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PLDA using Gaussian Restricted Boltzmann Machines with application to Speaker Verification

机译:使用高斯受限玻尔兹曼机的PLDA及其在说话人验证中的应用

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A novel approach to supervised dimensionality reduction is introduced, based on Gaussian Restricted Boltzmann Machines. The proposed model should be considered as the analogue of the probabilistic LDA, using undirected graphical models. The training algorithm of the model is presented while its close relation to the cosine distance is underlined. For the problem of speaker verification, we applied it to i-vectors and attained a significant improvement compared to the Fisher's Discriminant LDA projection using less than half of the number of eigenvectors required by LDA.
机译:介绍了一种基于高斯受限玻尔兹曼机的监督降维的新方法。建议的模型应使用无向图模型考虑为概率LDA的类似物。在强调模型与余弦距离的密切关系的同时,提出了模型的训练算法。对于说话人验证问题,我们将其应用于i-vector,并且与Fisher判别LDA投影相比,使用了LDA所需特征向量数量的一半以下,从而获得了显着改进。

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