| Literature DB >> 30238344 |
K S Kim1, S Y Kang1, C K Park1, G A Kim1, S Y Park1, Hyosung Cho2, C W Seo1, D Y Lee1, H W Lim1, H W Lee1, J E Park1, T H Woo1, J E Oh3.
Abstract
In cone-beam computed tomography (CBCT), reconstructed images are inherently degraded, restricting its image performance, due mainly to imperfections in the imaging process resulting from detector resolution, noise, X-ray tube's focal spot, and reconstruction procedure as well. Thus, the recovery of CBCT images from their degraded version is essential for improving image quality. In this study, we investigated a compressed-sensing (CS)-based blind deconvolution method to solve the blurring problem in CBCT where both the image to be recovered and the blur kernel (or point-spread function) of the imaging system are simultaneously recursively identified. We implemented the proposed algorithm and performed a systematic simulation and experiment to demonstrate the feasibility of using the algorithm for image deblurring in dental CBCT. In the experiment, we used a commercially available dental CBCT system that consisted of an X-ray tube, which was operated at 90 kVp and 5 mA, and a CMOS flat-panel detector with a 200-μm pixel size. The image characteristics were quantitatively investigated in terms of the image intensity, the root-mean-square error, the contrast-to-noise ratio, and the noise power spectrum. The results indicate that our proposed method effectively reduced the image blur in dental CBCT, excluding repetitious measurement of the system's blur kernel.Entities:
Keywords: Blind deconvolution; Compressed-sensing; Cone-beam computed tomography; Image deblurring
Year: 2019 PMID: 30238344 PMCID: PMC6499850 DOI: 10.1007/s10278-018-0120-9
Source DB: PubMed Journal: J Digit Imaging ISSN: 0897-1889 Impact factor: 4.056