Speech Audio Synthesis from Tagged MRI and Non-Negative Matrix Factorization via Plastic Transformer.

Xiaofeng Liu, Fangxu Xing, Maureen Stone, Jiachen Zhuo, Sidney Fels, Jerry L Prince, Georges El Fakhri, Jonghye Woo
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Abstract

The tongue's intricate 3D structure, comprising localized functional units, plays a crucial role in the production of speech. When measured using tagged MRI, these functional units exhibit cohesive displacements and derived quantities that facilitate the complex process of speech production. Non-negative matrix factorization-based approaches have been shown to estimate the functional units through motion features, yielding a set of building blocks and a corresponding weighting map. Investigating the link between weighting maps and speech acoustics can offer significant insights into the intricate process of speech production. To this end, in this work, we utilize two-dimensional spectrograms as a proxy representation, and develop an end-to-end deep learning framework for translating weighting maps to their corresponding audio waveforms. Our proposed plastic light transformer (PLT) framework is based on directional product relative position bias and single-level spatial pyramid pooling, thus enabling flexible processing of weighting maps with variable size to fixed-size spectrograms, without input information loss or dimension expansion. Additionally, our PLT framework efficiently models the global correlation of wide matrix input. To improve the realism of our generated spectrograms with relatively limited training samples, we apply pair-wise utterance consistency with Maximum Mean Discrepancy constraint and adversarial training. Experimental results on a dataset of 29 subjects speaking two utterances demonstrated that our framework is able to synthesize speech audio waveforms from weighting maps, outperforming conventional convolution and transformer models.

通过塑料变压器从标记磁共振成像和非负矩阵因式分解合成语音音频
舌头的三维结构错综复杂,由局部功能单元组成,在语音生成过程中起着至关重要的作用。使用标记磁共振成像测量时,这些功能单元会显示出内聚位移和衍生量,从而促进复杂的语音生成过程。研究表明,基于非负矩阵因式分解的方法可以通过运动特征来估计功能单元,从而得到一组构件和相应的加权图。研究加权图与语音声学之间的联系,可为了解复杂的语音生成过程提供重要启示。为此,在这项工作中,我们利用二维频谱图作为代理表示,并开发了一个端到端的深度学习框架,用于将加权图转换为相应的音频波形。我们提出的塑光变换器(PLT)框架基于方向积相对位置偏置和单级空间金字塔池化,因此能够将大小可变的加权图灵活处理为固定大小的频谱图,而不会造成输入信息丢失或维度扩展。此外,我们的 PLT 框架还能有效模拟宽矩阵输入的全局相关性。为了在训练样本相对有限的情况下提高生成的频谱图的真实度,我们采用了带有最大均值差异约束和对抗训练的成对语篇一致性。在 29 个受试者说两个语篇的数据集上进行的实验结果表明,我们的框架能够根据加权图合成语音音频波形,优于传统的卷积和变换模型。
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