Department of Electrical and Computer Engineering, University of Rochester, Rochester, NY 14627, USA.
IEEE Trans Image Process. 2012 May;21(5):2559-71. doi: 10.1109/TIP.2012.2183143. Epub 2012 Jan 9.
We introduce novel image regularization penalties to overcome the practical problems associated with the classical total variation (TV) scheme. Motivated by novel reinterpretations of the classical TV regularizer, we derive two families of functionals involving higher degree partial image derivatives; we term these families as isotropic and anisotropic higher degree TV (HDTV) penalties, respectively. The isotropic penalty is the L(1) - L(2) mixed norm of the directional image derivatives, while the anisotropic penalty is the separable L(1) norm of directional derivatives. These functionals inherit the desirable properties of standard TV schemes such as invariance to rotations and translations, preservation of discontinuities, and convexity. The use of mixed norms in isotropic penalties encourages the joint sparsity of the directional derivatives at each pixel, thus encouraging isotropic smoothing. In contrast, the fully separable norm in the anisotropic penalty ensures the preservation of discontinuities, while continuing to smooth along the linelike features; this scheme thus enhances the linelike image characteristics analogous to standard TV. We also introduce efficient majorize-minimize algorithms to solve the resulting optimization problems. The numerical comparison of the proposed scheme with classical TV penalty, current second-degree methods, and wavelet algorithms clearly demonstrate the performance improvement. Specifically, the proposed algorithms minimize the staircase and ringing artifacts that are common with TV and wavelet schemes, while better preserving the singularities. We also observe that anisotropic HDTV penalty provides consistently improved reconstructions compared with the isotropic HDTV penalty.
我们引入了新的图像正则化惩罚项,以克服经典全变差(Total Variation,TV)方案所面临的实际问题。受经典 TV 正则化的新解释的启发,我们推导出了两类包含更高阶图像导数的泛函;我们分别将它们称为各向同性和各向异性高阶 TV(High-Degree TV,HDTV)惩罚项。各向同性惩罚项是方向图像导数的 L(1) - L(2)混合范数,而各向异性惩罚项是方向导数的可分离 L(1)范数。这些泛函继承了标准 TV 方案的理想特性,如旋转和平移不变性、对不连续性的保持以及凸性。各向同性惩罚项中混合范数的使用鼓励了每个像素的方向导数的联合稀疏性,从而鼓励各向同性平滑。相比之下,各向异性惩罚项中完全可分离的范数确保了不连续性的保持,同时继续沿线状特征进行平滑;这种方案因此增强了类似于标准 TV 的线状图像特征。我们还引入了有效的主-从最小化算法来解决由此产生的优化问题。与经典 TV 惩罚项、当前二阶方法和小波算法的数值比较清楚地证明了该方案的性能改进。具体来说,所提出的算法最小化了与 TV 和小波方案常见的阶梯状和振铃伪影,同时更好地保持了奇点。我们还观察到,各向异性 HDTV 惩罚项与各向同性 HDTV 惩罚项相比,提供了一致的改进重建效果。