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Comparison of Gaussian filter versus wavelet-based denoising on graph-based segmentation of retinal OCT images

机译:高斯滤波器与基于小波的去噪对基于图的视网膜曲线图像分割的比较

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Accurate segmentation of spectral-domain Optical Coherence Tomography (SD-OCT) images helps diagnose retinal pathologies and facilitates the study of their progression/remission. Manual segmentation is clinical-expertise dependent and highly time-consuming. Furthermore, poor image contrast due to high-reflectivity of some retinal layers and the presence of heavy speckle noise, pose severe challenges to the automated segmentation algorithms. The first step towards retinal OCT segmentation therefore, is to create a noise-free image with edge details still preserved, as achieved by image reconstruction on a wavelet-domain preceded by bilateral-filtering. In this context, the current study compares the effects of image denoising using a simple Gaussian-filter to that of wavelet-based denoising, in order to help investigators decide whether an advanced denoising technique is necessary for accurate graph-based intraretinal layer segmentation. A comparative statistical analysis conducted between the mean thicknesses of the six layers segmented by the algorithm and those reported in a previous study, reports non-significant differences for five of the layers (p > 0.05) except for one layer (p = 0.04), when denoised using Gaussian-filter. Non-significant layer thickness differences are seen between both the algorithms for all the six retinal layers (p > 0.05) when bilateral-filtering and wavelet-based denoising is implemented before boundary delineation. However, this minor improvement in accuracy is achieved at an expense of substantial increase in computation time (~10s when run on a specific CPU) and logical complexity. Therefore, it is debatable if one should opt for advanced denoising techniques over a simple Gaussian-filter when implementing graph-based OCT segmentation algorithms.
机译:光谱域光学相干断层扫描(SD-OCT)图像的精确分割有助于诊断视网膜病理,并促进其进展/缓解的研究。手动分段是临床专业知识依赖性和高度耗时的。此外,由于某些视网膜层的高反射率和重度散斑噪声的存在,图像对比度差,对自动分割算法构成严重挑战。因此,第一步是朝向视网膜OCT分割的第一步是通过在双边滤波前面的小波结构上的图像重建所实现的,创建无噪声图像,其仍然被保留。在这种情况下,目前的研究比较了使用简单的高斯过滤器对基于小波的去噪的图像去噪的影响,以帮助调查人员决定准确的基于图形的Intraretinal层分割是必要的先进的去噪技术。在算法分段的六层的平均厚度与先前研究中报告的那些之间进行的比较统计分析,除了一层(P = 0.04),除了一层(P> 0.05),还向其中的五个层报告了非显着差异(P> 0.05),使用高斯过滤器去噪。当在边界描绘之前,当双侧过滤和基于小波的去噪时,在所有六个视网膜层(P> 0.05)之间的算法之间看到非显着层厚度差。然而,这种微小的准确性的提高是以计算时间的大量增加(在特定CPU上运行时的〜10s)和逻辑复杂性的基本增加。因此,如果在实现基于图形的OCT分段算法时,如果在简单的高斯过滤器上应选择高斯的高斯过滤器的高级去噪技术是值得简单的。

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