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Cloud Point Matching for Text-Independent Speaker Identification

机译:无关扬声器识别的云点匹配

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In Text-Independent speaker identification, the individual that produced some captured speech signal has to be identified without his collaboration, he might not even know that he is being the subject of an identification process. The system could not ask the individual to utter some specific word or phrase, which is precisely what is done in Text-Dependent speaker recognition. Text-Independent speaker identification is far more complicated since we cannot simply measure the similarity of an utterance of a word or phrase to another utterance made by the same speaker of the same word or phrase in which case we could use the dynamics of the speech signal. In this paper we search in the speech signal looking for voiced speech segments and estimate its first three formants, so we end up with a three-dimensional point cloud for each speaker of the collection of known speakers. To identify a speaker we have to measure the similarity of a point-cloud from an unknown speaker to the point-clouds that belong to known speakers, we do that by searching for local structures in the cloud in a way that is highly scalable and robust. We performed tests with both a collection of our own in Spanish and with the English Language Speech Database for Speaker Recognition (ELSDSR) from the Technical University of Denmark achieving results that improve recent published work with ELSDSR.
机译:在独立于文本的扬声器识别中,必须识别产生一些捕获的语音信号的个人在没有他的协作,他甚至可能都无法知道他是识别过程的主题。系统无法要求个人发出一些特定的单词或短语,这正是在文本依赖扬声器识别中所做的。自定义文本的扬声器识别远远变得更加复杂,因为我们不能简单地衡量单词或短语的话语的相似性,到由同一词或短语的同一扬声器所做的另一个话语,在这种情况下我们可以使用语音信号的动态。在本文中,我们搜索寻找有浊音语音段的语音信号,并估计其前三个塑造,因此我们最终为每个扬声器收集的每个扬声器的三维点云。要识别扬声器,我们必须测量从未知扬声器到属于已知扬声器的点云的点云的相似性,我们通过在高度可扩展和强大的方式搜索云中的本地结构来执行此操作。 。我们在西班牙语和英语语言语音数据库中进行了测试,即来自丹麦技术大学的扬声器识别(ELSDSR)的英语语音语音数据库,实现了改善近期发表的ELSDSR的结果。

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