基于SKA-TDNN的含噪藏语人识别方法

Zhenye Gan, Ziqian Qu, Jincheng Li, Yue Yu
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引用次数: 0

摘要

近年来,语音增强应用技术的研究具有重要的实用价值。同时,说话人识别作为一种非常有价值的生物特征识别技术得到了广泛的研究和应用。然而,语音增强和说话人识别技术在藏语中的应用却很少。由于缺乏语音增强后端处理,说话人识别系统可能导致语音质量低、可理解性低。本文构建了SKA-TDNN网络的后端结构框架和Wave-U-Net模型,实现了有噪声藏语人的验证,并对模型进行了改进和优化。在说话人识别方面,我们将SKA- tdnn模型结构与多尺度SKA (msSKA)相结合,更好地对不同持续时间的话语进行建模。在语音增强的后端处理中,采用WAVE-U-NET结构,并引入进一步改进的优化架构。实验结果表明,改进的SKA- TDNN模型在说话人验证方面比传统的调查VGG模型降低了5.225%,比ECAPA -TDNN模型降低了1.5%,在语音增强方面接近0.94 STOI。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A method of noisy Tibetan speakers verification based on SKA-TDNN
In recent years, the research of speech enhancement application technology has important practical value. At the same time, speaker recognition is widely studied and used as a very valuable biometric recognition technology. However, the application of speech enhancement and speaker recognition technology in Tibetan is few. Due to the lack of speech enhancement back-end processing, the speaker recognition system may lead to low speech quality and low intelligibility. In this paper, the backend structure framework of SKA-TDNN network and Wave-U-Net model is constructed to realize noisy Tibetan speaker verification, and the model is improved and optimized. For speaker recognition, we use the model structure of SKA-TDNN in combination with multiscale SKA (msSKA) to better model utterances with different durations. In the back-end processing of speech enhancement, we use WAVE-U-NET structure and introduce further improved optimization architecture. Experimental results show that the improved SKA- TDNN model in speaker verification than traditional investigate VGG model was reduced by 5.225%, than ECAPA -TDNN model was reduced by 1.5%, and got close to 0.94 STOI in speech enhancement.
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