Diffuse optical tomography is a promising imaging modality that provides functional information of the soft biological tissues, with prime imaging applications including breast and brain tissue in-vivo. This modality uses near infrared light( 600nm-900nm) as the probing media, giving an advantage of being non-ionizing imaging modality. The image reconstruction problem in diffuse optical tomography is typically posed as a least-squares problem that minimizes the difference between experimental and modeled data with respect to optical properties. This problem is non-linear and ill-posed, due to multiple scattering of the near infrared light in the biological tissues, leading to infinitely many possible solutions. The traditional methods emplo...
Diffuse optical tomography (DOT) is one of the ways to probe highly scattering media such as tissue ...
Two techniques to regularize the diffuse optical tomography inverse problem were compared for a vari...
Abstract—The sparse recovery methods utilize the `p-norm based regularization in the estimation prob...
Purpose: Developing a computationally efficient automated method for the optimal choice of regulariz...
Diffuse optical tomography uses near infrared (NIR) light as the probing media to re-cover the distri...
Diffuse optical tomography (DOT) is an emerging technique that utilizes light in the near infrared s...
The inverse problem in the diffuse optical tomography is known to be nonlinear, ill-posed, and somet...
Diffuse optical tomography (DOT) is favorable to analyze physical records in organic tissue with a s...
Diffuse optical tomography allows quantification of hemoglobin, oxygen saturation, and water in tiss...
Biomedical optical imaging is capable of providing functional information of the soft bi-ological ti...
Near-infrared light can be used as a three dimensional imaging tool, called diffuse optical tomograp...
Near-infrared light can be used as a three dimensional imaging tool, called diffuse optical tomograp...
Diffuse Optical Tomography (DOT) is a non-invasive imaging modality used in clinical diagnosis for e...
Topical review of recent trends in Modeling and Regularization methods of Diffuse Optical Tomography...
Traditional image reconstruction methods in rapid dynamic diffuse optical tomography employ l(2)-nor...
Diffuse optical tomography (DOT) is one of the ways to probe highly scattering media such as tissue ...
Two techniques to regularize the diffuse optical tomography inverse problem were compared for a vari...
Abstract—The sparse recovery methods utilize the `p-norm based regularization in the estimation prob...
Purpose: Developing a computationally efficient automated method for the optimal choice of regulariz...
Diffuse optical tomography uses near infrared (NIR) light as the probing media to re-cover the distri...
Diffuse optical tomography (DOT) is an emerging technique that utilizes light in the near infrared s...
The inverse problem in the diffuse optical tomography is known to be nonlinear, ill-posed, and somet...
Diffuse optical tomography (DOT) is favorable to analyze physical records in organic tissue with a s...
Diffuse optical tomography allows quantification of hemoglobin, oxygen saturation, and water in tiss...
Biomedical optical imaging is capable of providing functional information of the soft bi-ological ti...
Near-infrared light can be used as a three dimensional imaging tool, called diffuse optical tomograp...
Near-infrared light can be used as a three dimensional imaging tool, called diffuse optical tomograp...
Diffuse Optical Tomography (DOT) is a non-invasive imaging modality used in clinical diagnosis for e...
Topical review of recent trends in Modeling and Regularization methods of Diffuse Optical Tomography...
Traditional image reconstruction methods in rapid dynamic diffuse optical tomography employ l(2)-nor...
Diffuse optical tomography (DOT) is one of the ways to probe highly scattering media such as tissue ...
Two techniques to regularize the diffuse optical tomography inverse problem were compared for a vari...
Abstract—The sparse recovery methods utilize the `p-norm based regularization in the estimation prob...