自回归fx法与软、硬阈值可调品质因子小波变换TQWT抑制探地雷达随机噪声的比较

Amin Ebrahimi Bardar, B. Oskooi, A. Goudarzi
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引用次数: 2

摘要

探地雷达是一种利用高频电磁波研究浅层的可控源地球物理方法。该方法的分辨率取决于目标与周围电介质的电性能差异、目标的几何形状和所使用的带宽。小波变换在信号分析和噪声抑制中有着广泛的应用。此外,小波域允许信号行为的局部精确描述。傅里叶系数代表了所有时间的分量,因此局部事件必须用相位特征来描述,而相位特征可以在很长一段时间内消除或增强。最后,自回归(AR)的基础是对数据进行合适的模型拟合,从而在实际应用中从数据过程中获得更多的信息。回归模型(AR)参数的估计是非常重要的。为了获得比其他模型更高分辨率的光谱估计,递归算子是一种合适的工具。一般来说,使用Auto Regression模型要容易得多。结果表明,软阈值模式下的TQWT对随机噪声的衰减效果远远优于硬阈值模式下的TQWT和自回归fx方法。
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Comparison of GPR Random Noise Attenuation Using Autoregressive-FX Method and Tunable Quality Factor Wavelet Transform TQWT with Soft and Hard Thresholding
Ground Penetration Radar is a controlled source geophysical method which uses high frequency electromagnetic waves to study shallow layers. Resolution of this method depends on difference of electrical properties between target and surrounding electrical medium, target geometry and used bandwidth. The wavelet transform is used extensively in signal analysis and noise attenuation. In addition, wavelet domain allows local precise descriptions of signal behavior. The Fourier coefficient represents a component for all time and therefore local events must be described by the phase characteristic which can be abolished or strengthened over a large period of time. Finally basis of Auto Regression (AR) is the fitting of an appropriate model on data, which in practice results in more information from data process. Estimation of the parameters of the regression model (AR) is very important. In order to obtain a higher-resolution spectral estimation than other models, recursive operator is a suitable tool. Generally, it is much easier to work with an Auto Regression model. Results shows that the TQWT in soft thresholding mode can attenuate random noise far better than TQWT in hard thresholding mode and Autoregressive-FX method.
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