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Speckle Noise Reduction for Ultrasound Images via Adaptive Neighborhood Accumulated Multi-scale Products Thresholding

机译:通过自适应邻域累积多尺度产品阈值减少超声图像的斑点噪声

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Ultrasound imaging is widely used in medical diagnostic, unfortunately, the qualities of ultrasound images are generally limited due to the existence of speckle noises. As a result, edge-preserving noise reduction is an essential operation in ultrasound images processing. In this paper, we present an adaptive thresholding algorithm for ultrasound speckle suppression, which is based on dyadic wavelet transform (DWT) and neighborhood accumulated multi-scale products. Considering the dependencies between wavelet coefficients inter-scales, we multiply the adjacent sub-bands to intensify the edge and details while suppressing noise. Meanwhile, the probability of a large wavelet coefficient appearing in certain large wavelet coefficient's neighbors is great. We bring in the idea of neighborhood accumulated multi-scale products to exploit the intra-scale dependencies. The detail edges through our method can be more effectively distinguished from noise. Experiments show that the proposed method suppresses noise and preserves edges better than the state-of-the-art techniques.
机译:超声波成像被广泛用于医学诊断中,不幸的是,由于斑点噪声的存在,超声波图像的质量通常受到限制。结果,减少边缘保留的噪声是超声图像处理中的必不可少的操作。在本文中,我们提出了一种基于二进小波变换(DWT)和邻域累积多尺度乘积的超声阈值抑制自适应阈值算法。考虑到小波系数跨尺度之间的相关性,我们将相邻子带相乘以增强边缘和细节,同时抑制噪声。同时,在某个大小波系数的邻居中出现大小波系数的可能性很大。我们引入邻域累积多尺度产品的想法,以利用尺度内依赖性。通过我们的方法,细节边缘可以更有效地与噪声区分开。实验表明,与现有技术相比,该方法能够更好地抑制噪声并保留边缘。

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