In this paper, we study the problem of a batch of linearly correlated image alignment, where the observed images are deformed by some unknown domain transformations, and corrupted by additive Gaussian noise and sparse noise simultaneously. By stacking these images as the frontal slices of a third-order tensor, we propose to utilize the tensor factorization method via transformed tensor-tensor product to explore the low-rankness of the underlying tensor, which is factorized into the product of two smaller tensors via transformed tensor-tensor product under any unitary transformation. The main advantage of transformed tensor-tensor product is that its computational complexity is lower compared with the existing literature based on transformed tensor nuclear norm. Moreover, the tensor $\ell_p$ $(0<p<1)$ norm is employed to characterize the sparsity of sparse noise and the tensor Frobenius norm is adopted to model additive Gaussian noise. A generalized Gauss-Newton algorithm is designed to solve the resulting model by linearizing the domain transformations and a proximal Gauss-Seidel algorithm is developed to solve the corresponding subproblem. Furthermore, the convergence of the proximal Gauss-Seidel algorithm is established, whose convergence rate is also analyzed based on the Kurdyka-$\L$ojasiewicz property. Extensive numerical experiments on real-world image datasets are carried out to demonstrate the superior performance of the proposed method as compared to several state-of-the-art methods in both accuracy and computational time.
翻译:在本文中, 我们研究一系列线性相关图像对齐问题, 观察到的图像被某些未知域变形变形变形变形, 并同时被添加高尔素噪音和稀散噪音腐蚀。 通过将这些图像堆叠成第三阶高尔夫的前片, 我们提议使用高尔夫因子化方法, 通过变制高尔夫高尔夫产品来探索深色色调的低位化方法, 以在任何单一变换中, 通过变制高尔夫色素产品, 将观察到的图像变形变形。 变制高尔色素产品的主要优点是其计算复杂性低于基于变制高尔夫核规范的现有文献。 此外, 将这些图像堆叠成高尔夫高尔夫高尔夫高尔夫高尔夫高尔夫高尔夫高尔夫的低位化方法, 将域域变形变形变形变形变形变形变形和质价变色价变色价变更低的更价化方法, 也用于变色变色变色变色变色变色变色变变格。