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Deep Architectures for Articulatory Inversion

机译:深度艺术反演的深层架构

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We implement two deep architectures for the acoustic-articulatory inversion mapping problem: a deep neural network and a deep trajectory mixture density network. We find that in both cases, deep architectures produce more accurate predictions than shallow architectures and that this is due to the higher expressive capability of a deep model and not a consequence of adding more adjustable parameters. We also find that a deep trajectory mixture density network is able to obtain better inversion accuracies than smoothing the results of a deep neural network. Our best model obtained an average root mean square error of 0.885 mm on the MNGU0 test dataset.
机译:我们为声学闭形反转映射问题实施了两个深层架构:深度神经网络和深轨道混合密度网络。我们发现,在这两种情况下,深度架构都会产生比浅架构更准确的预测,这是由于深层模型的更高表现能力,而不是添加更多可调参数的结果。我们还发现深轨道混合密度网络能够获得比平滑深神经网络的结果更好的反转精度。我们最好的模型在MNGU0测试数据集上获得了0.885 mm的平均均方根误差。

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