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A Fast Two-Stage Dynamic Programming Algorithm for Change-Points Model with Application in Speech Signal

机译:语音信号变化点模型的快速两阶段动态规划算法

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In multiple change-points model, the dynamic programming (DP) algorithm can be use to obtain the maximum likelihood estimation for a sequence of data from multivariate normal distribution. Since the algorithm has a quadratic complexity in data size n, it is computationally burdensome if the data size n is large. In this paper we present a fast two-stage dynamic programming (TSDP) through the window method. In TSDP algorithm, the first stage is to use the window method based on the log-likelihood ratio measure to find a subset of candidate change points. The second stage is to apply DP algorithm on the chosen subset to detect the position of change points. The proposed algorithm of change-points will be used for the boundary detection of speech signal by finding the abrupt spectral difference change of adjacent frames. Some simulated data sets and the speech data are investigated for DP and TSDP algorithms. In comparison of CPU times, the TSDP algorithm can be up to 34.96 and 74.02 times faster than the DP algorithm for the simulated data and the speech data respectively. The results show that our algorithm works very well. It substantially reduces the computation load for large data size n.
机译:在多变化点模型中,动态规划(DP)算法可用于从多元正态分布中获取数据序列的最大似然估计。由于该算法在数据大小n中具有二次复杂度,因此,如果数据大小n大,则在计算上比较麻烦。在本文中,我们通过窗口方法提出了一种快速的两阶段动态编程(TSDP)。在TSDP算法中,第一步是使用基于对数似然比度量的窗口方法来找到候选变化点的子集。第二阶段是对所选子集应用DP算法以检测变化点的位置。所提出的变化点算法将通过发现相邻帧的突然频谱差异变化而用于语音信号的边界检测。针对DP和TSDP算法研究了一些模拟数据集和语音数据。比较CPU时间,对于仿真数据和语音数据,TSDP算法分别比DP算法快34.96和74.02倍。结果表明,我们的算法效果很好。对于大数据大小n,它大大减少了计算负担。

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