Application of Intrinsic Time-Scale Decomposition in Ground Penetrating Radar Data Processing
DOI:
https://doi.org/10.54097/82jpv455Keywords:
Intrinsic Time-scale Decomposition, Ground Penetrating Radar, Data ProcessingAbstract
In order to improve the accuracy of Ground Penetrating Radar image analysis and interpretation, to realize the effective detection of tunnel structure, as well as to improve the performance of its application in engineering inspection, this study adopts the intrinsic time-scale decomposition method to process the Ground Penetrating Radar data. By analyzing the processed data, we find that this method has significant effect in improving the accuracy and stability of Ground Penetrating Radar data processing, and this study is of great significance for the practical application of Ground Penetrating Radar.
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