面向情感独立语言识别系统

P. Jain, K. Gurugubelli, A. Vuppala
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引用次数: 1

摘要

语言识别是多语言语音系统的重要组成部分。在各种条件下,LID系统的性能不是最优的,例如持续时间短、噪声、信道变化等。人们一直在努力提高这些条件下的性能,但尚未研究说话者情绪变化对LID系统性能的影响。观察到,在训练和测试条件之间存在情感不匹配时,LID系统的性能会下降。为此,我们研究了适应方法,通过将情感话语以适应数据集的形式纳入来提高LID系统的性能。因此,我们研究了一种叫做FAST的韵律修饰技术,通过改变话语的情感特征来提高表现,但结果并不一致,也不令人满意。在这项工作中,我们提出了一种基于循环卷积神经网络(RCNN)的体系结构与多阶段训练方法的结合,其性能优于目前最先进的LID系统,如i向量、时滞神经网络、长短期记忆和深度神经网络x向量。
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Towards Emotion Independent Language Identification System
Language Identification (LID) is an integral part of multilingual speech systems. There are various conditions under which the performance of LID systems are sub-optimal, such as short duration, noise, channel variation, and so on. There has been effort to improve performance under these conditions, but the impact of speaker emotion variation on the performance of LID systems has not been studied. It is observed that the performance of LID systems degrade in the presence of emotional mismatch between train and test conditions. To that effect, we investigated adaptation approaches for improving the performance of LID systems by incorporating emotional utterances in form of adaptation dataset. Hence, we studied a prosody modification technique called Flexible Analysis Synthesis Tool (FAST) to vary the emotional characteristics of an utterance in order to improve the performance, but the results were inconsistent and not satisfactory. In this work, we propose a combination of Recurrent Convolutional Neural Network (RCNN) based architecture with multi stage training methodology, which outperformed state-ofart LID systems such as i-vectors, time delay neural network, long short term memory, and deep neural network x-vector.
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