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Dive into the research topics where Uikyu Je is active.

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Featured researches published by Uikyu Je.


Instrumentation Science & Technology | 2017

Industrial x-ray inspection system with improved image characterization using blind deblurring based on compressed-sensing scheme

Kyuseok Kim; Soyoung Park; Guna Kim; Hyosung Cho; Uikyu Je; Chulkyu Park; Hyunwoo Lim; Hunwoo Lee; Dongyeon Lee; Yeonok Park; Taeho Woo

ABSTRACT An industrial x-ray inspection system has recently established by our group to examine large and dense objects available in industry. It consists of an industrial x-ray generator having a tube voltage of 450 kV and a focal spot size of 1 mm, a flat-panel detector having a pixel size of 200 µm and a pixel dimension of 2048 × 2048, and a mechanical support for object’s installation. For improving the image characteristics of the system, an effective blind deblurring method based on compressed-sensing scheme is reported. Blind deblurring is the image restoration by estimating the original image and the degradation mechanism using partial information on both. Compressed-sensing is a relatively new mathematical theory for solving the inverse problems. Systematic measurements were performed and the image characteristics of the restored images were quantitatively evaluated using several image-quality indicators. The results demonstrate that the deblurring method is effective for industrial x-ray inspection systems.


Research in Nondestructive Evaluation | 2018

Feasibility Study for Improving the Image Characteristics in Digital Tomosynthesis (DTS) Using a Compressed-Sensing (Cs)-Based Pre-Deblurring Scheme

Kyuseok Kim; Soyoung Park; Guna Kim; Hyosung Cho; Uikyu Je; Chulkyu Park; Hyunwoo Lim; Dongyeon Lee; Hunwoo Lee; Yeonok Park; Taeho Woo

ABSTRACT Digital tomosynthesis (DTS) has been widely used in both industrial nondestructive testing and medical x-ray imaging as a popular multiplanar imaging modality. However, although it provides some of the tomographic benefits of computed tomography (CT) at reduced dose and imaging time, the image characteristics are relatively poor due to blur artifacts originated from incomplete data sampling for a limited angular range and also aspects inherent to imaging system, including finite focal spot size of the x-ray source, detector resolution, etc. In this work, in order to overcome these difficulties, we propose an intuitive method in which a compressed-sensing (CS)-based deblurring scheme is applied to the projection images before common DTS reconstruction. We implemented the proposed deblurring algorithm and performed a systematic experiment to demonstrate its viability for improving the image characteristics in DTS. According to our results, the proposed method appears to be effective for the blurring problems in DTS and seems to be promising to our ongoing application to x-ray nondestructive testing.


Journal of the Korean Physical Society | 2017

Erratum to: Branch length similarity entropy-based descriptors for shape representation (Journal of the Korean Physical Society, (2017), 71, 10, (727-732), 10.3938/jkps.71.593)

Dong Hee Shin; Jin Hyuck Heo; Sang Hyuk Im; Rena Lee; Kyubo Kim; Samju Cho; Sangwook Lim; Suk Lee; Jang Bo Shim; Hyun Do Huh; Sang Hoon Lee; Sohyun Ahn; Ashadun Nobi; Jae Woo Lee; Hyunwoo Lim; Hunwoo Lee; Hyosung Cho; Changwoo Seo; Uikyu Je; Chulkyu Park; Kyuseok Kim; Guna Kim; Soyoung Park; Dongyeon Lee; Seokyoon Kang; Minsik Lee; Jingtai Cao; Xiaohui Zhao; Zhaokun Li; Wei Liu

Regrettably, due to a technical error during the production process, there were discrepancies in DOI of the mentioned articles between HTML and PDF files. The DOIs are correct in the PDF files but were incorrect in HTML. The original articles have been corrected. The Publisher apologizes for any inconvenience and confusion caused.


Computer Methods and Programs in Biomedicine | 2017

Image reconstruction in region-of-interest (or interior) digital tomosynthesis (DTS) based on compressed-sensing (CS)

Soyoung Park; Guna Kim; Hyosung Cho; Uikyu Je; Chulkyu Park; Kyuseok Kim; Hyunwoo Lim; Dongyeon Lee; Hunwoo Lee; Seokyoon Kang; Jeongeun Park; Taeho Woo; Minsik Lee

BACKGROUND AND OBJECTIVE Digital tomosynthesis (DTS) based on filtered-backprojection (FBP) reconstruction requires a full field-of-view (FOV) scan and relatively dense projections, which results in high doses for medical imaging purposes. To overcome these difficulties, we investigated region-of-interest (ROI) or interior DTS reconstruction where the x-ray beam span covers only a small ROI containing a target area. METHODS An iterative method based on compressed-sensing (CS) scheme was compared with the FBP-based algorithm for ROI-DTS reconstruction. We implemented both algorithms and performed a systematic simulation and experiments on body and skull phantoms. The image characteristics were evaluated and compared. RESULTS The CS-based algorithm yielded much better reconstruction quality in ROI-DTS compared to the FBP-based algorithm, preserving superior image homogeneity, edge sharpening, and in-plane resolution. The image characteristics of the CS-reconstructed images in ROI-DTS were not significantly different from those in full-FOV DTS. The measured CNR value of the CS-reconstructed ROI-DTS image was about 12.3, about 1.9 times larger than that of the FBP-reconstructed ROI-DTS image. CONCLUSIONS ROI-DTS images of substantially high accuracy were obtained using the CS-based algorithm and at reduced imaging doses and less computational cost, compared to typical full-FOV DTS images. We expect that the proposed method will be useful for the development of new DTS systems.


Physica Medica | 2016

3D reconstruction based on compressed-sensing (CS)-based framework by using a dental panoramic detector

Uikyu Je; Hyun-Seung Cho; Dae-Ki Hong; H. Cho; Yeonok Park; Chulkyu Park; Kir-Young Kim; H.W. Lim; Guna Kim; Sung Yul Park; Taeho Woo; S.I. Cho

In this work, we propose a practical method that can combine the two functionalities of dental panoramic and cone-beam CT (CBCT) features in one by using a single panoramic detector. We implemented a CS-based reconstruction algorithm for the proposed method and performed a systematic simulation to demonstrate its viability for 3D dental X-ray imaging. We successfully reconstructed volumetric images of considerably high accuracy by using a panoramic detector having an active area of 198.4 mm × 6.4 mm and evaluated the reconstruction quality as a function of the pitch (p) and the angle step (Δθ). Our simulation results indicate that the CS-based reconstruction almost completely recovered the phantom structures, as in CBCT, for p≤2.0 and θ≤6°, indicating that it seems very promising for accurate image reconstruction even for large-pitch and few-view data. We expect the proposed method to be applicable to developing a cost-effective, volumetric dental X-ray imaging system.


nuclear science symposium and medical imaging conference | 2015

Investigation of reconstruction quality in digital breast tomosynthesis (DBT) based on compressed-sensing algorithm and synthesized 2D breast image

Yeonok Park; Hyosung Cho; Dae-Ki Hong; Uikyu Je; Chulkyu Park; Heemoon Cho; Hyunwoo Lim; Kyuseok Kim; Soyoung Park; Taeho Woo; Sungil Choi

Digital breast tomosynthesis (DBT) is most commonly used in three-dimensional (3D) mammography because it provides a 3D view, so suspected tumors and massed in the breast can be detected with a higher degree of accuracy. Conventional DBT reconstruction methods are based on the filtered-backprojection (FBP) with an additional deblurring filter. However, this approach usually requires dense projection data with low noise levels for acceptable reconstruction quality. In this work, instead, we investigated a state-of-the-art image reconstruction based on the compressed-sensing (CS) theory for potential application to accurate, low-dose DBT. We implemented a CS-based algorithm as well as a FBP-based algorithm for DBT reconstruction and performed a systematic experiment to verify the usefulness of the algorithm by comparing its reconstruction quality to the FBP-based one. We successfully obtained DBT images of substantially high accuracy by using the CS-based algorithm and synthesized a 2D breast image from the CS-reconstructed DBT images, which showed heightened details retained from DBT images, indicating superior performance compared to traditional 2D breast image alone.


Journal of the Korean Physical Society | 2012

Application of digital tomosynthesis (DTS) of optimal deblurring filters for dental X-ray imaging

Jungwoo Oh; H. Cho; D.S. Kim; Sunghoon Choi; Uikyu Je


Nuclear Instruments & Methods in Physics Research Section A-accelerators Spectrometers Detectors and Associated Equipment | 2015

Feasibility study for image reconstruction in circular digital tomosynthesis (CDTS) from limited-scan angle data based on compressed-sensing theory

Yeonok Park; Uikyu Je; Hyosung Cho; Dae-Ki Hong; Chulkyu Park; Heemoon Cho; Sungil Choi; Taeho Woo


Nuclear Instruments & Methods in Physics Research Section A-accelerators Spectrometers Detectors and Associated Equipment | 2015

Evaluation of the image quality in digital breast tomosynthesis (DBT) employed with a compressed-sensing (CS)-based reconstruction algorithm by using the mammographic accreditation phantom

Yeonok Park; Heemoon Cho; Uikyu Je; Hyosung Cho; Chulkyu Park; Hyunwoo Lim; Kyuseok Kim; Guna Kim; Soyoung Park; Taeho Woo; Sungil Choi


Nuclear Instruments & Methods in Physics Research Section A-accelerators Spectrometers Detectors and Associated Equipment | 2015

Simulation and experimental studies of three-dimensional (3D) image reconstruction from insufficient sampling data based on compressed-sensing theory for potential applications to dental cone-beam CT

Uikyu Je; Minsik Lee; H. Cho; Dae-Ki Hong; Yeonok Park; Chulkyu Park; Hyun-Seung Cho; Sunghoon Choi; Taeho Woo

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