Orthogonal Matrix Retrieval with Spatial Consensus for 3D Unknown View Tomography

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Shuai Huang, Mona Zehni, Ivan Dokmanić, Zhizhen Zhao
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引用次数: 1

Abstract

Unknown view tomography (UVT) reconstructs a 3D density map from its 2D projections at unknown, random orientations. A line of work starting with Kam (1980) employs the method of moments with rotation-invariant Fourier features to solve UVT in the frequency domain, assuming that the orientations are uniformly distributed. This line of work includes the recent orthogonal matrix retrieval (OMR) approaches based on matrix factorization, which, while elegant, either require side information about the density that is not available or fail to be sufficiently robust. For OMR to break free from those restrictions, we propose to jointly recover the density map and the orthogonal matrices by requiring that they be mutually consistent. We regularize the resulting nonconvex optimization problem by a denoised reference projection and a nonnegativity constraint. This is enabled by the new closed-form expressions for spatial autocorrelation features. Further, we design an easy-to-compute initial density map which effectively mitigates the nonconvexity of the reconstruction problem. Experimental results show that the proposed OMR with spatial consensus is more robust and performs significantly better than the previous state-of-the-art OMR approach in the typical low signal-to-noise-ratio scenario of 3D UVT.
基于空间一致性的三维未知视图层析成像正交矩阵检索
未知视图层析成像(UVT)从未知随机方向的二维投影重建三维密度图。从Kam(1980)开始的一系列工作采用具有旋转不变傅立叶特征的矩量方法在频域中求解UVT,假设方向均匀分布。这方面的工作包括最近基于矩阵分解的正交矩阵检索(OMR)方法,这种方法虽然很优雅,但要么需要关于密度的不可用的侧信息,要么不够健壮。为了使OMR摆脱这些限制,我们提出通过要求密度图和正交矩阵相互一致来联合恢复它们。我们通过一个去噪的参考投影和一个非负性约束来正则化得到的非凸优化问题。这是由空间自相关特征的新封闭形式表达式实现的。此外,我们设计了一个易于计算的初始密度图,有效地减轻了重建问题的非凸性。实验结果表明,在典型的三维UVT低信噪比场景下,基于空间一致性的OMR方法具有更强的鲁棒性,且性能明显优于现有的OMR方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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