The sparse recovery methods utilize the l(p)-normbased regularization in the estimation problem with 0 <= p <= 1. These methods have a better utility when the number of independent measurements are limited in nature, which is a typical case for diffuse optical tomographic image reconstruction problem. These sparse recovery methods, along with an approximation to utilize the l(0)-norm, have been deployed for the reconstruction of diffuse optical images. Their performancewas compared systematically using both numerical and gelatin phantom cases to show that these methods hold promise in improving the reconstructed image quality
Purpose: Developing a computationally efficient automated method for the optimal choice of regulariz...
Diffuse optical tomography is a promising imaging modality that provides functional information of t...
The image reconstruction problem encountered in diffuse optical tomographic imaging is ill-posed in ...
Abstract—The sparse recovery methods utilize the `p-norm based regularization in the estimation prob...
The sparse estimation methods that utilize the l(p)-norm, with p being between 0 and 1, have shown b...
Traditional image reconstruction methods in rapid dynamic diffuse optical tomography employ l(2)-nor...
Spectrally constrained diffuse optical tomography (SCDOT) is known to improve reconstruction in diff...
A novel approach that can more effectively use the structural information provided by the traditiona...
Spectrally constrained diffuse optical tomography (SCDOT) is known to improve reconstruction in diff...
The inverse problem in the diffuse optical tomography is known to be nonlinear, ill-posed, and somet...
Diffuse optical tomography (DOT) is an emerging technique that utilizes light in the near infrared s...
Two techniques to regularize the diffuse optical tomography inverse problem were compared for a vari...
Diffuse Optical Tomography (DOT) is a non-invasive imaging modality used in clinical diagnosis for e...
Diffuse optical tomography is a novel molecular imaging technology for small animal studies. Most kn...
Two techniques to regularize the diffuse optical tomography inverse problem were compared for a vari...
Purpose: Developing a computationally efficient automated method for the optimal choice of regulariz...
Diffuse optical tomography is a promising imaging modality that provides functional information of t...
The image reconstruction problem encountered in diffuse optical tomographic imaging is ill-posed in ...
Abstract—The sparse recovery methods utilize the `p-norm based regularization in the estimation prob...
The sparse estimation methods that utilize the l(p)-norm, with p being between 0 and 1, have shown b...
Traditional image reconstruction methods in rapid dynamic diffuse optical tomography employ l(2)-nor...
Spectrally constrained diffuse optical tomography (SCDOT) is known to improve reconstruction in diff...
A novel approach that can more effectively use the structural information provided by the traditiona...
Spectrally constrained diffuse optical tomography (SCDOT) is known to improve reconstruction in diff...
The inverse problem in the diffuse optical tomography is known to be nonlinear, ill-posed, and somet...
Diffuse optical tomography (DOT) is an emerging technique that utilizes light in the near infrared s...
Two techniques to regularize the diffuse optical tomography inverse problem were compared for a vari...
Diffuse Optical Tomography (DOT) is a non-invasive imaging modality used in clinical diagnosis for e...
Diffuse optical tomography is a novel molecular imaging technology for small animal studies. Most kn...
Two techniques to regularize the diffuse optical tomography inverse problem were compared for a vari...
Purpose: Developing a computationally efficient automated method for the optimal choice of regulariz...
Diffuse optical tomography is a promising imaging modality that provides functional information of t...
The image reconstruction problem encountered in diffuse optical tomographic imaging is ill-posed in ...