Looking for the Signal: A guide to iterative noise and artefact removal in X-ray tomographic reconstructions of porous geomaterials

•Denoising of tomography reconstructions needs to consider correlation in the noise.•An iterative modification to the nonlocal means algorithm is presented.•The iterative algorithm treats denoising as a texture removal task.•The algorithm is benchmarked using noise footprints from tomography experim...

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Veröffentlicht in:Advances in water resources 2017-07, Vol.105, p.96-107
Hauptverfasser: Bruns, S., Stipp, S.L.S., Sørensen, H.O.
Format: Artikel
Sprache:eng
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Zusammenfassung:•Denoising of tomography reconstructions needs to consider correlation in the noise.•An iterative modification to the nonlocal means algorithm is presented.•The iterative algorithm treats denoising as a texture removal task.•The algorithm is benchmarked using noise footprints from tomography experiments. X-ray micro- and nanotomography has evolved into a quantitative analysis tool rather than a mere qualitative visualization technique for the study of porous natural materials. Tomographic reconstructions are subject to noise that has to be handled by image filters prior to quantitative analysis. Typically, denoising filters are designed to handle random noise, such as Gaussian or Poisson noise. In tomographic reconstructions, noise has been projected from Radon space to Euclidean space, i.e. post reconstruction noise cannot be expected to be random but to be correlated. Reconstruction artefacts, such as streak or ring artefacts, aggravate the filtering process so algorithms performing well with random noise are not guaranteed to provide satisfactory results for X-ray tomography reconstructions. With sufficient image resolution, the crystalline origin of most geomaterials results in tomography images of objects that are untextured. We developed a denoising framework for these kinds of samples that combines a noise level estimate with iterative nonlocal means denoising. This allows splitting the denoising task into several weak denoising subtasks where the later filtering steps provide a controlled level of texture removal. We describe a hands-on explanation for the use of this iterative denoising approach and the validity and quality of the image enhancement filter was evaluated in a benchmarking experiment with noise footprints of a varying level of correlation and residual artefacts. They were extracted from real tomography reconstructions. We found that our denoising solutions were superior to other denoising algorithms, over a broad range of contrast-to-noise ratios on artificial piecewise constant signals.
ISSN:0309-1708
1872-9657
DOI:10.1016/j.advwatres.2017.04.020