Paper
12 March 2010 A 1D wavelet filtering for ultrasound images despeckling
Sonia Dahdouh, Mathieu Dubois, Emmanuelle Frenoux, Angel Osorio
Author Affiliations +
Abstract
Ultrasound images appearance is characterized by speckle, shadows, signal dropout and low contrast which make them really difficult to process and leads to a very poor signal to noise ratio. Therefore, for main imaging applications, a denoising step is necessary to apply successfully medical imaging algorithms on such images. However, due to speckle statistics, denoising and enhancing edges on these images without inducing additional blurring is a real challenging problem on which usual filters often fail. To deal with such problems, a large number of papers are working on B-mode images considering that the noise is purely multiplicative. Making such an assertion could be misleading, because of internal pre-processing such as log compression which are done in the ultrasound device. To address those questions, we designed a novel filtering method based on 1D Radiofrequency signal. Indeed, since B-mode images are initially composed of 1D signals and since the log compression made by ultrasound devices modifies noise statistics, we decided to filter directly the 1D Radiofrequency signal envelope before log compression and image reconstitution, in order to conserve as much information as possible. A bi-orthogonal wavelet transform is applied to the log transform of each signal and an adaptive 1D split and merge like algorithm is used to denoise wavelet coefficients. Experiments were carried out on synthetic data sets simulated with Field II simulator and results show that our filter outperforms classical speckle filtering methods like Lee, non-linear means or SRAD filters.
© (2010) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Sonia Dahdouh, Mathieu Dubois, Emmanuelle Frenoux, and Angel Osorio "A 1D wavelet filtering for ultrasound images despeckling", Proc. SPIE 7629, Medical Imaging 2010: Ultrasonic Imaging, Tomography, and Therapy, 762907 (12 March 2010); https://doi.org/10.1117/12.844388
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CITATIONS
Cited by 6 scholarly publications.
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KEYWORDS
Wavelets

Ultrasonography

Image filtering

Signal to noise ratio

Signal processing

Speckle

Denoising

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