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Discriminant local information distance preserving projection for text-independent speaker recognition

机译:区分局部信息的距离保留投影,用于与文本无关的说话人识别

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摘要

A novel method is presented based on a statistical manifold for text-independent speaker recognition. After feature extraction, speaker recognition becomes a sequence classification problem. By discarding time information, the core task is the comparison of multiple sample sets. Each set is assumed to be governed by a probability density function (PDF). We estimate the PDFs and place the estimated statistical models on a statistical manifold. Fisher information distance is applied to compute distance between adjacent PDFs. Discriminant local preserving projection is used to push adjacent PDFs which belong to different classes apart to further improve the recognition accuracy. Experiments were carried out on the NIST SRE08 tel-tel database. Our presented method gave an excellent performance.
机译:提出了一种基于统计流形的独立于文本的说话人识别的新方法。特征提取后,说话人识别成为序列分类问题。通过丢弃时间信息,核心任务是比较多个样本集。假定每个集合都由概率密度函数(PDF)控制。我们估计PDF并将估计的统计模型放在统计流形上。 Fisher信息距离应用于计算相邻PDF之间的距离。判别局部保存投影用于将属于不同类别的相邻PDF分开,以进一步提高识别精度。实验是在NIST SRE08 tel-tel数据库上进行的。我们提出的方法具有出色的性能。

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