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Normalization of articulatory data through Procrustes transformations and analysis-by-synthesis

机译:通过促进转化和逐合作分析的明晰度数据规范化

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We describe and compare three methods that can be used to normalize articulatory data across speakers. The methods seek to explain systematic anatomical differences between a source and target speaker without modifying the articulatory velocities of the source speaker. The first method is the classical Procrustes transform, which allows for a global translation, rotation, and scaling of articulator positions. We present an extension to the Procrustes transform that allows independent translations of each articulator. The additional parameters provide a 35% increase in articulatory similarity between pairs of speakers when compared to classical Procrustes. The proposed extension is finally coupled with a data-driven articulatory synthesizer in an analysis-by-synthesis loop to select model parameters that best explain the predicted acoustic (rather than articulatory) differences. This normalization method is able to increase acoustic similarity between source and the target speaker by 34%. However, it also reduces articulatory similarity by 22%, which suggest that improvements in acoustic similarity do not necessarily require an increase in articulatory similarity.
机译:我们描述和比较,可以用于整个音箱规范化关节数据的三种方法。这些方法试图解释一个源和目标说话者之间的系统解剖学上的差异,而无需修改所述源说话人的关节的速度。第一种方法是经典普鲁克变换,它允许一个全球性的平移,旋转,及咬合位置的缩放。我们提出的扩展普鲁克转换,允许每个发音器官的独立翻译。附加参数提供对扬声器之间关节相似度增加35%时相比,古典普鲁克。所提出的扩展是最后再加上在分析按合成回路数据驱动关节合成器来选择模型参数最好地解释预测声(而非关节)的差异。该归一化方法能够通过34%,以增加源和目标说话者之间的声音的相似性。然而,它也由22%,这表明,在音响类似改进并不一定需要在关节相似的增加减少了关节相似。

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