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A Signal Period Detection Algorithm Based on Morphological Self-Complementary Top-Hat Transform and AMDF

机译:基于形态自互补顶帽变换和AMDF的信号周期检测算法

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Period detection technology for weak characteristic signals is very important in the fields of speech signal processing, mechanical engineering, etc. Average magnitude difference function (AMDF) is a widely used method to extract the period of periodic signal for its low computational complexity and high accuracy. However, this method has low detection accuracy when the background noise is strong. In order to improve this method, this paper proposes a new method of period detection of the signal with single period based on the morphological self-complementary Top-Hat (STH) transform and AMDF. Firstly, the signal is de-noised by the morphological self-complementary Top-Hat transform. Secondly, the average magnitude difference function of the noise reduction sequence is calculated, and the falling trend is suppressed. Finally, a calculating adaptive threshold is used to extract the peaks at the position equal to the period of periodic signal. The experimental results show that the accuracy of periodic extraction of AMDF after Top-Hat filtering is better than that of AMDF directly. In summary, the proposed method is reliable and stable for detecting the periodic signal with weak characteristics.
机译:弱特征信号的周期检测技术在语音信号处理,机械工程等领域非常重要。平均幅度差函数(AMDF)是一种提取周期信号周期的方法,具有运算量少,精度高等优点。 。但是,当背景噪声较强时,此方法的检测精度较低。为了改进该方法,本文提出了一种基于形态学自互补Top-Hat(STH)变换和AMDF的单周期信号周期检测新方法。首先,通过形态自补Top-Hat变换对信号进行去噪。其次,计算降噪序列的平均幅度差函数,并且抑制下降趋势。最后,使用计算自适应阈值来提取等于周期信号周期的位置处的峰值。实验结果表明,Top-Hat过滤后定期提取AMDF的精度比直接使用AMDF的精度高。综上所述,该方法对于检测弱信号的周期信号是可靠,稳定的。

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