Density of moles is a strong predictor of malignant
melanoma. Some dermatologists advocate periodic fullbody
scan for high-risk patients. In current practice, physicians
compare images taken at different time instances to
recognize changes. There is an important clinical need to
follow changes in the number of moles and their appearance
(size, color, texture, shape) in images from two different
times. In this paper, we propose a method for finding
corresponding moles in patient’s skin back images at different
scanning times. At first, a template is defined for the human
back to calculate the moles’ normalized spatial coordinates.
Next, matching moles across images is modeled as
a graph matching problem and algebraic relations between
nodes and edges in the graphs are induced in the matching
cost function, which contains terms reflecting proximity regularization, angular agreement between mole pairs, and agreement between the moles’ normalized coordinates calculated ...
Ghassan Hamarneh, Hengameh Mirzaalian, Tim K. Lee