GPR-OdomNet: Difference and Similarity-Driven Odometry Estimation Network for Ground Penetrating Radar-Based Localization

Computer Vision & MultiModal AI
Published: arXiv: 2511.17457v1
Authors

Huaichao Wang Xuanxin Fan Ji Liu Haifeng Li Dezhen Song

Abstract

When performing robot/vehicle localization using ground penetrating radar (GPR) to handle adverse weather and environmental conditions, existing techniques often struggle to accurately estimate distances when processing B-scan images with minor distinctions. This study introduces a new neural network-based odometry method that leverages the similarity and difference features of GPR B-scan images for precise estimation of the Euclidean distances traveled between the B-scan images. The new custom neural network extracts multi-scale features from B-scan images taken at consecutive moments and then determines the Euclidean distance traveled by analyzing the similarities and differences between these features. To evaluate our method, an ablation study and comparison experiments have been conducted using the publicly available CMU-GPR dataset. The experimental results show that our method consistently outperforms state-of-the-art counterparts in all tests. Specifically, our method achieves a root mean square error (RMSE), and achieves an overall weighted RMSE of 0.449 m across all data sets, which is a 10.2\% reduction in RMSE when compared to the best state-of-the-art method.

Paper Summary

Problem
Precise localization of robots and vehicles in challenging weather and environmental scenarios is a significant problem in autonomous driving. Existing methods often struggle to accurately estimate distances in adverse conditions, such as urban canyons, tunnels, or under weather conditions, which can pose safety challenges.
Key Innovation
A new neural network-based odometry method, called GPR-OdomNet, has been introduced to address this problem. It leverages the similarity and difference features of Ground Penetrating Radar (GPR) B-scan images to estimate the Euclidean distances traveled between consecutive images. This approach is unique in capturing both high-level and subtle features in the images.
Practical Impact
The GPR-OdomNet method has the potential to enhance the reliability and robustness of localization in challenging weather or environmental scenarios. By accurately estimating distances, it can improve the overall performance of autonomous driving systems, making them safer and more efficient. The method can also be applied to other areas, such as robotics and surveillance, where precise localization is crucial.
Analogy / Intuitive Explanation
Imagine trying to navigate a dark room by feeling the walls with your hands. The GPR-OdomNet method is like a more advanced version of this, where it uses the radar signals to "feel" the subsurface features of the environment, allowing it to estimate the distances traveled with high accuracy.
Paper Information
Categories:
cs.CV
Published Date:

arXiv ID:

2511.17457v1

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