Learning to Remove Clutter in Real-World GPR Images Using Hybrid Data
Hai-Han Sun, Weixia Cheng, and Zheng Fan

TL;DR
This paper introduces CR-Net, a neural network trained on a large hybrid dataset to effectively remove clutter from real-world GPR images, improving target detection accuracy.
Contribution
The study presents a novel hybrid dataset and a specialized neural network architecture for clutter removal in GPR images, enhancing generalizability and performance.
Findings
CR-Net outperforms existing methods in clutter removal
The hybrid dataset improves model generalization
End-to-end design eliminates manual tuning
Abstract
The clutter in the ground-penetrating radar (GPR) radargram disguises or distorts subsurface target responses, which severely affects the accuracy of target detection and identification. Existing clutter removal methods either leave residual clutter or deform target responses when facing complex and irregular clutter in the real-world radargram. To tackle the challenge of clutter removal in real scenarios, a clutter-removal neural network (CR-Net) trained on a large-scale hybrid dataset is presented in this study. The CR-Net integrates residual dense blocks into the U-Net architecture to enhance its capability in clutter suppression and target reflection restoration. The combination of the mean absolute error (MAE) loss and the multi-scale structural similarity (MS-SSIM) loss is used to effectively drive the optimization of the network. To train the proposed CR-Net to remove complex and…
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Taxonomy
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Max Pooling · CR-NET · Convolution · Concatenated Skip Connection · U-Net
