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Robust Low Transformed Multi-Rank Tensor Methods for Image Alignment

机译:用于图像对齐的强大低变换的多级张量方法

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摘要

Aligning a group of linearly correlated images is an important task in computer vision. In this paper, we propose a combination of transformed tensor nuclear norm and tensor l(1) norm to deal with this image alignment problem, where the observed images, stacked into a third-order tensor, are deformed by unknown domain transformations and corrupted by sparse noise like impulse noise, partial occlusions, and illumination variation. The key advantage of the proposed method is that both spatial correlation and images variation can be captured by the use of transformed tensor nuclear norm. We show that when the underlying of correlated images is a low multi-rank tensor, an upper error bound of the estimator of the proposed model can be established and this bound can be better than the previous result. Besides the proposed convex transformed tensor model, the method can be further studied by incorporating nonconvex functions in the transformed tensor nuclear norm and the sparsity norm. Both the proposed convex and nonconvex optimization models are solved by generalized Gauss-Newton algorithms. Also the global convergence of the numerical methods for solving the subproblems of convex and nonconvex optimization models can be provided under very mild conditions. Extensive numerical experiments on real images with misalignment and sparse corruptions demonstrate the performance of our proposed methods is better than that of several state-of-the-art methods in terms of accuracy and efficiency.
机译:对齐一组线性相关图像是计算机视觉中的重要任务。在本文中,我们提出了转化的张量核规范和张量L(1)规范的组合来处理该图像对准问题,其中观察到的图像堆叠成三阶张量,由未知的域变换变形并由损坏稀疏噪声如脉冲噪声,部分闭塞和照明变化。所提出的方法的关键优点是可以通过使用变换的张量核标准来捕获空间相关性和图像变化。我们表明,当相关图像的基础是低多级张量时,可以建立所提出的模型的估计器的备用器的上误差,并且这种绑定可以比上一个结果更好。除了所提出的凸形变换的张量模型之外,还可以通过在转化的张量核规范和稀疏性规范中掺入非凸起功能来进一步研究该方法。所提出的凸和非凸化优化模型都是通过广义的高斯-牛顿算法解决的。还可以在非常温和的条件下提供求解凸起和非凸优化模型的子标数的数值方法的全局收敛性。具有未对准和稀疏损坏的实际图像的广泛数值实验证明了我们所提出的方法的性能优于若干最先进的方法在准确性和效率方面的性能。

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