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Automatic estimation of asymmetry for gradient-based alignment of noisy images on Lie group

机译:李群上基于梯度的噪声图像对齐的不对称性自动估计

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摘要

Many parametric image alignment approaches assume equality of the images to register up to motion compensation. In presence of noise this assumption does not hold. In particular, for gradient-based approaches, which rely on the optimization of an error functional with gradient descent methods, the performances depend on the amount of noise in each image. We propose in this paper to use the Asymmetric Composition on Lie groups (ACL) formulation of the alignment problem to improve the robustness in presence of asymmetric levels of noise. The ACL formulation, generalizing state-of-the-art gradient-based image alignment, introduces a parameter to weight the influence of the images during the optimization. Three new methods are presented to estimate this asymmetry parameter: one supervised (MVACL) and two fully automatic (AACL and GACL). Theoretical results and experimental validation show how the new algorithms improve robustness in presence of noise. Finally, we illustrate the interest of the new approaches for object tracking under low-light conditions.
机译:许多参数图像对齐方法都假定图像相等,以进行运动补偿。在存在噪声的情况下,该假设不成立。尤其是,对于基于梯度的方法,该方法依赖于使用梯度下降方法对误差函数进行优化,其性能取决于每个图像中的噪声量。我们建议在本文中使用对准问题的李群上不对称合成(ACL)公式来提高存在不对称噪声水平时的鲁棒性。 ACL公式概括了基于梯度的最新图像对齐方式,引入了一个参数来加权优化过程中图像的影响。提出了三种新方法来估计此不对称参数:一种是监督(MVACL),另一种是全自动(AACL和GACL)。理论结果和实验验证表明,新算法如何在存在噪声的情况下提高鲁棒性。最后,我们说明了在弱光条件下进行对象跟踪的新方法的重要性。

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