Publication | Closed Access
Analysis of i-vector length normalization in speaker recognition systems
960
Citations
9
References
2011
Year
Unknown Venue
EngineeringMachine LearningI-vector Length NormalizationGaussian AssumptionsGenerative SystemSpeech RecognitionData ScienceSpeaker IdentificationSpeaker DiarizationRobust Speech RecognitionGenerative ModelStatisticsHealth SciencesGenerative ModelsComputer ScienceNist Sre 2010Signal ProcessingSimple Length NormalizationGaussian ProcessSpeech ProcessingStatistical InferenceGenerative AiSpeech PerceptionSpeaker Recognition
We present a method to boost the performance of probabilistic generative models that work with i-vector representations. The proposed approach deals with the nonGaussian behavior of i-vectors by performing a simple length normalization. This non-linear transformation allows the use of probabilistic models with Gaussian assumptions that yield equivalent performance to that of more complicated systems based on Heavy-Tailed assumptions. Significant performance improvements are demonstrated on the telephone portion of NIST SRE 2010.
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