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Data fusion for speaker parameterization by a possibility theory based method

机译:基于可能性理论的方法用于说话人参数化的数据融合

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In this paper, a speaker parameterization based on possibility theory has been developed in the experimental framework of speakers automatic identification from the acoustic data (MFCC coefficients) and anatomical data (length and thickness of the vocal cords). The data are modelled in the setting of the possibility theory which provides interesting tools of representing imprecision and uncertainty. Moreover, the constraints that govern this theory allow a wide choice for the combination of heterogeneous data. We are particularly interested by the adaptive combination rule proposed by Dubois and Prade. Thus, a fusion of acoustic and anatomical data in the form of possibility distributions is proposed. The resulting vector of this fusion is the vector representing the speaker who is the input of the second phase of the identification system that is the modeling phase.
机译:在本文中,已经在基于声音数据(MFCC系数)和解剖数据(声带的长度和厚度)的扬声器自动识别的实验框架中,开发了基于可能性理论的扬声器参数设置。在可能性理论的背景下对数据进行建模,可能性理论提供了表示不精确性和不确定性的有趣工具。此外,控制该理论的约束条件为异构数据的组合提供了广泛的选择。我们对Dubois和Prade提出的自适应组合规则特别感兴趣。因此,提出了以可能性分布形式的声学和解剖学数据的融合。该融合的最终矢量是代表说话者的矢量,该说话者是识别系统第二阶段(即建模阶段)的输入。

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