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Speaker Adaptation Using ICA-Based Feature Transformation

机译:使用基于ICA的特征转换的说话人适应

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摘要

Speaker adaptation techniques are generally used to reduce speaker differences in speech recognition. In this work, we focus on the features fitted to a linear regression-based speaker adaptation. These are obtained by feature transformation based on independent component analysis (ICA), and the feature transformation matrices are estimated from the training data and adaptation data. Since the adaptation data is not sufficient to reliably estimate the ICA-based feature transformation matrix, it is necessary to adjust the ICA-based feature transformation matrix estimated from a new speaker utterance. To cope with this problem, we propose a smoothing method through a linear interpolation between the speaker-independent (SI) feature transformation matrix and the speaker-dependent (SD) feature transformation matrix. From our experiments, we observed that the proposed method is more effective in the mismatched case. In the mismatched case, the adaptation performance is improved because the smoothed feature transformation matrix makes speaker adaptation using noisy speech more robust.
机译:说话者自适应技术通常用于减少说话者在语音识别中的差异。在这项工作中,我们专注于基于线性回归的说话人适应的功能。这些是通过基于独立分量分析(ICA)的特征变换获得的,并且从训练数据和自适应数据中估计了特征变换矩阵。由于自适应数据不足以可靠地估计基于ICA的特征变换矩阵,因此有必要调整从新说话者说话声估计的基于ICA的特征变换矩阵。为了解决这个问题,我们提出了一种通过在不依赖说话者的(SI)特征变换矩阵和不依赖说话者的(SD)特征变换矩阵之间进行线性插值的平滑方法。从我们的实验中,我们观察到所提出的方法在不匹配的情况下更有效。在不匹配的情况下,由于平滑的特征变换矩阵使使用嘈杂语音的说话人自适应更加鲁棒,因此自适应性能得到了改善。

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