GPU-accelerated polyenergetic forward projection for 9 MeV industrial CT system

Kun Wang, Huan Wang,Hao Chen,Dingyue Chang, Fa Chen,Huaqin Kou,Maobing Shuai

INSIGHT(2023)

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摘要
Polyenergetic forward projection has great significance in inspecting hazardous materials, establishing optimal radiographic variables and investigating beam hardening effects. However, it is computationally intensive to perform polyenergetic forward -projection calculations for high -resolution phantoms. To address this issue, a rapid polyenergetic forward -projection algorithm is proposed for a 9 MeV industrial computed tomography (CT) system. The FLUktuierende KAskade (FLUKA) software package is used to generate the 9 MeV X-ray spectrum data. Two voxelised phantoms are used to model scanned objects, one being a multi -material cylinder and the other a single -material turbine blade. An incremental version of Siddon's algorithm is adopted to calculate the intersection lengths between the X-rays and the auxiliary phantoms. Three strategies are utilised to accelerate the calculation, in which: the intersection lengths do not vary with the energy bins and can be used repeatedly until all the energy bins are counted; a graphics processing unit (GPU) is used to accelerate the ray tracing algorithm by utilising a parallel computing technique; and faster memory access is achieved by binding the auxiliary phantoms to texture objects. The simulation results in this paper show that the GPU-based approach not only maintains the image precision but also gains significant speed-ups over the conventional central processing unit (CPU) -based Siddon method. Furthermore, beam hardening artefacts can clearly be seen from the profile curves of the reconstructed slices, indicating that this method is effective.
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关键词
9 MeV industrial CT,polyenergetic forward projection,GPU acceleration,voxelised phantoms
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