Speckle Noise Removal: A Local Structure Preserving Approach

SN Computer Science(2024)

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摘要
This paper proposes a speckle noise removal approach for clinical ultrasound images by doing outlier removal and smoothening operations alternately. During the initial investigation, it was found that the log-transformed ultrasound image follows Fisher–Tippett distribution and has fixed median absolute deviation (MAD). Hence, the noise in log-transformed ultrasound images behaves like white Gaussian noise with transients or outliers. Therefore, the de-noising problem can be considered as the removal of outliers followed by smoothening. These two processes are unified in one framework by defining a Bayesian Maximum-a-Posteriori (MAP) estimation function. This function has two terms: fidelity and regularizer. The fidelity is derived using the proposed generalized Fisher–Tippett distribution, whereas a weighted total variation is used as a regularizer. A regularizer weigh scheme is introduced to preserve edges in the images. The weights are computed using echo-texture graded local-oriented structure information present in an image. To obtain tissue-specific echo-texture, fuzzy C-means clustering is deployed for grouping similar tissue echo-textures. This grouping will help to discriminate the proper boundary of the tissue. To extract the original image, the MAP function is minimized and is performed using the generalized Bregman alternate method of multipliers. Ten different existing techniques are used to compare the performance of the proposed method on both phantom and clinical ultrasound images. The proposed approach achieved a signal-to-noise ratio in the range of 5–10 and a peak signal-to-noise ratio in the range of 67–70. Structural preservation metrics like figure of merit came out to be as high as 0.8. Moreover, using the proposed approach lower signal suppression index and higher effective number of lookup values are achieved for the restored clinical ultrasound images. The proposed algorithm can provide better piecewise smoothness and high contrast in despeckled images. Along with it, the edges are seen to be well preserved. Both qualitative and quantitative analysis support the efficacy of the approach compared to state-of-the-art methods.
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关键词
Clinical ultrasound,Fisher–Tippett distribution,Total variation,De-speckling,Bayesian map
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