Madikeri, SrikanthDey, SubhadeepMotlicek, Petr2019-06-182019-06-182019-06-182018-01-0110.21437/Interspeech.2018-2071https://infoscience.epfl.ch/handle/20.500.14299/156868WOS:000465363900231In Deep Neural Network (DNN) i-vector based speaker recognition systems, acoustic models trained for Automatic Speech Recognition are employed to estimate sufficient statistics for i-vector modeling. The DNN based acoustic model is typically trained on a wellresourced language like English. In evaluation conditions where enrollment and test data are not in English, as in the NIST SRE 2016 dataset, a DNN acoustic model generalizes poorly. In such conditions, a conventional Universal Background Model/Gaussian Mixture Model (UBM/GMM) based i-vector extractor performs better than the DNN based i-vector system. In this paper, we address the scenario in which one can develop a Automatic Speech Recognizer with limited resources for a language present in the evaluation condition, thus enabling the use of a DNN acoustic model instead of UBM/GMM. Experiments are performed on the Tagalog subset of the NIST SRE 2016 dataset assuming an open training condition. With a DNN i-vector system trained for Tagalog, a relative improvement of 12.1% is obtained over a baseline system trained for English.Computer Science, Artificial IntelligenceComputer Science, Theory & MethodsEngineering, Electrical & ElectronicComputer ScienceEngineeringi-vectorspeaker recognitiondeep neural networksAnalysis of Language Dependent Front-End for Speaker Recognitiontext::conference output::conference proceedings::conference paper