IEEE Trans Cybern. 2016 Jun;46(6):1388-99. doi: 10.1109/TCYB.2015.2446755. Epub 2015 Jul 21.
In the commonly employed regularization models of image restoration and super-resolution (SR), the norm determination is often challenging. This paper proposes a method to adaptively determine the optimal norms for both fidelity term and regularization term in the (SR) restoration model. Inspired by a generalized likelihood ratio test, a piecewise function is proposed to solve the norm of the fidelity term. This function can find the stable norm value in a certain number of iterations, regardless of whether the noise type is Gaussian, impulse, or mixed. For the regularization norm, the main advantage of the proposed method is that it is locally adaptive. Specifically, it assigns different norms for different pixel locations, according to the local activity measured by a structure tensor metric. The proposed method was tested using different types of images. The experimental results and error analyses verify the efficacy of the method.
在常用的图像恢复和超分辨率(SR)正则化模型中,范数的确定往往具有挑战性。本文提出了一种方法,用于自适应确定 SR 恢复模型中保真项和正则化项的最优范数。受广义似然比检验的启发,提出了一种分段函数来确定保真项的范数。该函数可以在一定的迭代次数内找到稳定的范数值,而与噪声类型是高斯、脉冲还是混合无关。对于正则化范数,所提出方法的主要优点是局部自适应。具体来说,它根据结构张量度量测量的局部活动,为不同的像素位置分配不同的范数。使用不同类型的图像对所提出的方法进行了测试。实验结果和误差分析验证了该方法的有效性。