论文标题
歧管重新布线以进行未标记的成像
Manifold Rewiring for Unlabeled Imaging
论文作者
论文摘要
几何数据分析依赖于作为输入或从数据推断的图表。在求解下游任务(例如图形信号降解)时,这些图通常被视为“正确”。但是,已知现实图形包含缺失和虚假链接。同样,从嘈杂数据推断出的图将受到干扰。因此,我们定义和研究图形降解的问题,而不是图形信号denoising,并提出了一种基于链接预测图神经网络的方法。我们特别关注从低维歧管采样的点云上的邻域图,例如在成像逆问题和探索性数据分析中产生的斑点。我们在常规合成图上说明了图形denoising框架,然后将其应用于单粒子冷冻EM,其中测量结果被非常高的噪声损坏。由于这种降解,初始图被噪声污染,导致缺失或虚假边缘。我们表明,我们提出的denoing算法的图表改善了多频矢量扩散图的最新性能。
Geometric data analysis relies on graphs that are either given as input or inferred from data. These graphs are often treated as "correct" when solving downstream tasks such as graph signal denoising. But real-world graphs are known to contain missing and spurious links. Similarly, graphs inferred from noisy data will be perturbed. We thus define and study the problem of graph denoising, as opposed to graph signal denoising, and propose an approach based on link-prediction graph neural networks. We focus in particular on neighborhood graphs over point clouds sampled from low-dimensional manifolds, such as those arising in imaging inverse problems and exploratory data analysis. We illustrate our graph denoising framework on regular synthetic graphs and then apply it to single-particle cryo-EM where the measurements are corrupted by very high levels of noise. Due to this degradation, the initial graph is contaminated by noise, leading to missing or spurious edges. We show that our proposed graph denoising algorithm improves the state-of-the-art performance of multi-frequency vector diffusion maps.