| Literature DB >> 31737746 |
Xuelin Cui1,2, Lamine Mili1, Ibrahim Bechwati2, Shouhua Luo3.
Abstract
Tomographic image reconstruction requires precise geometric measurements and calibration for the scanning system to yield optimal images. The isocenter offset is a very important geometric parameter that directly governs the spatial resolution of reconstructed images. Due to system imperfections such as mechanical misalignment, an accurate isocenter offset is difficult to achieve. Common calibration procedures used during isocenter offset tuning, such as pin scan, are not able to reach precision of subpixel level and are also inevitably hampered by system imperfections. We propose a purely data-driven method based on Fourier shift theorem to indirectly, yet precisely, estimate the isocenter offset at the subpixel level. The solution is obtained by applying a generalized M-estimator, a robust regression algorithm, to an arbitrary sinogram of axial scanning geometry. Numerical experiments are conducted on both simulated phantom data and actual data using a tungsten wire. Simulation results reveal that the proposed method achieves great accuracy on estimating and tuning the isocenter offset, which, in turn, significantly improves the quality of final images, particularly in spatial resolution.Entities:
Keywords: Fourier shift theorem; robust regression; tomographic image reconstruction
Year: 2019 PMID: 31737746 PMCID: PMC6856536 DOI: 10.1117/1.JMI.6.4.047002
Source DB: PubMed Journal: J Med Imaging (Bellingham) ISSN: 2329-4302