We consider a shape optimization based method for finding the best interpolation data in the compression of images with noise. The aim is to reconstruct missing regions by means of minimizing a data fitting term in an $L^p$-norm between original images and their reconstructed counterparts using linear diffusion PDE-based inpainting. Reformulating the problem as a constrained optimization over sets (shapes), we derive the topological asymptotic expansion of the considered shape functionals with respect to the insertion of small ball (a single pixel) using the adjoint method. Based on the achieved distributed topological shape derivatives, we propose a numerical approach to determine the optimal set and present numerical experiments showing, the efficiency of our method. Numerical computations are presented that confirm the usefulness of our theoretical findings for PDE-based image compression.
翻译:我们考虑一种基于形状优化的方法,在以噪音压缩图像时找到最佳的内插数据,目的是通过将原始图像与其重建的对应图像之间用线性扩散 PDE 涂色法,在原始图像与重建的对应图像之间以$L ⁇ p$-norm 中的数据适当术语最小化,从而重建缺失区域。将这一问题重新定位为对各组(形状)的有限优化,我们得出了在应用联合法插入小球(单像素)时所考虑的形状功能的表层无症状扩展。根据已实现的分布式表层形状衍生物,我们建议了一种数字方法来确定最佳数据集和当前数字实验显示我们方法的效率。提出了数值计算,证实了我们基于PDE图像压缩的理论发现对PDE的实用性。