High Resolution Diffuse Optical Tomography using Short Range Indirect Subsurface Imaging

Chao Liu, Akash K. Maity, A. Dubrawski, A. Sabharwal, S. Narasimhan
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引用次数: 13

Abstract

Diffuse optical tomography (DOT) is an approach to recover subsurface structures beneath the skin by measuring light propagation beneath the surface. The method is based on optimizing the difference between the images collected and a forward model that accurately represents diffuse photon propagation within a heterogeneous scattering medium. However, to date, most works have used a few source-detector pairs and recover the medium at only a very low resolution. And increasing the resolution requires prohibitive computations/storage. In this work, we present a fast imaging and algorithm for high resolution diffuse optical tomography with a line imaging and illumination system. Key to our approach is a convolution approximation of the forward heterogeneous scattering model that can be inverted to produce deeper than ever before structured beneath the surface. We show that our proposed method can detect reasonably accurate boundaries and relative depth of heterogeneous structures up to a depth of 8 mm below highly scattering medium such as milk. This work can extend the potential of DOT to recover more intricate structures (vessels, tissue, tumors, etc.) beneath the skin for diagnosing many dermatological and cardio-vascular conditions.
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使用近距离间接地下成像的高分辨率漫射光学层析成像
漫射光学层析成像(DOT)是一种通过测量表面下的光传播来恢复皮肤下的地下结构的方法。该方法基于优化所收集图像与准确表示非均匀散射介质中漫射光子传播的正演模型之间的差异。然而,到目前为止,大多数工作都使用了少数源探测器对,并且只能以非常低的分辨率恢复介质。提高分辨率需要令人望而却步的计算/存储。在这项工作中,我们提出了一种具有线成像和照明系统的高分辨率漫射光学层析成像的快速成像和算法。我们方法的关键是前向非均匀散射模型的卷积近似,该模型可以被反转以产生比以往更深的表面下结构。结果表明,该方法可以在高散射介质(如牛奶)下8mm的深度内,较为准确地检测到非均质结构的边界和相对深度。这项工作可以扩展DOT的潜力,以恢复皮肤下更复杂的结构(血管,组织,肿瘤等),用于诊断许多皮肤病和心血管疾病。
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Awards [3 award winners] NLDNet++: A Physics Based Single Image Dehazing Network Action Recognition from a Single Coded Image Fast confocal microscopy imaging based on deep learning Comparing Vision-based to Sonar-based 3D Reconstruction
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