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Axial resolution improvement in Spectral Domain Optical Coherence Tomography using a depth-adaptive maximum-a-posterior framework

机译:使用深度自适应最大框架的光谱域光相干断层扫描的轴向分辨率改进

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The axial resolution of Spectral Domain Optical Coherence Tomography (SD-OCT) images degrades with scanning depth due to the limited number of pixels and the pixel size of the camera, any aberrations in the spectrometer optics and wavelength dependent scattering and absorption in the imaged object. Here we propose a novel algorithm which compensates for the blurring effect of these factors of the depth-dependent axial Point Spread Function (PSF) in SD-OCT images. The proposed method is based on a Maximum A Posteriori (MAP) reconstruction framework which takes advantage of a Stochastic Fully Connected Conditional Random Field (SFCRF) model. The aim is to compensate for the depth-dependent axial blur in SD-OCT images and simultaneously suppress the speckle noise which is inherent to all OCT images. Applying the proposed depth-dependent axial resolution enhancement technique to an OCT image of cucumber considerably improved the axial resolution of the image especially at higher imaging depths and allowed for better visualization of cellular membrane and nuclei. Comparing the result of our proposed method with the conventional Lucy-Richardson deconvolution algorithm clearly demonstrates the efficiency of our proposed technique in better visualization and preservation of fine details and structures in the imaged sample, as well as better speckle noise suppression. This illustrates the potential usefulness of our proposed technique as a suitable replacement for the hardware approaches which are often very costly and complicated.
机译:光谱域光学相干断层扫描(SD-OCC)图像的轴向分辨率由于相机数量有限的像素和像素尺寸而导致的扫描深度,光谱仪光学器件中的任何像差和成像对象中的波长依赖性散射和吸收。在这里,我们提出了一种新颖的算法,该算法补偿了SD-OCT图像中深度依赖性轴向点扩展功能(PSF)的这些因素的模糊效果。所提出的方法基于最大的后验(MAP)重建框架,其利用随机完全连接的条件随机场(SFCRF)模型。目的是补偿SD-OCT图像中的深度依赖性轴向模糊,同时抑制了所有OCT图像所固有的斑点噪声。将所提出的深度依赖性轴向分辨率增强技术应用于黄瓜的OCT图像显着改善了图像的轴向分辨率,特别是在更高的成像深度处,并且允许更好地可视化细胞膜和细胞核。比较我们提出的方法与传统的Lucy-Richardson Deconvolution算法清楚地展示了我们所提出的技术的效率,以更好地可视化和保存成像样品中的细节和结构,以及更好的散斑噪声抑制。这说明了我们所提出的技术作为合适的硬件方法的替代性的潜在有用性,这些方法通常非常昂贵和复杂。

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