Improving the Autoregressive Modeling Method in Random Noise Suppression of GPR Data Using Undecimated Discrete Wavelet Transform

B. Oskooi, Amin Ebrahimi Bardar, Ali Goodarzi
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Abstract

Geophysics has played a significant and efficient role in studying geological structures over the past decades as the goal of geophysical data acquisition is to investigate underground phenomena with the highest possible level of accuracy. The ground penetrating radar (GPR) method is used as a nondestructive method to reveal shallow structures by beaming electromagnetic waves through the Earth and recording the received reflections, albeit inevitably, along with random noise. Various types of noise affect GPR data, among the most important of which are random noise resulting from arbitrary motions of particles during data acquisition. Random noise which exists always and at all frequencies, along with coherent noise, reduces the quality of GPR data and must be reduced as much as possible. Over the recent years, discrete wavelet transform has proved to be an efficient tool in signal processing, especially in image and signal compressing and noise suppression. It also allows for obtaining an accurate understanding of the signal properties. In this study, we have used the autoregression in both wavelet and f-x domains to suppress random noise in synthetic and real GPR data. Finally, we compare noise suppression in the two domains. Our results reveal that noise suppression is conducted more efficiently in the wavelet domain due to decomposing the signal into separate subbands and exclusively applying the method parameters in autoregression modeling for each subband.
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非消差离散小波变换改进探地雷达数据随机噪声抑制自回归建模方法
过去几十年来,地球物理在研究地质构造方面发挥了重要而有效的作用,因为地球物理数据采集的目标是以尽可能高的精度调查地下现象。探地雷达(GPR)方法是一种非破坏性的方法,通过向地球发射电磁波并记录接收到的反射,尽管不可避免地会伴随着随机噪声,但它可以揭示浅层结构。各种类型的噪声影响探地雷达数据,其中最重要的是在数据采集过程中由于粒子的任意运动而产生的随机噪声。随机噪声和相干噪声总是存在于所有频率,会降低探地雷达数据的质量,必须尽可能地降低。近年来,离散小波变换已被证明是一种有效的信号处理工具,特别是在图像和信号压缩以及噪声抑制方面。它还允许获得对信号特性的准确理解。在本研究中,我们使用小波域和f-x域的自回归来抑制合成和真实GPR数据中的随机噪声。最后,我们比较了两个领域的噪声抑制。我们的研究结果表明,由于将信号分解为单独的子带,并在每个子带的自回归建模中专门应用方法参数,因此在小波域中可以更有效地进行噪声抑制。
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