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Noise Invariant Frame Selection: A Simple Method to Address the Background Noise Problem for Text-independent Speaker Verification

机译:噪声不变帧选择:一种解决背景噪声问题的简单方法,用于与文本无关的说话者验证

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The performance of speaker-related systems usually degrades heavily in practical applications largely due to the presence of background noise. To improve the robustness of such systems in unknown noisy environments, this paper proposes a simple pre-processing method called Noise Invariant Frame Selection (NIFS). Based on several noisy constraints, it selects noise invariant frames from utterances to represent speakers. Experiments conducted on the TIMIT database showed that the NIFS can significantly improve the performance of Vector Quantization (VQ), Gaussian Mixture Model-Universal Background Model (GMM-UBM) and i-vector-based speaker verification systems in different unknown noisy environments with different SNRs, in comparison to their baselines. Meanwhile, the proposed NIFS-based speaker verification systems achieves similar performance when we change the constraints (hyper-parameters) or features, which indicates that it is robust and easy to reproduce. Since NIFS is designed as a general algorithm, it could be further applied to other similar tasks.
机译:扬声器相关系统的性能在实际应用中通常会由于背景噪声的存在而严重降低。为了提高此类系统在未知噪声环境中的鲁棒性,本文提出了一种简单的预处理方法,称为噪声不变帧选择(NIFS)。基于一些噪声约束,它从发声中选择噪声不变的帧来代表说话者。在TIMIT数据库上进行的实验表明,NIFS可以显着提高矢量量化(VQ),高斯混合模型-通用背景模型(GMM-UBM)和基于i-vector的扬声器验证系统的性能,这些扬声器验证系统具有不同的未知噪声环境与基线相比的SNR。同时,当我们更改约束(超参数)或功能时,所提出的基于NIFS的说话者验证系统可实现类似的性能,这表明该功能强大且易于复制。由于NIFS被设计为通用算法,因此可以进一步应用于其他类似任务。

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