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On the use of nearest feature line for speaker identification

机译:关于使用最近的特征线进行说话人识别

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摘要

As a new pattern classification method, nearest feature line (NFL) provides an effective way to tackle the sort of pattern recognition problems where only limited data are available for training. In this paper, we explore the use of NFL for speaker identification in terms of limited data and examine how the NFL performs in such a vexing problem of various mismatches between training and test. In order to speed up NFL in decision-making, we propose an alternative method for similarity measure. We have applied the improved NFL to speaker identification of different operating modes. Its text-dependent performance is better than the dynamic time warping (DTW) on the Ti46 corpus, while its computational load is much lower than that of DTW. Moreover, we propose an utterance partitioning strategy used in the NFL for better performance. For the text-independent mode, we employ the NFL to be a new similarity measure in vector quantization (VQ), which causes the VQ to perform better on the KING corpus. Some computational issues on the NFL are also discussed in this paper. © Elsevier Science B.V. All rights reserved.
机译:作为一种新的模式分类方法,最近特征线(NFL)提供了一种有效的方法来解决仅可用于训练的有限数据的那种模式识别问题。在本文中,我们从有限的数据角度探讨了NFL在说话人识别中的应用,并研究了NFL在训练和测试之间存在各种不匹配的棘手问题中的表现。为了加快NFL的决策速度,我们提出了一种相似性度量的替代方法。我们已将改进的NFL应用于不同操作模式的说话人识别。它的文本相关性能优于Ti46语料库上的动态时间规整(DTW),而其计算量却大大低于DTW。此外,我们提出了一种在NFL中使用的话语划分策略,以实现更好的性能。对于独立于文本的模式,我们将NFL用作矢量量化(VQ)中的一种新的相似性度量,这会使VQ在KING语料上表现更好。本文还讨论了NFL的一些计算问题。 ©Elsevier Science B.V.保留所有权利。

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