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Modelling Data Dispersion Degree In Automatic Robust Estimation For Multivariate Gaussian Mixture Models With An Application To Noisy Speech Processing

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1Modelling Data Dispersion Degree In Automatic Robust Estimation For Multivariate Gaussian Mixture Models With An Application To Noisy Speech Processing

 The trimming scheme with a prefixed cutoff portion is known as a method of improving the robustness of statistical models such as multivariate Gaussian mixture models (MG-MMs) in small scale tests by alleviating the impacts of outliers. However, when this method is applied to real-world data, such as noisy speech processing, it is hard to know the optimal cut-off portion to remove the outliers and sometimes removes useful data samples as well. In this paper, we propose a new method based on measuring the dispersion degree (DD) of the training data to avoid this problem, so as to realise automatic robust estimation for MGMMs. The DD model is studied by using two different measures. For each one, we theoretically prove that the DD of the data samples in a context of MGMMs approximately obeys a specific (chi or chi-square) distribution. The proposed method is evaluated on a real-world application with a moderately-sized speaker recognition task. Experiments show that the proposed method can significantly improve the robustness of the conventional training method of GMMs for speaker recognition.

“Modelling Data Dispersion Degree In Automatic Robust Estimation For Multivariate Gaussian Mixture Models With An Application To Noisy Speech Processing” Metadata:

  • Title: ➤  Modelling Data Dispersion Degree In Automatic Robust Estimation For Multivariate Gaussian Mixture Models With An Application To Noisy Speech Processing
  • Language: English

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The book is available for download in "texts" format, the size of the file-s is: 10.33 Mbs, the file-s for this book were downloaded 83 times, the file-s went public at Thu Aug 25 2016.

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2Modelling Data Dispersion Degree In Automatic Robust Estimation For Multivariate Gaussian Mixture Models With An Application To Noisy Speech Processing

The trimming scheme with a prefixed cutoff portion is known as a method of improving the robustness of statistical models such as multivariate Gaussian mixture models (MG-MMs) in small scale tests by alleviating the impacts of outliers. However, when this method is applied to real-world data, such as noisy speech processing, it is hard to know the optimal cut-off portion to remove the outliers and sometimes removes useful data samples as well. In this paper, we propose a new method based on measuring the dispersion degree (DD) of the training data to avoid this problem, so as to realise automatic robust estimation for MGMMs. The DD model is studied by using two different measures. For each one, we theoretically prove that the DD of the data samples in a context of MGMMs approximately obeys a specific (chi or chi-square) distribution. The proposed method is evaluated on a real-world application with a moderately-sized speaker recognition task. Experiments show that the proposed method can significantly improve the robustness of the conventional training method of GMMs for speaker recognition.

“Modelling Data Dispersion Degree In Automatic Robust Estimation For Multivariate Gaussian Mixture Models With An Application To Noisy Speech Processing” Metadata:

  • Title: ➤  Modelling Data Dispersion Degree In Automatic Robust Estimation For Multivariate Gaussian Mixture Models With An Application To Noisy Speech Processing
  • Language: English

“Modelling Data Dispersion Degree In Automatic Robust Estimation For Multivariate Gaussian Mixture Models With An Application To Noisy Speech Processing” Subjects and Themes:

Edition Identifiers:

Downloads Information:

The book is available for download in "texts" format, the size of the file-s is: 10.61 Mbs, the file-s for this book were downloaded 164 times, the file-s went public at Mon Feb 24 2014.

Available formats:
Abbyy GZ - Animated GIF - Archive BitTorrent - DjVu - DjVuTXT - Djvu XML - JPEG Thumb - Metadata - Scandata - Single Page Processed JP2 ZIP - Text PDF -

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