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Accelerated graph-based spectral polynomial filters

机译:加速图基光谱多项式滤波器

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Graph-based spectral denoising is a low-pass filtering using the eigendecomposition of the graph Laplacian matrix of a noisy signal. Polynomial filtering avoids costly computation of the eigendecomposition by projections onto suitable Krylov subspaces. Polynomial filters can be based, e.g., on the bilateral and guided filters. We propose constructing accelerated polynomial filters by running flexible Krylov subspace based linear and eigenvalue solvers such as the Block Locally Optimal Preconditioned Conjugate Gradient (LOBPCG) method.
机译:基于图的光谱剥离是使用噪声信号图拉普拉斯矩阵的突出分解的低通滤波。多项式滤波避免了通过投影到合适的Krylov子空间上的昂贵分解的昂贵计算。多项式滤波器可以基于例如双边和引导过滤器。我们通过运行基于柔性Krylov子空间的线性和特征值溶剂来构建加速多项式滤波器,例如块局部最佳的预处理缀合物梯度(Lobpcg)方法。

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