Fast locally linear embedding algorithm for exemplar-based voice conversion

Yu-Huai Peng, Chin-Cheng Hsu, Yi-Chiao Wu, Hsin-Te Hwang, Yi-Wen Liu, Yu Tsao, H. Wang
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Abstract

The locally linear embedding (LLE) algorithm has been proven to have high output quality and applicability for voice conversion (VC) tasks. However, the major shortcoming of the LLE-based VC approach is the time complexity (especially in the matrix inversion process) during the conversion phase. In this paper, we propose a fast version of the LLE algorithm that significantly reduces the complexity. In the proposed method, each locally linear patch on the data manifold is described by a pre-computed cluster of exemplars, and thus the major part of on-line computation can be carried out beforehand in the off-line phase. Experimental results demonstrate that the VC performance of the proposed fast LLE algorithm is comparable to that of the original LLE algorithm and that a real-time VC system becomes possible because of the highly reduced time complexity.
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基于样本的语音转换快速局部线性嵌入算法
局部线性嵌入(LLE)算法已被证明具有较高的输出质量和适用于语音转换(VC)任务。然而,基于lle的VC方法的主要缺点是在转换阶段的时间复杂度(特别是在矩阵反演过程中)。在本文中,我们提出了一个快速版本的LLE算法,显著降低了复杂度。在该方法中,数据流形上的每个局部线性斑块都由预先计算的样例簇来描述,因此在线计算的大部分可以在离线阶段预先进行。实验结果表明,本文提出的快速LLE算法的VC性能与原LLE算法相当,并且由于大大降低了时间复杂度,使实时VC系统成为可能。
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