The formulation of norms on continuous-domain Banach spaces with exact pixel-based discretization is advantageous for solving inverse problems (IPs). In this paper, we investigate a new regularization that is a convex combination of a TV term and the $\M(\R^2)$ norm of mixed derivatives. We show that the extreme points of the corresponding unit ball are indicator functions of polygons whose edges are aligned with either the $x_1$- or $x_2$-axis. We then apply this result to construct a new regularization for IPs, which can be discretized exactly by tensor products of first-order B-splines, or equivalently, pixels. Furthermore, we exactly discretize the loss of the denoising problem on its canonical pixel basis and prove that it admits a unique solution, which is also a solution to the underlying continuous-domain IP.
翻译:在连续域Banach空间上构建具有精确像素化离散形式的范数对于求解逆问题具有优势。本文研究一种新的正则化方法,它是TV项与混合导数$\M(\R^2)$范数的凸组合。我们证明对应单位球的极值点是多边形指示函数,其边与$x_1$轴或$x_2$轴对齐。随后应用该结果为逆问题构建新的正则化方法,该方法可通过一阶B样条张量积(等价于像素)实现精确离散化。此外,我们在规范像素基上精确离散化去噪问题的损失函数,并证明其存在唯一解,该解同时也是底层连续域逆问题的解。