Special feature extraction techniques for Bangla speech

M. M. Rahaman, Anindya Das, M. Z. Nayen, Md. Saidur Rahman
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引用次数: 4

Abstract

This paper describes several feature extraction techniques, which will facilitate Automatic Speech Recognition (ASR) for Bangla speech. These techniques are applied on different sound-packets, which are essentially segments of Bangla speech. The key temporal regions in a sound-packet that contain vital information about the speech signal are identified. Some novel feature extraction methods are developed using the information contained within these key regions. It has been observed that a single feature cannot provide enough information to achieve successful automatic speech recognition; rather a combination of the features can be used effectively to increase the accuracy.
孟加拉语语音特征提取技术
本文介绍了几种特征提取技术,这些技术将促进孟加拉语语音的自动语音识别。这些技术应用于不同的声音包,这些声音包本质上是孟加拉语的片段。声音包中包含语音信号重要信息的关键时间区域被识别出来。利用这些关键区域所包含的信息,提出了一些新的特征提取方法。已经观察到,单个特征不能提供足够的信息来实现成功的自动语音识别;相反,可以有效地使用这些特征的组合来提高准确性。
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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