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Automatic Speaker Recognition using Transfer Learning Approach of Deep Learning Models

机译:自动扬声器识别使用深度学习模型的转移学习方法

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Speaker Recognition has been one of the most interesting yet challenging problems in the field of machine learning and artificial intelligence. It is used in the areas of human voice authentication for security purpose and identifying a person from a group of speakers. It has been a arduous task to teach a machine the differences in human voices, especially when people belong to different background like gender, language, accent, etc. This paper has used the deep learning approach to build and train two models, Artificial Neural Network (“ANN”) and Convolutional Neural Network (“CNN”), and compared their results. In former, the neural networks are fed on diverse extracted features from audio collection, whereas the latter is trained on spectrograms. Finally, transfer learning approach is deployed on both to get a viable output using limited data.
机译:演讲者认可是机器学习和人工智能领域最有趣但挑战性的最具挑战性问题之一。它用于安全目的的人类语音认证领域,并识别来自一组扬声器的人。教导机器的差异是人类声音的差异,特别是当人们属于不同的背景,语言,口音等。本文使用了建设和培训两种模型,人工神经网络的深度学习方法(“ANN”)和卷积神经网络(“CNN”),并比较它们的结果。在以前,神经网络从音频收集馈送多样化的提取特征,而后者在谱图上培训。最后,部署了转移学习方法,以获得使用有限数据的可行输出。

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