X-vectors based Urdu Speaker Identification for short utterances

M. Farooq, F. Adeeba, S. Hussain
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引用次数: 1

Abstract

In context of commercial applications, robustness of a Speaker Identification (SI) system is adversely effected by short utterances. Performance of SI systems fairly depends upon extracted feature sets. This paper investigates the effect of various feature extraction techniques on performance of i-vectors and x-vectors based Urdu speakers' identification models. The scope of this paper is restricted to text independent speaker identification for short utterances (up to 4 seconds). SI systems demand for a large data covering sufficient inter-speaker and intra-speaker variability. Available Urdu speech corpus is used to measure performance of various feature sets on SI systems. A minimum percentage Equal Error Rate (%EER) of 0.113 is achieved using x-vectors with Linear Frequency Cepstral Coefficients (LFCCs) feature set.
基于x向量的乌尔都语短话语识别
在商业应用中,短话语对说话人识别(SI)系统的鲁棒性有不利影响。SI系统的性能很大程度上取决于提取的特征集。本文研究了不同特征提取技术对基于i向量和x向量的乌尔都语识别模型性能的影响。本文的范围仅限于短话语(最多4秒)的文本独立说话人识别。SI系统需要大量的数据,包括足够的说话人之间和说话人内部的变化。可用的乌尔都语语料库用于测量SI系统中各种特征集的性能。使用具有线性频率倒谱系数(LFCCs)特征集的x向量实现了0.113的最小百分比相等错误率(%EER)。
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