淡江大學機構典藏:Item 987654321/75109
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    題名: A New Method for Measuring Similarity Between Two GMMs
    作者: Ting, Chuan-Wei;Chen, Li-Ching;He, Chih-Liang
    貢獻者: 淡江大學統計學系
    關鍵詞: Similarity between two GMMs;Hypothesis testing;HMM
    日期: 2011-06
    上傳時間: 2012-03-13 01:41:25 (UTC+8)
    出版者: Toroku: ICIC International
    摘要: This study presents a new method for measuring similarity between two Gaussian mixture models (GMMs) to discover how to compensate for variations in the topology of adaptive hidden Markov models (HMM). The aims of the proposed scheme is to determine whether a new state topology with different variations should be added to existing acoustic models in response to the addition of training data. The testing of two Gaussian densities is frequently used in the sharing of parameters between Gaussian components of HMM. In this work, we extend such hypothesis to measure similarities between two GMMs and estimate the statistic from the proposed test through the summation of two gamma distributions. A new HMM topology is automatically generated according to a level of significance. The dataset-dependent characteristics and variations are handled with an adaptive HMM topology. Experiments on speech recognition tasks show that the proposed testing scheme performs significantly better than the standard HMM with a comparable size of parameters.
    關聯: ICIC Express Letters 5(6), pp.1839-1844
    DOI: 
    顯示於類別:[統計學系暨研究所] 期刊論文

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