Enhanced Wiener filter for ultrasound image restoration

•A novel denoising approach for ultrasound Images is proposed.•The methodology combines Markov Random Fields theory with Wiener filter.•The method is computationally fast and required minimal supervision.•First results on both simulated and real data show the effectiveness of the approach. Speckle p...

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Veröffentlicht in:Computer methods and programs in biomedicine 2018-01, Vol.153, p.71-81
Hauptverfasser: Baselice, Fabio, Ferraioli, Giampaolo, Ambrosanio, Michele, Pascazio, Vito, Schirinzi, Gilda
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Sprache:eng
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Zusammenfassung:•A novel denoising approach for ultrasound Images is proposed.•The methodology combines Markov Random Fields theory with Wiener filter.•The method is computationally fast and required minimal supervision.•First results on both simulated and real data show the effectiveness of the approach. Speckle phenomenon strongly affects UltraSound (US) images. In the last years, several efforts have been done in order to provide an effective denoising methodology. Although good results have been achieved in terms of noise reduction effectiveness, most of the proposed approaches are not characterized by low computational burden and require the supervision of an external operator for tuning the input parameters. Within this manuscript, a novel approach is investigated, based on Wiener filter. Working in the frequency domain, it is characterized by high computational efficiency. With respect to classical Wiener filter, the proposed Enhanced Wiener filter is able to locally adapt itself by tuning its kernel in order to combine edges and details preservation with effective noise reduction. This characteristic is achieved by implementing a Local Gaussian Markov Random Field for modeling the image. Due to its intrinsic characteristics, the computational burden of the algorithm is sensibly low compared to other widely adopted filters and the parameter tuning effort is minimal, being well suited for quasi real time applications. The approach has been tested on both simulated and real datasets, showing interesting performances compared to other state of art methods. A novel denoising method for UltraSound images is proposed. The approach is able to combine low computational burden with interesting denoising performances and details preservation.
ISSN:0169-2607
1872-7565
DOI:10.1016/j.cmpb.2017.10.006