International audienceReconstruction of 3D objects in various tomographic measurements is an important problem which can be naturally addressed within the mathematical framework of 3D tensors. In Optical Coherence Tomography, the reconstruction problem can be recast as a tensor completion problem. Following the seminal work of Candès et al., the approach followed in the present work is based on the assumption that the rank of the object to be reconstructed is naturally small, and we leverage this property by using a nuclear norm-type penalisation. In this paper, a detailed study of nuclear norm penalised reconstruction using the tubal Singular Value Decomposition of Kilmer et al. is proposed. In particular, we introduce a new, efficiently c...
Tensor completion aims to recover missing entries from partial observations for multi-dimensional da...
Spectral computed tomography (CT) can divide collected photons into multi-energy channels and gain m...
Recovering a low-rank tensor from incomplete information is a recurring problem in signal processing...
International audienceReconstruction of 3D objects in various tomographic measurements is an importa...
International audienceReconstruction of 3D objects in various tomographic measurements is an importa...
International audienceReconstruction of 3D objects in various tomographic measurements is an importa...
International audienceReconstruction of 3D objects in various tomographic measurements is an importa...
Many tasks in computer vision suffer from missing values in tensor data, i.e., multi-way data array....
Many tasks in computer vision suffer from missing values in tensor data, i.e., multi-way data array....
Abstract Tensor singular value decomposition (t‐SVD) provides a novel way to decompose a tensor. It ...
Optical coherence tomography (OCT) is an imaging modality for obtaining tomography images of subsurf...
© 2019 IEEE. This work studies the low-rank tensor completion problem, which aims to exactly recover...
Low-rank tensor recovery has been widely applied to computer vision and machine learning. Recently, ...
Inspired by the robustness and efficiency of the capped nuclear norm, in this paper, we apply it to ...
Low-rank tensor recovery has been widely applied to computer vision and machine learning. Recently, ...
Tensor completion aims to recover missing entries from partial observations for multi-dimensional da...
Spectral computed tomography (CT) can divide collected photons into multi-energy channels and gain m...
Recovering a low-rank tensor from incomplete information is a recurring problem in signal processing...
International audienceReconstruction of 3D objects in various tomographic measurements is an importa...
International audienceReconstruction of 3D objects in various tomographic measurements is an importa...
International audienceReconstruction of 3D objects in various tomographic measurements is an importa...
International audienceReconstruction of 3D objects in various tomographic measurements is an importa...
Many tasks in computer vision suffer from missing values in tensor data, i.e., multi-way data array....
Many tasks in computer vision suffer from missing values in tensor data, i.e., multi-way data array....
Abstract Tensor singular value decomposition (t‐SVD) provides a novel way to decompose a tensor. It ...
Optical coherence tomography (OCT) is an imaging modality for obtaining tomography images of subsurf...
© 2019 IEEE. This work studies the low-rank tensor completion problem, which aims to exactly recover...
Low-rank tensor recovery has been widely applied to computer vision and machine learning. Recently, ...
Inspired by the robustness and efficiency of the capped nuclear norm, in this paper, we apply it to ...
Low-rank tensor recovery has been widely applied to computer vision and machine learning. Recently, ...
Tensor completion aims to recover missing entries from partial observations for multi-dimensional da...
Spectral computed tomography (CT) can divide collected photons into multi-energy channels and gain m...
Recovering a low-rank tensor from incomplete information is a recurring problem in signal processing...