4 research outputs found
An efficient quasi-Monte Carlo method with forced fixed detection for photon scatter simulation in CT
Detected scattered photons can cause cupping and streak artifacts, significantly degrading the quality of CT images. For fast and accurate estimation of scatter intensities resulting from photon interactions with a phantom, we first transform the path probability of photons interacting with the phantom into a high-dimensional integral. Secondly, we develope a new efficient algorithm called gQMCFFD, which combines graphics processing unit(GPU)-based quasi-Monte Carlo (QMC) with forced fixed detection to approximate this integral. QMC uses low discrepancy sequences for simulation and is deterministic versions of Monte Carlo. Numerical experiments show that the results are in excellent agreement and the efficiency improvement factors are 4 ∼ 46 times in all simulations by gQMCFFD with comparison to GPU-based Monte Carlo methods. And by combining gQMCFFD with sparse matrix method, the simulation time is reduced to 2 seconds in a single projection angle and the relative difference is 3.53%
One-step Method for Material Quantitation using In-line Tomography with Single Scanning
Objective: Quantitative technique based on In-line phase-contrast computed
tomography with single scanning attracts more attention in application due to
the flexibility of the implementation. However, the quantitative results
usually suffer from artifacts and noise, since the phase retrieval and
reconstruction are independent ("two-steps") without feedback from the original
data. Our goal is to develop a method for material quantitative imaging based
on a priori information specifically for the single-scanning data. Method: An
iterative method that directly reconstructs the refractive index decrement
delta and imaginary beta of the object from observed data ("one-step") within
single object-to-detector distance (ODD) scanning. Simultaneously, high-quality
quantitative reconstruction results are obtained by using a linear
approximation that achieves material decomposition in the iterative process.
Results: By comparing the equivalent atomic number of the material
decomposition results in experiments, the accuracy of the proposed method is
greater than 97.2%. Conclusion: The quantitative reconstruction and
decomposition results are effectively improved, and there are feedback and
corrections during the iteration, which effectively reduce the impact of noise
and errors. Significance: This algorithm has the potential for quantitative
imaging research, especially for imaging live samples and human breast
preclinical studies
A method for material decomposition and quantification with grating based phase CT.
Material decomposition (MD) is an important application of computer tomography (CT). For phase contrast imaging, conventional MD methods are categorized into two types with respect to different operation sequences, i.e., "before" or "after" image reconstruction. Both categories come down to two-step methods, which have the problem of noise amplification. In this study, we incorporate both phase and absorption (PA) information into MD process, and correspondingly develop a simultaneous algebraic reconstruction technique (SART). The proposed method is referred to as phase & absorption material decomposition-SART (PAMD-SART). By iteratively solving an optimization problem, material composition and substance quantification are reconstructed directly from absorption and differential phase projections. Comparing with two-step MD, the proposed one-step method is superior in noise suppression and accurate decomposition. Numerical simulations and synchrotron radiation based experiments show that PAMD-SART outperforms the classical MD method (image-based and dual-energy CT iterative method), especially for the quantitative accuracy of material equivalent atomic number