Toward Open-Set Text-Independent Speaker Identification in Tactical Communications

Matt B. Wolf, W. Park, J. Oh, Misty K. Blowers
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引用次数: 2

Abstract

We present the design and implementation of an open-set text-independent speaker identification system using genetic learning classifier systems (LCS). We examine the use of this system in a real-number problem domain, where there is strong interest in its application to tactical communications. We investigate different encoding methods for representing real-number knowledge and study the efficacy of each method for speaker identification. We also identify several difficulties in solving the speaker identification problems with LCS and introduce new approaches to resolve the difficulties. Experimental results show that our system successfully learns 200 voice features at accuracies of 90 % to 100 % and 15,000 features to more than 80% for the closed-set problem, which is considered a strong result in the speaker identification community. The open-set capability is also comparable to existing numeric-based methods
战术通信中开集文本无关说话人识别研究
我们提出了一个使用遗传学习分类器系统(LCS)的开放集文本无关说话人识别系统的设计和实现。我们研究了该系统在实数问题域中的使用,其中对其在战术通信中的应用有浓厚的兴趣。我们研究了实数知识的不同编码方法,并研究了每种方法对说话人识别的效果。我们还指出了使用LCS解决说话人识别问题的几个困难,并介绍了解决这些困难的新方法。实验结果表明,我们的系统成功地学习了200个语音特征,准确率在90%到100%之间,在闭集问题上学习了15000个特征,准确率在80%以上,这在说话人识别界被认为是一个很强的结果。开集能力也可与现有的基于数值的方法相媲美
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