Paper
22 March 2016 An adaptive method for weighted median priors in transmission tomography reconstruction
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Abstract
We present an adaptive method of selecting the center weight in the weighted-median prior for penalized-likelihood (PL) transmission tomography reconstruction. While the well-known median filter, which is closely related to the median prior, preserves edges, it is known to have an unfortunate effect of removing fine details because it tends to eliminate any structure that occupies less than half of the window elements. On the other hand, center-weighted median filters can preserve fine details by using relatively large center weights. But the large center weights can degrade monotonic regions due to insufficient noise suppression. In this work, to adaptively select the center weight, we first calculate pixelwise standard deviation over 3×3 neighbors of each pixel at every PL iteration and measure its cumulative histogram, which is a monotonically non-decreasing 1-D function. We then normalize the resulting function to maintain its range over [1,9]. In this case the domain of the normalized function represents the standard deviation at each pixel, and the range can be used for the center weight of a 3×3 median window. We implemented the median prior within the PL framework and used an alternating joint minimization algorithm based on a separable paraboloidal surrogates algorithm. The experimental results demonstrate that our proposed method not only compromises the two extreme cases (the largest and smallest center weights) yielding a good reconstruction over the entire image in terms of the percentage error, but also outperforms the standard method in terms of the contrast recovery coefficient measured in several regions of interest.
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Ji Eun Jung and Soo-Jin Lee "An adaptive method for weighted median priors in transmission tomography reconstruction", Proc. SPIE 9783, Medical Imaging 2016: Physics of Medical Imaging, 97834P (22 March 2016); https://doi.org/10.1117/12.2216474
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KEYWORDS
Error control coding

Tomography

Reconstruction algorithms

Digital filtering

Signal attenuation

Image restoration

Chromium

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