文本独立语言识别系统采用DHMM具有新的特点

M. Sadanandam, V. Prasad, V. Janaki, A. Nagesh
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引用次数: 6

摘要

口语识别是一项从未知的言语中识别语言的任务。本文描述了一个文本独立的语言识别系统,该系统利用通用码本和离散隐马尔可夫模型(DHMM)的语音信号的MFCC特征衍生的新特征,与文献中现有的基于电话的系统相比,以更少的计算时间实现了非常好的LID识别性能。在这项工作中,将语音信号的MFCC特征向量转换成新的特征向量。这种LID方法包括使用新特性和DHMM训练生成通用代码本,每种语言一个DHMM。实验是在OGI和印度语言数据库上进行的,包括泰卢固语、泰米尔语、印地语、马拉地语、马拉雅拉姆语和卡纳达语等六种语言。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Text independent language recognition system using DHMM with new features
Spoken Language Identification is a task of recognizing the language from an unknown utterance of speech. This paper describes a text independent language recognition system using new features derived from MFCC feature of speech signal with a common code book and discrete hidden Markov models (DHMM) to achieve a very good LID recognition performance with less computation time comparing with that of a state of art phone based systems available in literature. In this work, MFCC feature vectors of speech signal are transformed into new feature vectors. This LID approach includes generation of a common codebook using new features and training of DHMM, one for each language. The experiments are carried out on the database of OGI and Indian language consists of six languages namely Telugu, Tamil, Hindi, Marathi, Malayalam and Kannada.
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