Gum-Net:用于快速精确三维子图图像对齐和平均的无监督几何匹配。

Xiangrui Zeng, Min Xu
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引用次数: 0

摘要

我们提出了一种几何无监督匹配网络(Gum-Net),用于寻找两幅图像之间的几何对应关系,并将其应用于三维子图配准和平均。副图配准是低温电子断层成像技术(cryo-ET)中最重要的任务,该技术是一种革命性的三维成像技术,可用于观察单细胞中未受干扰的细胞景观的分子组织。然而,由于噪声和缺失楔效应等严重的成像限制,子图配准和平均非常具有挑战性。我们介绍了一种端到端可训练架构,其中有三个新模块专门用于保存特征空间信息和传播特征匹配信息。训练以完全无监督的方式进行,以优化匹配度量。不需要地面真实转换信息,也不需要类别级或实例级匹配监督信息。在对 6 个真实数据集和 9 个模拟数据集进行系统评估后,我们证明 Gum-Net 可将配准误差降低 40% 至 50%,并将平均分辨率提高 10%。与最先进的子图配准方法相比,Gum-Net 在实际应用中通过 GPU 加速实现了 70 到 110 倍的提速。我们的工作是首个针对强变换变化和高噪声图像的三维无监督几何匹配方法。我们的开源软件 AITom 提供了训练代码、训练模型和数据集。
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Gum-Net: Unsupervised Geometric Matching for Fast and Accurate 3D Subtomogram Image Alignment and Averaging.

We propose a Geometric unsupervised matching Network (Gum-Net) for finding the geometric correspondence between two images with application to 3D subtomogram alignment and averaging. Subtomogram alignment is the most important task in cryo-electron tomography (cryo-ET), a revolutionary 3D imaging technique for visualizing the molecular organization of unperturbed cellular landscapes in single cells. However, subtomogram alignment and averaging are very challenging due to severe imaging limits such as noise and missing wedge effects. We introduce an end-to-end trainable architecture with three novel modules specifically designed for preserving feature spatial information and propagating feature matching information. The training is performed in a fully unsupervised fashion to optimize a matching metric. No ground truth transformation information nor category-level or instance-level matching supervision information is needed. After systematic assessments on six real and nine simulated datasets, we demonstrate that Gum-Net reduced the alignment error by 40 to 50% and improved the averaging resolution by 10%. Gum-Net also achieved 70 to 110 times speedup in practice with GPU acceleration compared to state-of-the-art subtomogram alignment methods. Our work is the first 3D unsupervised geometric matching method for images of strong transformation variation and high noise level. The training code, trained model, and datasets are available in our open-source software AITom.

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