SRBF: SPECKLE REDUCING BILATERAL FILTERING


Por: Balocco, S, Gatta, C, Pujol, O, Mauri, J and Radeva, P

Publicada: 1 ago 2010
Resumen:
Speckle noise negatively affects medical ultrasound image shape interpretation and boundary detection. Speckle removal filters are widely used to selectively remove speckle noise without destroying important image features to enhance object boundaries. In this article, a fully automatic bilateral filter tailored to ultrasound images is proposed. The edge preservation property is obtained by embedding noise statistics in the filter framework. Consequently, the filter is able to tackle the multiplicative behavior modulating the smoothing strength with respect to local statistics. The in silico experiments clearly showed that the speckle reducing bilateral filter (SRBF) has superior performances to most of the state of the art filtering methods. The filter is tested on 50 in vivo US images and its influence on a segmentation task is quantified. The results using SRBF filtered data sets show a superior performance to using oriented anisotropic diffusion filtered images. This improvement is due to the adaptive support of SRBF and the embedded noise statistics, yielding a more homogeneous smoothing. SRBF results in a fully automatic, fast and flexible algorithm potentially suitable in wide ranges of speckle noise sizes, for different medical applications (IVUS, B-mode, 3-D matrix array US). (E-mail: balocco.simone@gmail.com) (C) 2010 World Federation for Ultrasound in Medicine & Biology.

Filiaciones:
Balocco, S:
 Comp Vis Ctr, Bellaterra, Spain

Gatta, C:
 Comp Vis Ctr, Bellaterra, Spain

Pujol, O:
 Comp Vis Ctr, Bellaterra, Spain

 Univ Barcelona, Dept Matemat Aplicada & Anal, Barcelona, Spain

:
 Hosp Badalona Germans Trias & Pujol, Unitat Hemodinam Cardiaca, Badalona, Spain

Radeva, P:
 Comp Vis Ctr, Bellaterra, Spain

 Univ Barcelona, Dept Matemat Aplicada & Anal, Barcelona, Spain
ISSN: 03015629





Ultrasound in Medicine and Biology
Editorial
Elsevier BV, STE 800, 230 PARK AVE, NEW YORK, NY 10169 USA, Países Bajos
Tipo de documento: Article
Volumen: 36 Número: 8
Páginas: 1353-1363
WOS Id: 000281328200019
ID de PubMed: 20691924

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