Maybe this is a very elementary question. But, I'm trying to learn how to work with Markov Random Fields for computer vision applications. Most, MRF Problems involve a data term and a pairwise smoothness term. But I came across a paper in which the data term was missing. So, from the point of view of implementation, I assume that their effect is nullified by setting them to the same value. Now, the inference algorithms that I know of (alpha-expansion and alpha-beta search and other move-making ones) adjust the labels and check for a decrease in the energy of the MRF. Now, assuming that I'm using a Potts model for the smoothness prior, where 0 energy is assigned to an edge if both labels are the same and positive if different. Wouldn't I end up getting an MRF whose labels are identical? Or is there something wrong in my data terms being set to the same value assumption.