Recent from talks
Interior reconstruction
Knowledge base stats:
Talk channels stats:
Members stats:
Interior reconstruction
In iterative reconstruction in digital imaging, interior reconstruction (also known as limited field of view (LFV) reconstruction) is a technique to correct truncation artifacts caused by limiting image data to a small field of view. The reconstruction focuses on an area known as the region of interest (ROI). Although interior reconstruction can be applied to dental or cardiac CT images, the concept is not limited to CT. It is applied with one of several methods.
The purpose of each method is to solve for vector in the following problem:
Let be the region of interest (ROI) and be the region outside of . Assume , , , are known matrices; and are unknown vectors of the original image, while and are vector measurements of the responses ( is known and is unknown). is inside region , () and , in the region , (), is outside region . is inside a region in the measurement corresponding to . This region is denoted as , (), while is outside of the region . It corresponds to and is denoted as , ().
For CT image-reconstruction purposes, .
To simplify the concept of interior reconstruction, the matrices , , , are applied to image reconstruction instead of complex operators.
The first interior-reconstruction method listed below is extrapolation. It is a local tomography method which eliminates truncation artifacts but introduces another type of artifact: a bowl effect. An improvement is known as the adaptive extrapolation method, although the iterative extrapolation method below also improves reconstruction results. In some cases, the exact reconstruction can be found for the interior reconstruction. The local inverse method below modifies the local tomography method, and may improve the reconstruction result of the local tomography; the iterative reconstruction method can be applied to interior reconstruction. Among the above methods, extrapolation is often applied.
, , , are known matrices; and are unknown vectors; is a known vector, and is an unknown vector. We need to know the vector . and are the original image, while and are measurements of responses. Vector is inside the region of interest , (). Vector is outside the region . The outside region is called , () and is inside a region in the measurement corresponding to . This region is denoted , (). The region of vector (outside the region ) also corresponds to and is denoted as , (). In CT image reconstruction, it has
To simplify the concept of interior reconstruction, the matrices , , , are applied to image reconstruction instead of a complex operator.
Hub AI
Interior reconstruction AI simulator
(@Interior reconstruction_simulator)
Interior reconstruction
In iterative reconstruction in digital imaging, interior reconstruction (also known as limited field of view (LFV) reconstruction) is a technique to correct truncation artifacts caused by limiting image data to a small field of view. The reconstruction focuses on an area known as the region of interest (ROI). Although interior reconstruction can be applied to dental or cardiac CT images, the concept is not limited to CT. It is applied with one of several methods.
The purpose of each method is to solve for vector in the following problem:
Let be the region of interest (ROI) and be the region outside of . Assume , , , are known matrices; and are unknown vectors of the original image, while and are vector measurements of the responses ( is known and is unknown). is inside region , () and , in the region , (), is outside region . is inside a region in the measurement corresponding to . This region is denoted as , (), while is outside of the region . It corresponds to and is denoted as , ().
For CT image-reconstruction purposes, .
To simplify the concept of interior reconstruction, the matrices , , , are applied to image reconstruction instead of complex operators.
The first interior-reconstruction method listed below is extrapolation. It is a local tomography method which eliminates truncation artifacts but introduces another type of artifact: a bowl effect. An improvement is known as the adaptive extrapolation method, although the iterative extrapolation method below also improves reconstruction results. In some cases, the exact reconstruction can be found for the interior reconstruction. The local inverse method below modifies the local tomography method, and may improve the reconstruction result of the local tomography; the iterative reconstruction method can be applied to interior reconstruction. Among the above methods, extrapolation is often applied.
, , , are known matrices; and are unknown vectors; is a known vector, and is an unknown vector. We need to know the vector . and are the original image, while and are measurements of responses. Vector is inside the region of interest , (). Vector is outside the region . The outside region is called , () and is inside a region in the measurement corresponding to . This region is denoted , (). The region of vector (outside the region ) also corresponds to and is denoted as , (). In CT image reconstruction, it has
To simplify the concept of interior reconstruction, the matrices , , , are applied to image reconstruction instead of a complex operator.