
This detailed and thoroughly enhanced third edition presents a comprehensive study / reference to theories, methodologies and recent developments in solving computer vision problems based on MRFs, statistics and optimisation. It treats various problems in low- and high-level computational vision in a systematic and unified way within the MAP-MRF framework. Among the main issues covered are: how to use MRFs to encode contextual constraints that are indispensable to image understanding; how to derive the objective function for the optimal solution to a problem; and how to design computational algorithms for finding an optimal solution.
Easy-to-follow and coherent, the revised edition is accessible, includes the most recent advances, and has new and expanded sections on such topics as:
a Discriminative Random Fields (DRF)
a Strong Random Fields (SRF)
a Spatial-Temporal Models
a Total Variation Models
a Learning MRF for Classification (motivation ] DRF)
a Relation to Graphic Models
a Graph Cuts
a Belief Propagation
Features:
a Focuses on the application of Markov random fields to computer vision problems, such as image restoration and edge detection in the low-level domain, and object matching and recognition in the high-level domain
a Presents various vision models in a unified framework, including image restoration and reconstruction, edge and region segmentation, texture, stereo andmotion, object matching and recognition, and pose estimation
a Uses a variety of examples to illustrate how to convert a specific vision problem involving uncertainties and constraints into essentially an optimization problem under the MRF setting
a Introduces readers to the basic concepts, important models and various special classes of MRFs on the regular image lattice and MRFs on relational graphs derived from images
a Examines the problems of parameter estimation and function optimization
a Includes an extensive list of references
This broad-ranging and comprehensive volume is an excellent reference for researchers working in computer vision, image processing, statistical pattern recognition and applications of MRFs. It has been class-tested and is suitable as a textbook for advanced courses relating to these areas.
| merrill d peterson g a chauvet vishwanath h s bridges prof s radhakrishnan | gregg andersen central association of colleges and se barnabas lindars alfred h wachter philemon sturges |