CVAIJan 25, 2022

Estimating the Direction and Radius of Pipe from GPR Image by Ellipse Inversion Model

arXiv:2201.10184v1
Originality Incremental advance
AI Analysis

This addresses the challenge of inaccurate pipeline mapping in utility detection, offering a method to improve map accuracy, but it appears incremental as it builds on existing GPR techniques.

The paper tackles the problem of estimating pipeline direction and radius from GPR images when the detection direction is not perpendicular, proposing an ellipse inversion model that processes images and uses an iterative algorithm to determine parameters, with experiments on real-world datasets showing effectiveness.

Ground Penetrating Radar (GPR) is widely used as a non-destructive approach to estimate buried utilities. When the GPR's detecting direction is perpendicular to a pipeline, a hyperbolic characteristic would be formed on the GPR B-scan image. However, in real-world applications, the direction of pipelines on the existing pipeline map could be inaccurate, and it is hard to ensure the moving direction of GPR to be actually perpendicular to underground pipelines. In this paper, a novel model is proposed to estimate the direction and radius of pipeline and revise the existing pipeline map from GPR B-scan images. The model consists of two parts: GPR B-scan image processing and Ellipse Iterative Inversion Algorithm (EIIA). Firstly, the GPR B-scan image is processed with downward-opening point set extracted. The obtained point set is then iteratively inverted to the elliptical cross section of the buried pipeline, which is caused by the angle between the GPR's detecting direction and the pipeline's direction. By minimizing the sum of the algebraic distances from the extracted point set to the inverted ellipse, the most likely pipeline's direction and radius are determined. Experiments on real-world datasets are conducted, and the results demonstrate the effectiveness of the method.

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