EXPERIMENTAL RESEARCHES ON THE THRESHOLD OF AIRBORNE GRAVITY DATA DENOISING BASED ON DB WAVELET TRANSFORM
LUO Feng1,2, GUO Zhi-hong1,2, WANG Ming1,2, LUO Yao1,2, WANG Yan1
1. China Aero Geophysical Survey and Remote Sensing Center for Land and Resources, Beijing 100083, China;
2. Laboratory of Earth Observation Technology, China Aero Geophysical Survey and Remote Sensing Center for Land and Resources, Beijing 100083, China
This paper proposes a method to compute the DWT (discrete wavelet transform) coefficients using Mallat's fast algorithm with Daubechies N (N=1,…,10) wavelet series as the wavelet primary function. The authors verified the reliability of the method with a theoretical model. By using an approach to multi-layer decomposition and a strategy of threshold value in the process of the airborne gravity data denoising, the authors extracted the free air gravity anomalies by the frequency and bandwidth character of the gravity anomalies. A comparison is made by using six, seven and eight layers decomposition and by employing the soft-threshold and the hard-threshold denoising. The results demonstrate that the free air gravity anomalies extracted by this method are quite consistent with the filtered results of the GT-1A system.
罗锋, 郭志宏, 王明, 骆遥, 王艳. 基于DB小波阈值去噪的航空重力数据试验[J]. 物探与化探, 2013, 37(4): 645-654.
LUO Feng, GUO Zhi-hong, WANG Ming, LUO Yao, WANG Yan. EXPERIMENTAL RESEARCHES ON THE THRESHOLD OF AIRBORNE GRAVITY DATA DENOISING BASED ON DB WAVELET TRANSFORM. Geophysical and Geochemical Exploration, 2013, 37(4): 645-654.
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