Multilingual Speech to Text using Deep Learning based on MFCC Features

P. Reddy
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Abstract

The proposed methodology presented in the paper deals with solving the problem of multilingual speech recognition. Current text and speech recognition and translation methods have a very low accuracy in translating sentences which contain a mixture of two or more different languages. The paper proposes a novel approach to tackling this problem and highlights some of the drawbacks of current recognition and translation methods. The proposed approach deals with recognition of audio queries which contain a mixture of words in two different languages - Kannada and English. The novelty in the approach presented, is the use of a next Word Prediction model in combination with a Deep Learning speech recognition model to accurately recognise and convert the input audio query to text. Another method proposed to solve the problem of multilingual speech recognition and translation is the use of cosine similarity between the audio features of words for fast and accurate recognition. The dataset used for training and testing the models was generated manually by the authors as there was no pre-existing audio and text dataset which contained sentences in a mixture of both Kannada and English. The DL speech recognition model in combination with the Word Prediction model gives an accuracy of 71% when tested on the in-house multilingual dataset. This method outperforms other existing translation and recognition solutions for the same test set. Multilingual translation and recognition is an important problem to tackle as there is a tendency for people to speak in a mixture of languages. By solving this problem, the barrier of language and communication can be lifted and thus can help people connect better and more comfortably with each other.
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基于MFCC特征的深度学习多语言语音到文本
本文提出的方法解决了多语言语音识别问题。目前的文本和语音识别和翻译方法在翻译包含两种或两种以上不同语言的混合句子时准确率很低。本文提出了一种新的方法来解决这一问题,并指出了当前识别和翻译方法的一些缺陷。所提出的方法处理包含两种不同语言(卡纳达语和英语)混合单词的音频查询的识别。该方法的新颖之处在于将下一个单词预测模型与深度学习语音识别模型相结合,以准确识别并将输入的音频查询转换为文本。另一种解决多语言语音识别和翻译问题的方法是利用单词音频特征之间的余弦相似度进行快速准确的识别。用于训练和测试模型的数据集是由作者手动生成的,因为没有预先存在的音频和文本数据集,其中包含卡纳达语和英语混合的句子。当在内部多语言数据集上测试时,DL语音识别模型与Word预测模型相结合的准确率为71%。对于相同的测试集,该方法优于其他现有的翻译和识别解决方案。多语种翻译和识别是一个需要解决的重要问题,因为人们倾向于使用多种语言。通过解决这个问题,语言和沟通的障碍可以被解除,从而可以帮助人们更好,更舒适地相互联系。
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