Structure and View Estimation for Tomographic Reconstruction: A Bayesian Approach

S. P. Mallick, Sameer Agarwal, D. Kriegman, Serge J. Belongie, B. Carragher, C. Potter
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引用次数: 30

Abstract

This paper addresses the problem of reconstructing the density of a scene from multiple projection images produced by modalities such as x-ray, electron microscopy, etc. where an image value is related to the integral of the scene density along a 3D line segment between a radiation source and a point on the image plane. While computed tomography (CT) addresses this problem when the absolute orientation of the image plane and radiation source directions are known, this paper addresses the problem when the orientations are unknown - it is akin to the structure-from-motion (SFM) problem when the extrinsic camera parameters are unknown. We study the problem within the context of reconstructing the density of protein macro-molecules in Cryogenic Electron Microscopy (cryo-EM), where images are very noisy and existing techniques use several thousands of images. In a non-degenerate configuration, the viewing planes corresponding to two projections, intersect in a line in 3D. Using the geometry of the imaging setup, it is possible to determine the projections of this 3D line on the two image planes. In turn, the problem can be formulated as a type of orthographic structure from motion from line correspondences where the line correspondences between two views are unreliable due to image noise. We formulate the task as the problem of denoising a correspondence matrix and present a Bayesian solution to it. Subsequently, the absolute orientation of each projection is determined followed by density reconstruction. We show results on cryo-EM images of proteins and compare our results to that of Electron Micrograph Analysis (EMAN) - a widely used reconstruction tool in cryo-EM.
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层析成像重建的结构和视图估计:贝叶斯方法
本文解决了从x射线,电子显微镜等方式产生的多个投影图像中重建场景密度的问题,其中图像值与场景密度沿辐射源和图像平面上的点之间的三维线段的积分有关。虽然计算机断层扫描(CT)解决了当图像平面的绝对方向和辐射源方向已知时的问题,但本文解决了当方向未知时的问题-它类似于外部相机参数未知时的运动结构(SFM)问题。我们在低温电子显微镜(cryo-EM)中重建蛋白质大分子密度的背景下研究了这个问题,其中图像非常嘈杂,现有技术使用数千张图像。在非简并构型中,对应于两个投影的观察平面在三维中相交于一条直线。利用成像设置的几何形状,可以确定这条3D线在两个图像平面上的投影。反过来,这个问题可以被表述为一种来自直线对应的运动的正射影结构,其中两个视图之间的直线对应由于图像噪声而不可靠。我们将该任务表述为对对应矩阵去噪的问题,并给出了一个贝叶斯解。然后,确定每个投影的绝对方向,然后进行密度重建。我们展示了蛋白质的冷冻电镜图像的结果,并将我们的结果与电子显微图分析(EMAN)的结果进行了比较-电子显微图分析是冷冻电镜中广泛使用的重建工具。
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