This paper introduces a novel deep neural network architecture for solving the inverse scattering problem in frequency domain with wide-band data, by directly approximating the inverse map, thus avoiding the expensive optimization loop of classical methods. The architecture is motivated by the filtered back-projection formula in the full aperture regime and with homogeneous background, and it leverages the underlying equivariance of the problem and compressibility of the integral operator. This drastically reduces the number of training parameters, and therefore the computational and sample complexity of the method. In particular, we obtain an architecture whose number of parameters scale sub-linearly with respect to the dimension of the in...
International audienceAn unrolled deep learning scheme for solving full- wave nonlinear inverse scat...
International audienceAn unrolled deep learning scheme for solving full- wave nonlinear inverse scat...
International audienceAn unrolled deep learning scheme for solving full- wave nonlinear inverse scat...
The first part of this thesis introduces an end-to-end deep learning architecture, called the wide-b...
Inverse scattering problems, such as those in electromagnetic imaging using phaseless data (PD-ISPs)...
We propose and demonstrate a generative deep learning approach for the shape recognition of an arbit...
Solving electromagnetic inverse scattering problems (ISPs) is challenging due to the intrinsic nonl...
Inverse medium scattering solvers generally reconstruct a single solution without an associated meas...
Solution to inverse problems is of interest in many fields of science and engineering. In nondestruc...
Abstract Inferring the properties of a scattering objective by analyzing the optical far-field respo...
Many phenomena in physics, including light, water waves, and sound, are described by wave equations....
International audienceAn unrolled deep learning scheme for solving full- wave nonlinear inverse scat...
Solving inverse problems is a fundamental component of science, engineering and mathematics. With th...
International audienceAn unrolled deep learning scheme for solving full- wave nonlinear inverse scat...
Neural networks have recently gained attention in solving inverse problems. One prominent methodolog...
International audienceAn unrolled deep learning scheme for solving full- wave nonlinear inverse scat...
International audienceAn unrolled deep learning scheme for solving full- wave nonlinear inverse scat...
International audienceAn unrolled deep learning scheme for solving full- wave nonlinear inverse scat...
The first part of this thesis introduces an end-to-end deep learning architecture, called the wide-b...
Inverse scattering problems, such as those in electromagnetic imaging using phaseless data (PD-ISPs)...
We propose and demonstrate a generative deep learning approach for the shape recognition of an arbit...
Solving electromagnetic inverse scattering problems (ISPs) is challenging due to the intrinsic nonl...
Inverse medium scattering solvers generally reconstruct a single solution without an associated meas...
Solution to inverse problems is of interest in many fields of science and engineering. In nondestruc...
Abstract Inferring the properties of a scattering objective by analyzing the optical far-field respo...
Many phenomena in physics, including light, water waves, and sound, are described by wave equations....
International audienceAn unrolled deep learning scheme for solving full- wave nonlinear inverse scat...
Solving inverse problems is a fundamental component of science, engineering and mathematics. With th...
International audienceAn unrolled deep learning scheme for solving full- wave nonlinear inverse scat...
Neural networks have recently gained attention in solving inverse problems. One prominent methodolog...
International audienceAn unrolled deep learning scheme for solving full- wave nonlinear inverse scat...
International audienceAn unrolled deep learning scheme for solving full- wave nonlinear inverse scat...
International audienceAn unrolled deep learning scheme for solving full- wave nonlinear inverse scat...