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A Nonlinear Dynamic Modelling for Speech Recognition using Recurrence Plot - A Dynamic Bayesian Approach

机译:使用复发绘制的语音识别非线性动态建模 - 一种动态贝叶斯方法

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The paper describes about a novel nonlinear feature extraction technique based upon Recurrence Plot(RP). This plot not only helps in visualizing the system dynamics but also can be quantified. The Recurrence Quantification Analysis (RQA) characterizes various aspects of a dynamic system and makes it a suitable technique for feature extraction. We have taken three prime quantification techniques namely Recurrence Rate, Entropy and Average Diagonal Length. The information about the system gets distributed in these quantities. Hence we need a model that is capable of taking into account the information from all the three RQA techniques. Dynamic Bayesian Networks (DBNs) can model these information very efficiently. For this purpose we have used Factorial Hidden Markov Model (FHMM) which is a special case of DBNs. The proposed method works well even in presence of noise when compared with the conventional technique.
机译:本文介绍了基于复发图(RP)的新型非线性特征提取技术。此绘图不仅有助于可视化系统动态,还可以有助于量化。复发量化分析(RQA)表征动态系统的各个方面,并使其成为特征提取的合适技术。我们已经采取了三种主要量化技术,即复发率,熵和平均对角线长度。有关系统的信息以这些数量分发。因此,我们需要一种能够考虑所有三个RQA技术的信息的模型。动态贝叶斯网络(DBNS)可以非常有效地绘制这些信息。为此目的,我们已经使用了因素隐藏的马尔可夫模型(FHMM),这是一个特殊的DBNS案例。与传统技术相比,所提出的方法即使存在噪声也很好。

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