This unique text/reference discusses in depth the two integral
components of reconstructive surgery; fracture detection, and
reconstruction from broken bone fragments. In addition to supporting its
application-oriented viewpoint with detailed coverage of theoretical
issues, the work incorporates useful algorithms and relevant concepts
from both graph theory and statistics. Topics and features: presents
practical solutions for virtual craniofacial reconstruction and
computer-aided fracture detection; discusses issues of image
registration, object reconstruction, combinatorial pattern matching, and
detection of salient points and regions in an image; investigates the
concepts of maximum-weight graph matching, maximum-cardinality
minimum-weight matching for a bipartite graph, determination of minimum
cut in a flow network, and construction of automorphs of a cycle graph;
examines the techniques of Markov random fields, hierarchical Bayesian
restoration, Gibbs sampling, and Bayesian inference.