凸被积全变分泛函成像中的双层训练方案

V. Pagliari, Kostas Papafitsoros, Bogdan Raiță, Andreas Vikelis
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引用次数: 6

摘要

。在图像处理的背景下,给定一个常系数的k阶齐次线性微分算子,研究了一类正则项依赖于该算子的变分问题。精确地说,正则化是空间非齐次积分的积分,其凸依赖于应用于图像函数的微分算子。利用Radon测度理论和以BV为模型的合适函数空间,使设置更为严格。对于相应的变分问题,我们证明了所涉泛函的下半连续性和极小值的存在性。然后,我们将后者嵌入到一个双层方案中,以便自动计算与空间相关的正则化参数,从而使重建图像具有良好的灵活性和保留细节。建立了该方案的最优存在性,并通过数值算例验证了该方案在图像去噪中的可行性。我们处理的情况是Huber版本的一阶和二阶总变分,其中Huber和正则化参数都是空间相关的。值得注意的是,与类似类型的正则化相比,二阶总变分的空间依赖版本产生了高质量的重建,并且引入了空间依赖的Huber参数,从而进一步增强了图像细节。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bilevel training schemes in imaging for total-variation-type functionals with convex integrands
. In the context of image processing, given a k -th order, homogeneous and linear differential operator with constant coefficients, we study a class of variational problems whose regularizing terms depend on the operator. Precisely, the regularizers are integrals of spatially inhomogeneous integrands with convex dependence on the differential operator applied to the image function. The setting is made rigorous by means of the theory of Radon measures and of suitable function spaces modeled on BV . We prove the lower semicontinuity of the functionals at stake and existence of minimizers for the corresponding variational problems. Then, we embed the latter into a bilevel scheme in order to automatically compute the space-dependent regularization parameters, thus allowing for good flexibility and preservation of details in the reconstructed image. We establish existence of optima for the scheme and we finally substantiate its feasibility by numerical examples in image denoising. The cases that we treat are Huber versions of the first and second order total variation with both the Huber and the regularization parameter being spatially dependent. Notably the spatially dependent version of second order total variation produces high quality reconstructions when compared to regularizations of similar type, and the introduction of the spatially dependent Huber parameter leads to a further enhancement of the image details.
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