The Enhancement of Seismic Signal by the Filtering Method Based on Synchrosqueezing Transform

Yan-ping Liu, Li Liu, Qi Zhang, Jing Shi
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Abstract

The Synchrosqueezing Transform (SST) is a new time-frequency analysis method which is adaptive and invertible. It can obtain high time-frequency resolution by condensing and rearranging time-frequency representation (TFR) along the frequency axis. This paper proposes a filtering method based on SST for seismic signal enhancement and random noise reduction. Through experiments on synthetic signals, it demonstrates that the performance of the new method is better than the filtering methods based on conventional time-frequency transforms such as wavelet transform and so on.
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基于同步压缩变换的滤波方法增强地震信号
同步压缩变换(SST)是一种新的时频分析方法,具有自适应和可逆的特点。通过对时频表示(TFR)沿频率轴进行压缩和重排,可以获得较高的时频分辨率。提出了一种基于海表温度的地震信号增强和随机降噪滤波方法。通过对合成信号的实验,表明新方法的滤波性能优于基于小波变换等传统时频变换的滤波方法。
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