We develop an efficient and adaptive sparse reconstruction approach for the recovery of spectral images from the measurements of a photon-sieve spectral imager (PSSI). PSSI is a computational imaging technique that enables higher resolution than conventional spectral imagers. Each measurement in PSSI is a superposition of the blurred spectral images; hence, the inverse problem can be viewed as a type of multi-frame deconvolution problem involving multiple objects. The transform learning-based approach reconstructs the spectral images from these superimposed measurements while simultaneously learning a sparsifying transform. This is performed using a block coordinate descent algorithm with efficient update steps. The performance is illustrat...
We develop a fast reconstruction method with convolutional sparse models for general inverse problem...
International audienceExtensive attention has been widely paid to enhance the spatial resolution of ...
International audienceExtensive attention has been widely paid to enhance the spatial resolution of ...
Compressive spectral imaging is a rapidly growing area yielding higher performance novel spectral im...
In this thesis, we develop a class of novel spectral imaging techniques that enable capabilities bey...
We develop a new compressive spectral imaging modality that utilizes a coded aperture and a photon-s...
Image deconvolution is one of the most frequently encountered inverse problems in imaging. Since nat...
Spectral imaging, the simultaneous imaging and spectroscopy of a radiating scene, is an important di...
Spectral imaging is a fundamental diagnostic technique for the study of the solar coronal plasma, an...
Spectral imaging, the sensing of spatial information as a function of wavelength, is a widely used d...
The aim of this paper is to develop a new optimization algorithm for the restoration of an image sta...
International audienceWe address the problem of joint signal restoration and parameter estimation in...
International audienceWe address the problem of joint signal restoration and parameter estimation in...
International audienceWe address the problem of joint signal restoration and parameter estimation in...
Many branches of science and engineering are concerned with the problem of recording signals from ph...
We develop a fast reconstruction method with convolutional sparse models for general inverse problem...
International audienceExtensive attention has been widely paid to enhance the spatial resolution of ...
International audienceExtensive attention has been widely paid to enhance the spatial resolution of ...
Compressive spectral imaging is a rapidly growing area yielding higher performance novel spectral im...
In this thesis, we develop a class of novel spectral imaging techniques that enable capabilities bey...
We develop a new compressive spectral imaging modality that utilizes a coded aperture and a photon-s...
Image deconvolution is one of the most frequently encountered inverse problems in imaging. Since nat...
Spectral imaging, the simultaneous imaging and spectroscopy of a radiating scene, is an important di...
Spectral imaging is a fundamental diagnostic technique for the study of the solar coronal plasma, an...
Spectral imaging, the sensing of spatial information as a function of wavelength, is a widely used d...
The aim of this paper is to develop a new optimization algorithm for the restoration of an image sta...
International audienceWe address the problem of joint signal restoration and parameter estimation in...
International audienceWe address the problem of joint signal restoration and parameter estimation in...
International audienceWe address the problem of joint signal restoration and parameter estimation in...
Many branches of science and engineering are concerned with the problem of recording signals from ph...
We develop a fast reconstruction method with convolutional sparse models for general inverse problem...
International audienceExtensive attention has been widely paid to enhance the spatial resolution of ...
International audienceExtensive attention has been widely paid to enhance the spatial resolution of ...