Esmaeili Mahad, Dehnavi Alireza Mehri, Hajizadeh Fedra, Rabbani Hosseini
Department of Bioelectrics and Biomedical Engineering, Medical Image & Signal Processing Research Center, School of Advanced Technologies in Medicine, Isfahan University of Medical Sciences, Isfahan, Iran.
Department of Medical Bioengineering, Faculty of Advanced Medical Sciences, Tabriz University of Medical Sciences, Tabriz, Iran.
Biomed Opt Express. 2020 Jan 3;11(2):586-608. doi: 10.1364/BOE.377021. eCollection 2020 Feb 1.
Optical coherence tomography (OCT) is a recently emerging non-invasive diagnostic tool useful in several medical applications such as ophthalmology, cardiology, gastroenterology and dermatology. One of the major problems with OCT pertains to its low contrast due to the presence of multiplicative speckle noise, which limits the signal-to-noise ratio (SNR) and obscures low-intensity and small features. In this paper, we recommend a new method using the 3D curvelet based K-times singular value decomposition (K-SVD) algorithm for speckle noise reduction and contrast enhancement of the intra-retinal layers of 3D Spectral-Domain OCT (3D-SDOCT) images. In order to benefit from the near-optimum properties of curvelet transform (such as good directional selectivity) on top of dictionary learning, we propose a new plan in dictionary learning by using the curvelet atoms as the initial dictionary. For this reason, the curvelet transform of the noisy image is taken and then the noisy coefficients matrix in each scale, rotation and spatial coordinates is passed through the K-SVD denoising algorithm with predefined 3D initial dictionary that is adaptively selected from thresholded coefficients in the same subband of the image. During the denoising of curvelet coefficients, we can also modify them for the purpose of contrast enhancement of intra-retinal layers. We demonstrate the ability of our proposed algorithm in the speckle noise reduction of 17 publicly available 3D OCT data sets, each of which contains 100 B-scans of size 512×1000 with and without neovascular age-related macular degeneration (AMD) images acquired using SDOCT, Bioptigen imaging systems. Experimental results show that an improvement from 1.27 to 7.81 in contrast to noise ratio (CNR), and from 38.09 to 1983.07 in equivalent number of looks (ENL) is achieved, which would outperform existing state-of-the-art OCT despeckling methods.
光学相干断层扫描(OCT)是一种最近出现的非侵入性诊断工具,在眼科、心脏病学、胃肠病学和皮肤病学等多种医学应用中很有用。OCT的主要问题之一是由于存在乘性散斑噪声而导致其对比度低,这限制了信噪比(SNR)并掩盖了低强度和小特征。在本文中,我们推荐一种使用基于3D曲波的K次奇异值分解(K-SVD)算法的新方法,用于3D光谱域OCT(3D-SDOCT)图像视网膜内层的散斑噪声降低和对比度增强。为了在字典学习之上受益于曲波变换的近乎最优特性(如良好的方向选择性),我们提出了一种在字典学习中的新方案,即使用曲波原子作为初始字典。因此,对噪声图像进行曲波变换,然后将每个尺度、旋转和空间坐标中的噪声系数矩阵通过K-SVD去噪算法,该算法使用从图像同一子带中的阈值化系数自适应选择的预定义3D初始字典。在曲波系数去噪过程中,我们还可以对其进行修改,以增强视网膜内层的对比度。我们展示了我们提出的算法在17个公开可用的3D OCT数据集的散斑噪声降低方面的能力,每个数据集包含100个大小为512×1000的B扫描图像,有无新生血管性年龄相关性黄斑变性(AMD)图像,这些图像是使用SDOCT、Bioptigen成像系统采集的。实验结果表明,对比度与噪声比(CNR)从1.27提高到7.81,等效视数(ENL)从38.09提高到1983.07,这将优于现有的最先进的OCT去斑方法。