In this paper, an innovative approach to microwave imaging that combines qualitative imaging and deep learning is presented. The goal is to set a framework for a reliable and user-independent retrieval of the shapes of unknown targets. To this end, the proposed approach exploits an inversion technique known as orthogonality sampling method, which is capable of providing a qualitative estimation of the shape of targets in real-time. The output of the qualitative inversion is processed by a deep learning fully convolutional network called U-Net. U-Net automatically generates binary masks depicting the geometrical properties of the targets, i.e., separates the scattering objects (foreground) from the background. A quantitative assessment of th...
The quantitative inspection of unknown targets or bodies by means of microwave tomography requires a...
for the past few years, researchers hold a strong interests on knowledge-aided object-oriented high-...
Over the last few decades, deep learning has been considered to be powerful tool in the classificati...
In this paper an innovative approach to microwave imaging, which combines a qualitative imaging tech...
In this paper, an innovative microwave imaging approach that combines deep learning techniques and q...
In the last years, there is a growing interest in the integration of deep learning (DL) in microwave...
(1) Background: In this paper, an artificial neural network approach for effective and real-time qua...
Electromagnetic imaging is an emerging technology widely applied in many fields, such as medical ima...
This work aims to simplify the characterization process of coded-apertures for computational imaging...
We perform the principal verification of reconstructing object surface images by using deep learning...
In this work, a novel technique is proposed that combines the Born iterative method, based on a quad...
This paper presents a new microwave imaging method using artificial neural networks to localize an o...
A convolutional neural network (CNN) based deep learning (DL) technique for electromagnetic imaging ...
International audienceIn this chapter, we analyzed some applications of deep learning methods to ele...
In the past, many conventional algorithms, such as self-adaptive dynamic differential evolution and ...
The quantitative inspection of unknown targets or bodies by means of microwave tomography requires a...
for the past few years, researchers hold a strong interests on knowledge-aided object-oriented high-...
Over the last few decades, deep learning has been considered to be powerful tool in the classificati...
In this paper an innovative approach to microwave imaging, which combines a qualitative imaging tech...
In this paper, an innovative microwave imaging approach that combines deep learning techniques and q...
In the last years, there is a growing interest in the integration of deep learning (DL) in microwave...
(1) Background: In this paper, an artificial neural network approach for effective and real-time qua...
Electromagnetic imaging is an emerging technology widely applied in many fields, such as medical ima...
This work aims to simplify the characterization process of coded-apertures for computational imaging...
We perform the principal verification of reconstructing object surface images by using deep learning...
In this work, a novel technique is proposed that combines the Born iterative method, based on a quad...
This paper presents a new microwave imaging method using artificial neural networks to localize an o...
A convolutional neural network (CNN) based deep learning (DL) technique for electromagnetic imaging ...
International audienceIn this chapter, we analyzed some applications of deep learning methods to ele...
In the past, many conventional algorithms, such as self-adaptive dynamic differential evolution and ...
The quantitative inspection of unknown targets or bodies by means of microwave tomography requires a...
for the past few years, researchers hold a strong interests on knowledge-aided object-oriented high-...
Over the last few decades, deep learning has been considered to be powerful tool in the classificati...