Optical diffraction tomography (ODT) produces three dimensional distribution of refractive index (RI) by measuring scattering fields at various angles. Although the distribution of RI index is highly informative, due to the missing cone problem stemming from the limited-angle acquisition of holograms, reconstructions have very poor resolution along axial direction compared to the horizontal imaging plane. To solve this issue, here we present a novel unsupervised deep learning framework, which learns the probability distribution of missing projection views through optimal transport driven cycleGAN. Experimental results show that missing cone artifact in ODT can be significantly resolved by the proposed method.
翻译:光学折射成像(ODT)通过从不同角度测量散射场,生成折射指数(RI)的三维分布。虽然RI指数的分布信息量很高,但由于短角获得全息图引起的锥形缺失问题,重建在轴向上与水平成像平面相比的分辨率非常差。为了解决这个问题,我们在这里提出了一个新的未经监督的深层学习框架,通过最佳运输驱动的循环GAN,了解缺失的投影视图的概率分布。实验结果表明,ODT缺失的锥形文物可以通过拟议方法得到重大解决。