AbstractSpeed is an important parameter of an inspection system. Inline computed tomography systems exist but are generally expensive. Moreover, their throughput is limited by the speed of the reconstruction algorithm. In this work, we propose a Neural Network-based Hilbert transform Filtered Backprojection (NN-hFBP) method to reconstruct objects in an inline scanning environment in a fast and accurate way. Experiments based on apple X-ray scans show that the NN-hFBP method allows to reconstruct images with a substantially better tradeoff between image quality and reconstruction time
We present a lightweight and scalable artificial neural network architecture which is used to recons...
Recent efforts in cone-beam scanner technology have focused on developing interactive scanning capab...
A neural network system has been developed which can reconstruct images of defects within fibre rein...
Speed is an important parameter of an inspection system. Inline computed tomography systems exist bu...
AbstractSpeed is an important parameter of an inspection system. Inline computed tomography systems ...
X-ray imaging is an important tool for quality control since it allows to inspect the interior of pr...
Neutron Tomography (NT) is a non-destructive technique to investigate the inner structure of a wide ...
Image reconstruction from a small number of projections is a challenging problem in tomography. Adva...
We present a computational approach for fast approximation of nonlinear tomographic reconstruction m...
Reconstructing images of objects spirally scanned with two-dimensional detectors with a novel algori...
This thesis deals with automatic defect detection. The objective was to develop the techniques requi...
Filtered backprojection, one of the most widely used reconstruction methods in tomography, requires ...
This work focuses on a tomographic image reconstruction method which will be referred to as nonlinea...
This work presents a new neural algorithm designed for the reconstruction of tomographic images from...
This paper presents the sequential and parallel data decomposition strategies implemented on a Parti...
We present a lightweight and scalable artificial neural network architecture which is used to recons...
Recent efforts in cone-beam scanner technology have focused on developing interactive scanning capab...
A neural network system has been developed which can reconstruct images of defects within fibre rein...
Speed is an important parameter of an inspection system. Inline computed tomography systems exist bu...
AbstractSpeed is an important parameter of an inspection system. Inline computed tomography systems ...
X-ray imaging is an important tool for quality control since it allows to inspect the interior of pr...
Neutron Tomography (NT) is a non-destructive technique to investigate the inner structure of a wide ...
Image reconstruction from a small number of projections is a challenging problem in tomography. Adva...
We present a computational approach for fast approximation of nonlinear tomographic reconstruction m...
Reconstructing images of objects spirally scanned with two-dimensional detectors with a novel algori...
This thesis deals with automatic defect detection. The objective was to develop the techniques requi...
Filtered backprojection, one of the most widely used reconstruction methods in tomography, requires ...
This work focuses on a tomographic image reconstruction method which will be referred to as nonlinea...
This work presents a new neural algorithm designed for the reconstruction of tomographic images from...
This paper presents the sequential and parallel data decomposition strategies implemented on a Parti...
We present a lightweight and scalable artificial neural network architecture which is used to recons...
Recent efforts in cone-beam scanner technology have focused on developing interactive scanning capab...
A neural network system has been developed which can reconstruct images of defects within fibre rein...