Compensated convex transforms have been introduced for extended real-valued functions defined over $\mathbb{R}^n$. In their application to image processing, interpolation, and shape interrogation, where one deals with functions defined over a bounded domain, one was making the implicit assumption that the function coincides with its transform at the boundary of the data domain. In this paper, we introduce local compensated convex transforms for functions defined in bounded open convex subsets $\Omega$ of $\mathbb{R}^n$ by making specific extensions of the function to the whole space, and establish their relations to globally defined compensated convex transforms via the mixed critical Moreau envelopes. We find that the compensated convex transforms of such extensions coincide with the local compensated convex transforms in the closure of $\Omega$. We also propose a numerical scheme for computing Moreau envelopes, establishing convergence of the scheme with the rate of convergence depending on the regularity of the original function. We give an estimate of the number of iterations needed for computing the discrete Moreau envelope. We then apply the local compensated convex transforms to image processing and shape interrogation. Our results are compared with those obtained by using schemes based on computing the convex envelope from the original definition of compensated convex transforms.
翻译:在对图像处理、内插和形状盘问的应用中,人们可以隐含地假设,该功能与数据域边界的变换相吻合。在本文件中,我们引入了当地补偿的变换,用于约束的开封子子集($\Omega$)中定义的功能,确定该功能对整个空间的具体扩展,并确立其与全球定义的补偿性 convex通过混合关键Moreau信封进行变换的关系。我们发现,这种变换的补偿性 convex与在数据域边界的变换相吻合。我们还提出了一个计算Moreau信封的数值方案,根据最初功能的规律性确定该方案与趋同率的趋同率。我们估计了计算离散式审讯机和全球定义的补偿性 convex通过混合关键Moreau信封进行变换。我们用原始变换的本地变换结果来补偿了原变换的图像。我们用原始变换的变换结果来补偿了原变换的Convex。