Utilizing Deep Learning Techniques for the Classification of Spoken Languages in India

Priyesha Patel, Ayushi Falke, Dipen Waghela, Shah Vishwa
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Abstract

In Western countries, speech-recognition applications are accepted. In East Asia, it isn't as common. The complexity of the language might be one of the main reasons for this latency. Furthermore, multilingual nations such as India must be considered in order to achieve language recognition (words and phrases) utilizing speech signals. In the last decade, experts have been clamoring for more study on speech. In the initial part of the pre-processing step, a pitch and audio feature extraction technique were used, followed by a deep learning classification method, to properly identify the spoken language. Various feature extraction approaches will  be discussed in this review, along with their advantages and disadvantages. Also discussed were the distinctions between various machine learning and deep learning approaches. Finally, it will point the way for future study in Indian spoken language recognition, as well as AI technology.              
利用深度学习技术对印度口语进行分类
在西方国家,语音识别应用已被接受。在东亚,这种情况并不普遍。语言的复杂性可能是造成这种延迟的主要原因之一。此外,要利用语音信号实现语言识别(单词和短语),还必须考虑印度等多语言国家。近十年来,专家们一直在呼吁对语音进行更多的研究。在预处理步骤的初始部分,使用了音高和音频特征提取技术,然后使用深度学习分类方法,以正确识别口语。本综述将讨论各种特征提取方法及其优缺点。此外,还将讨论各种机器学习和深度学习方法之间的区别。最后,它将为印度口语识别以及人工智能技术的未来研究指明方向。
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