Review of Features and Classification for Spoken Indian Language Recognition using Deep Learning and Machine Learning Techniques

Shreyasi Watve, M. Patil, Arun C. Shinde
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Abstract

The most common and organic method of interpersonal communication is speech. Humanity has long aspired to creating a computer with human-like comprehension and communication abilities. To recognize language (words and phrases) using voice signals, multilingual countries like India must be taken into account. More research on speech has been demanded by specialists over the past ten years. Researchers require a specific database, or previously recorded collection of information, for that specific recognition system when they seek to construct it. There are several speech databases available for European languages, but only a small number for Indian languages. The several Speech Databases developed in various Indian languages for Text to Speech, Speaker Identification and Speech Identification systems are discussed in this article. To accurately identify the spoken language, first need to collect information from speech signal. In the initial step of the pre-processing phase, audio feature based approach were used, and then deep learning and machine learning classification methods. This survey will explore a variety of feature extraction methods as well as classification methods.
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使用深度学习和机器学习技术的印度口语识别的特征和分类综述
人际交往中最常见、最有机的方式就是言语。长期以来,人类一直渴望创造一台具有类似人类理解和沟通能力的计算机。为了识别使用语音信号的语言(单词和短语),必须考虑像印度这样的多语言国家。在过去的十年里,专家们要求对言语进行更多的研究。当研究人员试图构建特定的识别系统时,他们需要一个特定的数据库,或先前记录的信息集合。有几个欧洲语言的语音数据库,但只有少数的印度语言。本文讨论了以各种印度语言开发的用于文本到语音、说话人识别和语音识别系统的几个语音数据库。要准确识别语音,首先需要从语音信号中采集信息。在预处理阶段的初始阶段,采用基于音频特征的方法,然后采用深度学习和机器学习分类方法。本调查将探讨各种特征提取方法以及分类方法。
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