基于矢量量化模型的文本无关说话人识别的杂交处理

Mohammed Djeghader, Qin Huang
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引用次数: 0

摘要

本文利用矢量量化方法研究了基于模板模型的独立说话人识别系统的性能。模板模型的实现平台基于一个比较过程来识别失真评分最小的说话人模型。为了分析系统的决策及其置信度,引入阈值决策作为判定条件。因此,提出了一个关于决策质量的新概念。此外,该阈值返回一个判别标准,用于选择在匹配过程中使用的训练模型,并且允许与第二个SIS聚类。根据研究结果,采用本文提出的方法,可以得出以下结论:达到了期望的性能。作为实现,我们已经能够定制一个基于SIS-VQ模型的杂交过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybridization process for text-independent speaker identification based on vector quantization model
This paper examines performances of an independent Speaker Identification System (SIS) based on a template model using a Vector Quantization (VQ) method. Template model is characterized by the implementation platform based on a comparison process where the speaker model with the smallest distortion score is identified. In order to analyze the decision of the system and its confidence, a thresholding decision was introduced as a verdict condition. Thus, a new notion around decision quality was performed. Moreover, this threshold returns a discriminative criterion for selecting the training models used in the matching process and clustering with a second SIS will be allowed. According to the results, it was concluded as through the use of the proposed method; the desired performance was reached. As fulfillment, we have been able to custom a Hybridization process based on SIS-VQ model.
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