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首页> 外文期刊>Laser physics letters >Speckle noise reduction for optical coherence tomography based on adaptive 2D dictionary
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Speckle noise reduction for optical coherence tomography based on adaptive 2D dictionary

机译:基于自适应2D字典的光学相干断层扫描的斑块降噪

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摘要

As a high-resolution biomedical imaging modality, optical coherence tomography (OCT) is widely used in medical sciences. However, OCT images often suffer from speckle noise, which can mask some important image information, and thus reduce the accuracy of clinical diagnosis. Taking full advantage of nonlocal self-similarity and adaptive 2D-dictionary-based sparse representation, in this work, a speckle noise reduction algorithm is proposed for despeckling OCT images. To reduce speckle noise while preserving local image features, similar nonlocal patches are first extracted from the noisy image and put into groups using a gamma-distribution-based block matching method. An adaptive 2D dictionary is then learned for each patch group. Unlike traditional vector-based sparse coding, we express each image patch by the linear combination of a few matrices. This image-to-matrix method can exploit the local correlation between pixels. Since each image patch might belong to several groups, the despeckled OCT image is finally obtained by aggregating all filtered image patches. The experimental results demonstrate the superior performance of the proposed method over other state-of-the-art despeckling methods, in terms of objective metrics and visual inspection.
机译:作为高分辨率生物医学成像模态,光学相干断层扫描(OCT)广泛用于医学科学。然而,OCT图像经常遭受散斑噪声,可以掩盖一些重要的图像信息,从而降低临床诊断的准确性。在这项工作中,充分利用非局部自相似性和基于自适应的2D字典的稀疏表示,提出了针对OCT图像进行斑点降噪算法。为了减少保留本地图像特征的同时减少散斑噪声,首先从噪声图像中提取类似的非局部贴片,并使用基于伽马分布的块匹配方法将其放入组。然后为每个补丁组学习自适应2D字典。与传统的矢量稀疏编码不同,我们通过几个矩阵的线性组合表达每个图像修补程序。此图像到矩阵方法可以利用像素之间的本地相关性。由于每个图像修补程序可能属于多个组,因此最终通过聚合所有滤波的图像补丁来获得Desteckled OCT图像。实验结果表明,在客观度量和目视检查方面,该方法在其他最先进的检测方法中提出了拟议的方法。

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