保持说话人身份的鲁棒语音编码

M. Phythian, J. Leis, S. Sridharan
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引用次数: 2

摘要

低比特率语音编码通常要求对大范围的说话人具有鲁棒性。我们在这里报告的问题是,为了存档的目的,压缩率必须最大化,但为了识别新的说话者,压缩的信息必须在以后的日期可用。新发言者可能已经记录在存档数据库中,也可能没有。正如预期的那样,与压缩的语音信息相比,识别特定说话者的能力受到损害,其方式与压缩程度有关。此外,自动说话人识别算法依赖于语音的参数化,该参数化可能无法在压缩数据流中获得所需的数量。我们在这里展示了我们的结果在识别说话人使用两种常见的方法应用于数据流产生的一类频谱矢量压缩算法。实验表明,一种简化的。与更为复杂的多元统计建模方法相比,易于计算的距离度量算法对压缩过程更加敏感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Speech Coding for the Preservation of Speaker Identity
Low bitrate speech coding usually requires robustness to a wide range of speakers. The problem which we report on here is one where the compression rate must be maximized for the purposes of archival, but the compressed information must be available at a later date for the purposes of identifying a new speaker. The new speaker may or may not have been recorded in the archived database. As would be expected, the ability to identify a particular speaker when compared to the compressed speech information is impaired, in a manner which is related to the degree of compression. Furthermore, automatic speaker recognition algorithms depend upon a parameterization of the speech which may not be available in the quantity required in the compressed data 'stream. We present here our results in identifying a speaker using two common methods applied to the data stream resulting from a class of spectral vector compression algorithms. It is shown experimentally that a simplified. easily-computed distance metric algorithm is somewhat more sensitive to the compression process when compared to a substantially more complex multivariate statistical modelling method.
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