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Estimating the position of mistracked coil of EMA data using GMM-based methods

机译:使用基于GMM的方法估算EMA数据的误读线圈的位置

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Kinematic arti dilatory data are important for researches of speech production, articulatory speech synthesis, robust speech recognition, and speech inversion. Electromagnetic Articulograph (EMA) is a widely used instrument for collecting kinematic articulatory data. However, in EMA experiment, one or more coils attached to articulators are possible to be mistracked due to various reasons. To make full use of the EMA data, we attempt to reconstruct the location of mistracked coils with the methods based on Gaussian Mixture Model (GMM). These methods approximate the probability density function of the positions for the concerned coil given the positions of the other coils, then elaborating regression functions by using Minimum Mean Square Error (MMSE) and Maximum Likelihood (ML) methods. The results indicate that: i.) The positions of mistracked coils could be reconstructed from the positions of correctly tracked coils with the RMSE between 1mm and 1.5mm; ii.) The performance can be further improved by incorporating the velocity information in most cases.
机译:运动ARTI DILATORATA数据对于语音生产,明晰语音合成,强大的语音识别和语音反演来说很重要。电磁铰接仪(EMA)是一种用于收集运动学剖查数据的广泛使用的仪器。然而,在EMA实验中,由于各种原因,可以在铰接器上附接到铰接器的一个或多个线圈。为了充分利用EMA数据,我们试图将误读线圈的位置与基于高斯混合模型(GMM)的方法进行重建。这些方法近似于给定其他线圈的位置的相关线圈的位置的概率密度函数,然后通过使用最小均方误差(MMSE)和最大似然(ML)方法来阐述回归功能。结果表明:i。)可以从正确跟踪线圈的位置重建误读线圈的位置,其RMSE在1mm和1.5mm之间; II。)通过在大多数情况下纳入速度信息,可以进一步提高性能。

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