Biomedical Imaging Group, École Polytechnique Fédérale de Lausanne, Lausanne, Switzerland.
IEEE Trans Image Process. 2013 May;22(5):1873-88. doi: 10.1109/TIP.2013.2237919. Epub 2013 Jan 4.
We introduce a novel family of invariant, convex, and non-quadratic functionals that we employ to derive regularized solutions of ill-posed linear inverse imaging problems. The proposed regularizers involve the Schatten norms of the Hessian matrix, which are computed at every pixel of the image. They can be viewed as second-order extensions of the popular total-variation (TV) semi-norm since they satisfy the same invariance properties. Meanwhile, by taking advantage of second-order derivatives, they avoid the staircase effect, a common artifact of TV-based reconstructions, and perform well for a wide range of applications. To solve the corresponding optimization problems, we propose an algorithm that is based on a primal-dual formulation. A fundamental ingredient of this algorithm is the projection of matrices onto Schatten norm balls of arbitrary radius. This operation is performed efficiently based on a direct link we provide between vector projections onto lq norm balls and matrix projections onto Schatten norm balls. Finally, we demonstrate the effectiveness of the proposed methods through experimental results on several inverse imaging problems with real and simulated data.
我们引入了一类新的不变、凸和非二次泛函,用于导出不适定线性逆像问题的正则化解。所提出的正则化项涉及 Hessian 矩阵的 Schatten 范数,该范数在图像的每个像素处计算。它们可以被视为流行的全变分(TV)半范数的二阶扩展,因为它们满足相同的不变性属性。同时,通过利用二阶导数,它们避免了 TV 重建中常见的阶梯效应,并在广泛的应用中表现良好。为了解决相应的优化问题,我们提出了一种基于原始对偶公式的算法。该算法的一个基本组成部分是将矩阵投影到任意半径的 Schatten 范数球上。根据我们提供的向量投影到 lq 范数球和矩阵投影到 Schatten 范数球之间的直接联系,可以有效地执行此操作。最后,我们通过对具有真实和模拟数据的几个逆像问题的实验结果,证明了所提出方法的有效性。