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INCREASING ROBUSTNESS TO TRAINING-TEST MISMATCH IN SPEAKER VERIFICATION THROUGH SHALLOWSOURCE MODELLING

机译:通过CASSOWSOURCE建模提高讲话者验证中培训测试不匹配的鲁棒性

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Speaker verification is usually performed by comparing the likelihood score of the target speaker model to the likelihood score of an universal background model (UBM), and then applying a suitable threshold. For the UBM to be effective, it must be estimated from a large number of speakers. However, it is not always possible to gather enough data to estimate a robust UBM, and the verification performance may degrade if impostors, or whatever sources that generate the input signals, were not suitably modelled by the UBM. In this work, a new normalization technique is proposed, based on a shallow source model (SSM) estimated from the input utterance. A linear combination of the likelihood scores of the SSM and the UBM is used to normalize the speaker score. Speaker verification experiments were carried out on a clean-speech dataset including 204 speakers. Also, a sizeable amount of noisy, speech and non-speech signals was used to test the robustness to large training-test mismatch. Three normalization techniques were tested: UBM, smoothed UBM and the proposed combination of UBM and SSM. This latter approach yielded the best performance. The difference in performance was specially significant in the large training-test mismatch condition.
机译:通常通过将目标扬声器模型的可能性得分与通用背景模型(UBM)的可能性得分进行比较,然后应用合适的阈值来执行扬声器验证。对于UBM有效,必须从大量的扬声器估算。然而,并不总是可以收集足够的数据来估计稳健的UBM,并且验证性能可能会降低,如果冒名顶替者,或者任何产生输入信号的源都没有被UBM建模。在这项工作中,基于从输入话语估计的浅源模型(SSM),提出了一种新的归一化技术。 SSM和UBM的似然分数的线性组合用于标准化扬声器分数。演讲者验证实验是在包括204个扬声器的清洁语音数据集上进行。此外,使用大量的噪音,语音和非语音信号来测试大型训练测试不匹配的鲁棒性。测试了三种正常化技术:UBM,平滑UBM和UBM和SSM的拟合组合。后一种方法产生了最佳性能。在大型训练测试失配条件下,性能差异是特别的显着性。

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