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首页> 外文期刊>Laser physics letters >Speckle noise reduction for optical coherence tomography images via non-local weighted group low-rank representation
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Speckle noise reduction for optical coherence tomography images via non-local weighted group low-rank representation

机译:通过非局部加权组低秩表示光相干断层扫描图像的斑块降噪

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摘要

In this work, a non-local weighted group low-rank representation (WGLRR) model is proposed for speckle noise reduction in optical coherence tomography (OCT) images. It is based on the observation that the similarity between patches within the noise-free OCT image leads to a high correlation between them, which means that the data matrix grouped by these similar patches is low-rank. Thus, the low-rank representation (LRR) is used to recover the noise-free group data matrix. In order to maintain the fidelity of the recovered image, the corrupted probability of each pixel is integrated into the LRR model as a weight to regularize the error term. Considering that each single patch might belong to several groups, and multiple estimates of this patch can be obtained, different estimates of each patch is aggregated to obtain its denoised result. The aggregating weights are exploited depending on the rank of each group data matrix, which can assign higher weights to those better estimates. Both qualitative and quantitative experimental results on real OCT images show the superior performance of the WGLRR model compared with other state-of-the-art speckle removal techniques.
机译:在这项工作中,提出了一种非局部加权组低秩表示(WGLRR)模型,用于光相干断层扫描(OCT)图像中的斑点降噪。它基于观察到,无噪声OCT图像内的贴片之间的相似性导致它们之间的高相关,这意味着由这些类似斑块组分组的数据矩阵是低秩。因此,低秩表示(LRR)用于恢复无噪声组数据矩阵。为了保持恢复图像的保真度,将每个像素的损坏概率集成到LRR模型中,以重量以正规化误差项。考虑到每个单个补丁可能属于几个组,并且可以获得对该补丁的多个估计,聚合每个补丁的不同估计以获得其去噪结果。根据每个组数据矩阵的等级来利用聚合权重,这可以将更高的权重分配给那些更好的估计值。与Real OCT图像的定性和定量实验结果均显示出与其他最先进的散斑清除技术相比的WGLRR模型的优越性。

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