We develop in this paper a novel intrinsic classification algorithm -- multi-frequency class averaging (MFCA) -- for classifying noisy projection images obtained from three-dimensional cryo-electron microscopy (cryo-EM) by the similarity among their viewing directions. This new algorithm leverages multiple irreducible representations of the unitary group to introduce additional redundancy into the representation of the optimal in-plane rotational alignment, extending and outperforming the existing class averaging algorithm that uses only a single representation. The formal algebraic model and representation theoretic patterns of the proposed MFCA algorithm extend the framework of Hadani and Singer to arbitrary irreducible representations of the unitary group. We conceptually establish the consistency and stability of MFCA by inspecting the spectral properties of a generalized local parallel transport operator through the lens of Wigner $D$-matrices. We demonstrate the efficacy of the proposed algorithm with numerical experiments.
翻译:在本文中,我们开发了一种新的内在分类算法 -- -- 多频级平均(MFCA) -- -- 用于根据三维冷冻电子显微镜(cryo-EM)的观测方向的相似性对从三维冷冻电子显微镜(cryo-EM)获得的噪音投影图像进行分类。这一新算法利用单一组的多重不可减损的表示方式,将额外冗余引入最佳的机载旋转组合中,扩大并优于仅使用单一表示法的现有平均算法。拟议的MFCA算法的正式代数模型和表达理论模式将Hadani和Singer的框架扩大到单一组的任意不可容忍的表示方式。我们从概念上通过Wigner $D$-materes的镜像来检查一个普遍的当地平行运输运营商的光谱特性,从而确立MFCA的连贯性和稳定性。我们用数字实验来证明拟议的算法的有效性。