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http://dx.doi.org/10.4283/JMAG.2016.21.4.593

The Effects of Total Variation (TV) Technique for Noise Reduction in Radio-Magnetic X-ray Image: Quantitative Study  

Seo, Kanghyen (Department of Radiological Science, Eulji University)
Kim, Seung Hun (Department of Radiological Science, Eulji University)
Kang, Seong Hyeon (Department of Radiological Science, Eulji University)
Park, Jongwoon (Department of Radiological Science, Eulji University)
Lee, Chang Lae (Department of Radiological Science, Yonsei University)
Lee, Youngjin (Department of Radiological Science, Eulji University)
Publication Information
Abstract
In order to reduce the amount of noise component in X-ray imaging system, various reduction techniques were frequently used in the field of diagnostic imaging. Although the previous techniques -such as median, Wiener filters and Anscombe noise reduction technique - were able to reduce the noise, the edge information was still damaged. In order to cope with this problem, total variation (TV) noise reduction technique has been developed and researched. The purpose of this study was to evaluate and compare the image quality using normalized noise power spectrum (NNPS) and contrast-to-noise ratio (CNR) through simulations and experiments with respect to the above-mentioned noise reduction techniques. As a result, not only lowest NNPS value but also highest CNR values were acquired using a TV noise reduction technique. In conclusion, the results demonstrated that TV noise reduction technique is proved as the most practical method to ensure accurate denoising in X-ray imaging system.
Keywords
radio-magnetic wave; X-ray radiography and digital radiography (DR); medical application; noise reduction technique; total variation;
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