Automatic and efficient ground penetrating radar (GPR) data analysis remains a bottleneck, especially restricting applications in real-time monitoring systems. Deep learning approaches have good practice in automatic object identification, but their intensive data requirement has reduced their applicability. This paper developed a machine learning framework based on wavelet scattering networks to analyze GPR data for subsurface pipeline identification. Wavelet scattering network is functionally equivalent to convolutional neural networks, and its null-parameter property is intended for non-intensive datasets. A double-channel framework is designed with wavelet scattering networks followed by support vector machines to determine the existenc...
It is critical to estimate and eliminate the wavelets of ground penetrating radar (GPR), so as to op...
In this work, we present a pattern recognition system for the automatic analysis of ground penetrati...
This paper presents a comparative study of two algorithms for detecting and analyzing the characteri...
This work proposes a Machine Learning (ML) approach for the analysis and classification of Ground Pe...
The aim of this work is to exploit Machine Learning (ML) for the analysis of Ground Penetrating Rada...
Ground-penetrating radar allows the acquisition of many images for investigation of the pavement int...
In this paper, a Machine Learning (ML), and more specifically, a Deep Learning (DL) approach, is app...
Ground penetrating radar (GPR) is a geophysical inspection method that makes use of electromagnetic...
The need to classify targets and features in high-resolution imagery is of interest in applications ...
Ground Penetrating Radar (GPR) is often used for detecting non-intrusively buried targets, in road e...
Ground Penetrating Radar (GPR) is considered as one of the promising technologies to address the cha...
Ground penetrating radar is widely used for the detection of buried pipes and cables. These objects ...
In this article a new neural network based method for automatic classification of ground penetrating...
We present a novel inversion approach using a neural network to locate subsurface targets and evalua...
We present a novel inversion approach using a neural network to locate subsurface targets and evalua...
It is critical to estimate and eliminate the wavelets of ground penetrating radar (GPR), so as to op...
In this work, we present a pattern recognition system for the automatic analysis of ground penetrati...
This paper presents a comparative study of two algorithms for detecting and analyzing the characteri...
This work proposes a Machine Learning (ML) approach for the analysis and classification of Ground Pe...
The aim of this work is to exploit Machine Learning (ML) for the analysis of Ground Penetrating Rada...
Ground-penetrating radar allows the acquisition of many images for investigation of the pavement int...
In this paper, a Machine Learning (ML), and more specifically, a Deep Learning (DL) approach, is app...
Ground penetrating radar (GPR) is a geophysical inspection method that makes use of electromagnetic...
The need to classify targets and features in high-resolution imagery is of interest in applications ...
Ground Penetrating Radar (GPR) is often used for detecting non-intrusively buried targets, in road e...
Ground Penetrating Radar (GPR) is considered as one of the promising technologies to address the cha...
Ground penetrating radar is widely used for the detection of buried pipes and cables. These objects ...
In this article a new neural network based method for automatic classification of ground penetrating...
We present a novel inversion approach using a neural network to locate subsurface targets and evalua...
We present a novel inversion approach using a neural network to locate subsurface targets and evalua...
It is critical to estimate and eliminate the wavelets of ground penetrating radar (GPR), so as to op...
In this work, we present a pattern recognition system for the automatic analysis of ground penetrati...
This paper presents a comparative study of two algorithms for detecting and analyzing the characteri...