We propose a new non-convex first-order variational model for the image
super-resolution problem. The model employs a recently developed regularizer that has
proven to be effective in image restoration. Due to this regularizer, the salient feature of
our model lies in the fact it can construct sharp edges in those generated super-resolution
images from lower-resolution ones. Moreover, it also helps suppress the staircase effect.
The maximum-minimum principle is proved, which indicates that there is no need to
impose hard constraints on the objective function. Alternating direction method of multipliers with spectral penalty selection (spsADMM) is utilized to minimize the associated
functional. Cartoon and real gray and color images are tested to demonstrate the features of our model to show the comparison with state-of-the-art image super-resolution
techniques.