In the past, many conventional algorithms, such as self-adaptive dynamic differential evolution and asynchronous particle swarm optimization, were used to reconstruct buried objects in the frequency domain; these were unfortunately time-consuming during the iterative, repeated computing process of the scattered field. Consequently, we propose an innovative deep convolutional neural network approach to solve the electromagnetic inverse scattering problem for buried conductors in this paper. Different shapes of conductors are buried in one half-space and the electromagnetic wave from the other half-space is incident. The shape of the conductor can be reconstructed promptly by inputting the received scattered fields measured from the upper hal...
[[abstract]]In this paper, the shape reconstruction of a perfectly conducting cylinder buried in a h...
International audienceThe detection and identification of buried inhomogeneities using electromagnet...
[[abstract]]Electromagnetic imaging of buried multiple conductors by using genetic algorithm has bee...
Electromagnetic imaging is an emerging technology widely applied in many fields, such as medical ima...
Due to the character of the original source materials and the nature of batch digitization, quality ...
In this paper, a convolutional neural network (CNN)-based deep learning (DL) architecture for the so...
An electromagnetic approach based on neural networks for the GPR investigation of buried cylinders ...
A convolutional neural network (CNN) based deep learning (DL) technique for electromagnetic imaging ...
This paper presents a new microwave imaging method using artificial neural networks to localize an o...
5 ppInternational audienceConvolutional neural networks (CNN) are appliedto the time-harmonic electr...
[[abstract]]This paper presents an inverse scattering problem for recovering the shapes of multiple ...
A backpropagation neural network was trained to estimate the spatial location (offset and depth) of ...
In this paper an innovative approach to microwave imaging, which combines a qualitative imaging tech...
[[abstract]]The frequency dependence of image reconstruction for a buried imperfectly conducting cyl...
© 2019 IEEE.We present a novel approach of using deep convolutional neural networks (CNN) to predict...
[[abstract]]In this paper, the shape reconstruction of a perfectly conducting cylinder buried in a h...
International audienceThe detection and identification of buried inhomogeneities using electromagnet...
[[abstract]]Electromagnetic imaging of buried multiple conductors by using genetic algorithm has bee...
Electromagnetic imaging is an emerging technology widely applied in many fields, such as medical ima...
Due to the character of the original source materials and the nature of batch digitization, quality ...
In this paper, a convolutional neural network (CNN)-based deep learning (DL) architecture for the so...
An electromagnetic approach based on neural networks for the GPR investigation of buried cylinders ...
A convolutional neural network (CNN) based deep learning (DL) technique for electromagnetic imaging ...
This paper presents a new microwave imaging method using artificial neural networks to localize an o...
5 ppInternational audienceConvolutional neural networks (CNN) are appliedto the time-harmonic electr...
[[abstract]]This paper presents an inverse scattering problem for recovering the shapes of multiple ...
A backpropagation neural network was trained to estimate the spatial location (offset and depth) of ...
In this paper an innovative approach to microwave imaging, which combines a qualitative imaging tech...
[[abstract]]The frequency dependence of image reconstruction for a buried imperfectly conducting cyl...
© 2019 IEEE.We present a novel approach of using deep convolutional neural networks (CNN) to predict...
[[abstract]]In this paper, the shape reconstruction of a perfectly conducting cylinder buried in a h...
International audienceThe detection and identification of buried inhomogeneities using electromagnet...
[[abstract]]Electromagnetic imaging of buried multiple conductors by using genetic algorithm has bee...