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SPEAKER IDENTIFICATION PERFORMANCE ENHANCEMENT USING GAUSSIAN MIXTURE MODEL WITH GMM CLASSIFICATION POST-PROCESSOR

机译:使用GMM分类的高斯混合模型使用GASussian混合模型提高扬声器识别性能增强

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In this paper the application of Gaussian mixture model (GMM) classifier is investigated as an efficient post-processing method to enhance the performance of GMM-based speaker identification systems; such as Gaussian mixture model universal background model (GMM-UBM) scheme. The proposed classifier presents outstanding performance while its computational complexity is almost negligible compared to the main GMM system. Moreover, the effects of the model order of GMM classifier is studied using experimental method. Experimental results verify the superior performance of applying GMM post-processor while the proper selection of model order for this GMM has a great impact on the overall performance of the system.
机译:本文研究了高斯混合模型(GMM)分类器的应用是一种有效的后处理方法,以增强基于GMM的扬声器识别系统的性能;如高斯混合模型通用背景模型(GMM-UBM)方案。建议的分类器具有出色的性能,而其计算复杂性几乎可以忽略于GMM系统。此外,使用实验方法研究了GMM分类器的模型顺序的影响。 Experimental results verify the superior performance of applying GMM post-processor while the proper selection of model order for this GMM has a great impact on the overall performance of the system.

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