Super-resolution imaging aims at improving the resolution of an image by
enhancing it with other images or data that might have been acquired using
different imaging techniques or modalities. In this paper we consider the task
of doubling, in each dimension, the resolution of grayscale images of binary
objects by fusion with double-resolution tomographic data that have been
acquired from two viewing angles. We show that this task is polynomial-time
solvable if the gray levels have been reliably determined. The problem becomes
NP-hard if the gray levels of some pixels come with an
error of ±1 or larger. The NP-hardness persists for any
larger resolution enhancement factor. This means that noise does not only
affect the quality of a reconstructed image but, less expectedly, also the
algorithmic tractability of the inverse problem itself.Comment: 26 pages, to appear in SIAM Journal on Discrete Mathematic