Fast speaker verification on mobile phone data using boosted slice classifiers

A. Roy, M. Magimai.-Doss, S. Marcel
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引用次数: 4

Abstract

In this work, we investigate a novel computationally efficient speaker verification (SV) system involving boosted ensembles of simple threshold-based classifiers. The system is based on a novel set of features called “slice features”. Both the system and the features were inspired by the recent success of pixel comparison-based ensemble approaches in the computer vision domain. The performance of the proposed system was evaluated through speaker verification experiments on the MOBIO corpus containing mobile phone speech, according to a challenging protocol. The system was found to perform reasonably well, compared to multiple state-of-the-art SV systems, with the benefit of significantly lower computational complexity. Its dual characteristics of good performance and computational efficiency could be important factors in the context of SV system implementation on portable devices like mobile phones.
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使用增强切片分类器对手机数据进行快速说话者验证
在这项工作中,我们研究了一种新的计算效率高的说话人验证(SV)系统,该系统涉及简单阈值分类器的增强集合。该系统基于一组被称为“切片特征”的新特征。该系统和特征都受到了最近在计算机视觉领域基于像素比较的集成方法的成功启发。根据一个具有挑战性的协议,通过在包含手机语音的MOBIO语料库上的说话人验证实验来评估该系统的性能。与多个最先进的SV系统相比,该系统的性能相当好,而且计算复杂度显著降低。其良好的性能和计算效率的双重特性可能是在移动电话等便携式设备上实现SV系统的重要因素。
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