorithms for calculation of Mel-frequency cepstral coefficients can be multi-core processors.
语音识别过程中的并行处理能力
语音识别是信息技术的重要过程之一。语音识别在语音控制、ip电话、个人身份识别、单个单词和短语识别、接受参考服务申请和搜索系统等许多系统中起着关键作用。在这一领域有许多研究公司,他们开发和改进了语音信号的分割方法、算法和应用,并计算了语音信号中所选片段的参数指标。在语音处理的初级阶段,实现了语音特征的分配算法,这些语音特征在后续阶段进行句法和语义分析。在分离输入语音信号的语音特征时,倒谱特征的计算是语音识别的重要过程之一。mel频率倒谱在分离语音信号的语音特征方面有很好的效果。在语音识别过程中,mel频率倒谱系数的计算耗费了大量的时间。这在像ip电话这样的实时系统中非常明显。在语音识别过程中,mel频率倒谱系数的计算耗费了大量的时间。这在像ip电话这样的实时系统中非常明显。为了解决这些问题,我们需要创建一个流计算。快速处理问题的一个实际解决方案是使用并行计算算法。实现mel频率倒谱系数计算并行算法的硬件平台可以是多核处理器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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