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Exploring End-To-End Attention-Based Neural Networks For Native Language Identification

机译:探索基于端到端基于注意力的神经网络以进行本地语言识别

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Automatic identification of speakers' native language (L1) based on their speech in a second language (L2) is a challenging research problem that can aid several spoken language technologies such as automatic speech recognition (ASR), speaker recognition, and voice biometrics in interactive voice applications. End-to-end learning, in which the features and the classification model are learned jointly in a single system, is an emerging field in the areas of speech recognition, speaker verification and spoken language understanding. In this paper, we present our study on attention-based end-to-end modeling for native language identification on a database of 11 different L1s. Using this methodology, we can determine the native language of the speaker directly from the raw acoustic features. Experimental results from our study show that our best end-to-end model can achieve promising results by capturing speech commonalities across L1s using an attention mechanism. In addition, fusion of proposed systems with the baseline system leads to significant performance improvements.
机译:根据说话者的第二语言(L2)语音自动识别说话者的母语(L1)是一个具有挑战性的研究问题,可以帮助多种口语技术,例如交互式自动语音识别(ASR),说话者识别和语音生物识别语音应用。在单个系统中共同学习特征和分类模型的端到端学习是语音识别,说话者验证和口语理解领域的新兴领域。在本文中,我们介绍了我们基于11种不同L1的数据库上基于注意力的端到端建模以进行本地语言识别的研究。使用这种方法,我们可以直接从原始声学特征确定说话者的母语。我们研究的实验结果表明,我们最好的端到端模型可以通过使用注意力机制捕获L1之间的语音共通性来获得有希望的结果。此外,将建议的系统与基准系统融合在一起可以显着改善性能。

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