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Unsupervised Extraction of Meaningful Nonlinear Principal Components Applied for Voice Conversion

机译:无意义的提取有意义的非线性主成分用于语音转换

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摘要

Nonlinear Principal Component Analysis (NLPCA) is one of the most progressive computational tools developed during the last two decades. However, in spite of its proper performance in feature extraction and dimension reduction, it is considered as a blind processor which can not extract physical or meaningful factors from dataset. This paper presents a new distributed model of autoassociative neural network which increases meaningfulness degree of the extracted parameters. The model is implemented to perform Voice Conversion (VC) and, as it will be seen through comparisons, results in proper conversion quality.
机译:非线性主成分分析(NLPCA)是在过去二十年中开发的最渐进的计算工具之一。然而,尽管其特征提取和尺寸减少的适当性能,但它被认为是盲目处理器,其无法从数据集中提取物理或有意义的因素。本文提出了一种新的自动关联神经网络的分布式模型,提高了提取的参数的有意义程度。该模型实现以执行语音转换(VC),并且可以通过比较来看,导致适当的转换质量。

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