25 research outputs found
Model-driven CT reconstruction algorithm for nano-resolution X-ray phase contrast imaging
The low-density imaging performance of a zone plate based nano-resolution
hard X-ray computed tomography (CT) system can be significantly improved by
incorporating a grating-based Lau interferometer. Due to the diffraction,
however, the acquired nano-resolution phase signal may suffer splitting
problem, which impedes the direct reconstruction of phase contrast CT (nPCT)
images. To overcome, a new model-driven nPCT image reconstruction algorithm is
developed in this study. In it, the diffraction procedure is mathematically
modeled into a matrix B, from which the projections without signal splitting
can be generated invertedly. Furthermore, a penalized weighed least-square
model with total variation (PWLS-TV) is employed to denoise these projections,
from which nPCT images with high accuracy are directly reconstructed. Numerical
and physical experiments demonstrate that this new algorithm is able to work
with phase projections having any splitting distances. Results also reveal that
nPCT images with higher signal-to-noise-ratio (SNR) would be reconstructed from
projections with larger signal splittings. In conclusion, a novel model-driven
nPCT image reconstruction algorithm with high accuracy and robustness is
verified for the Lau interferometer based hard X-ray nano-resolution phase
contrast imaging
Super resolution dual-layer CBCT imaging with model-guided deep learning
Objective: This study aims at investigating a novel super resolution CBCT
imaging technique with the dual-layer flat panel detector (DL-FPD). Approach:
In DL-FPD based CBCT imaging, the low-energy and high-energy projections
acquired from the top and bottom detector layers contain intrinsically
mismatched spatial information, from which super resolution CBCT images can be
generated. To explain, a simple mathematical model is established according to
the signal formation procedure in DL-FPD. Next, a dedicated recurrent neural
network (RNN), named as suRi-Net, is designed by referring to the above imaging
model to retrieve the high resolution dual-energy information. Different
phantom experiments are conducted to validate the performance of this newly
developed super resolution CBCT imaging method. Main Results: Results show that
the proposed suRi-Net can retrieve high spatial resolution information
accurately from the low-energy and high-energy projections having lower spatial
resolution. Quantitatively, the spatial resolution of the reconstructed CBCT
images of the top and bottom detector layers is increased by about 45% and 54%,
respectively. Significance: In future, suRi-Net provides a new approach to
achieve high spatial resolution dual-energy imaging in DL-FPD based CBCT
systems
The fast light of CsI(Na) crystals
The responds of different common alkali halide crystals to alpha-rays and
gamma-rays are tested in our research. It is found that only CsI(Na) crystals
have significantly different waveforms between alpha and gamma scintillations,
while others have not this phenomena. It is suggested that the fast light of
CsI(Na) crystals arises from the recombination of free electrons with
self-trapped holes of the host crystal CsI. Self-absorption limits the emission
of fast light of CsI(Tl) and NaI(Tl) crystals.Comment: 5 pages, 11 figures Submit to Chinese Physics