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Cluster-based filtering framework for speckle reduction in OCT images

机译:基于群集的过滤框架用于减少OCT图像中的斑点

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摘要

Optical coherence tomography (OCT) has become a popular modality in the dermatology discipline due to its moderate resolution and penetration depth. OCT images, however, contain a grainy pattern called speckle. To date, a variety of filtering techniques have been introduced to reduce speckle in OCT images. However, further improvement is required to reduce edge smoothing and the deterioration of small structures in OCT images after despeckling. In this manuscript, we present a novel cluster-based speckle reduction framework (CSRF) that consists of a clustering method, followed by a despeckling method. Since edges are borders of two adjacent clusters, the proposed framework leaves the edges intact. Moreover, the multiplicative speckle noise could be modeled as additive noise in each cluster. To evaluate the performance of CSRF and demonstrate its generic nature, a clustering method, namely k-means (KM), and, two pixelwise despeckling algorithms, including Lee filter (LF) and adaptive Wiener filter (AWF), are used. The results indicate that CSRF significantly improves the performance of despeckling algorithms. These improvements are evaluated on healthy human skin images in vivo using two numerical assessment measures including signal-to-noise ratio (SNR), and structural similarity index (SSIM).
机译:光学相干断层扫描(OCT)由于其中等的分辨率和穿透深度而已成为皮肤病学领域的一种流行形式。但是,OCT图像包含称为斑点的颗粒状图案。迄今为止,已经引入了多种滤波技术来减少OCT图像中的斑点。然而,需要进一步改进以减少去斑点后OCT图像中的边缘平滑和小的结构的劣化。在此手稿中,我们介绍了一种新颖的基于聚类的斑点减少框架(CSRF),该框架由聚类方法和随后的去斑点方法组成。由于边缘是两个相邻群集的边界,因此建议的框架使边缘保持完整。此外,在每个群集中,可将乘法斑点噪声建模为加性噪声。为了评估CSRF的性能并证明其通用性质,使用了一种聚类方法,即k-均值(KM),以及两种基于像素的去斑点算法,包括Lee滤波器(LF)和自适应Wiener滤波器(AWF)。结果表明,CSRF显着提高了去斑点算法的性能。使用包括信号信噪比(SNR)和结构相似性指数(SSIM)在内的两种数值评估措施,对体内健康的人类皮肤图像进行了评估。

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