Litcius/Paper detail

Optimising Ground Penetrating Radar data interpretation: A hybrid approach with AI-assisted Kalman Filter and Wavelet Transform for detecting and locating buried utilities

Arasti Afrasiabi, Asaad Faramarzi, David Chapman, Alireza Keshavarzi

2024Journal of Applied Geophysics17 citationsDOIOpen Access PDF

Abstract

Ground Penetrating Radar (GPR) is widely used for detecting buried utilities, but data interpretation remains challenging due to noise and clutter. Although various methods exist for processing GPR data, the Kalman Filter (KF) has been underutilised despite its strength as an estimator. Traditional KF-based algorithms in GPR studies often rely on chi-squared hypothesis testing, which requires expert-defined thresholds and can lead to biased or uncertain outcomes. This paper introduces a novel KF-based framework that addresses these limitations. The framework employs Kalman Filters for noise reduction, with an optimisation algorithm based on a genetic algorithm to fine-tune KF input parameters. A Normalised Innovation Squared (NIS) parameter is used to generate an NIS signal function for identifying anomalies. Additionally, discrete wavelet transforms are applied to the NIS signal function for anomaly detection and localisation, using varying decomposition levels and vanishing moments. Results demonstrate a proportional relationship between wavelet decomposition levels, selected wavelets, and the detection rates of true and false positives. Statistical analysis using receiver operating characteristic curves shows that the optimal detection rate for all tested wavelets occurs at decomposition levels 5 and 6. This framework enhances GPR data interpretation with minimal user interaction, representing a step forward toward autonomy in GPR data processing and interpretation. • Hybrid Kalman Filter and Wavelet approach improves GPR data interpretation. • Kalman Filter optimised using a genetic algorithm for noise reduction. • Wavelet Transform applied to detect and locate buried utilities. • Achieved high detection rates with minimal user intervention. • Proven in diverse real-world GPR datasets for accurate anomaly detection.

Topics & Concepts

Kalman filterGround-penetrating radarInterpretation (philosophy)Computer scienceWavelet transformArtificial intelligenceWaveletRadarRemote sensingComputer visionGeologyData miningTelecommunicationsProgramming languageGeophysical Methods and ApplicationsGeophysical and Geoelectrical MethodsSeismic Waves and Analysis
Optimising Ground Penetrating Radar data interpretation: A hybrid approach with AI-assisted Kalman Filter and Wavelet Transform for detecting and locating buried utilities | Litcius