Arnon Amir, M. Lindenbaum
Computer Vision and Image Understanding
We provide a probabilistic framework, based on Perceptual Inference Networks, for the management of computational resources such as special purpose modules, feature detectors, and highly domain dependent algorithms. Since these resources tend to be computationally expensive and have limited applicability, judicious management is warranted. The resources are used to build a comprehensive description of the scene. Resources are selected in an information theoretic framework with the maximization of information gain per unit of computation as the optimality criterion. The viability of the algorithm is demonstrated in perceptual organization tasks. © 1995 Academic Press. All rights reserved.
Arnon Amir, M. Lindenbaum
Computer Vision and Image Understanding
David B. Mayer, Ashford W. Stalnaker
ACM SIGMIS CPR 1967
Dorit Nuzman, David Maze, et al.
SYSTOR 2011
Arnon Amir, Michael Lindenbaum
IEEE Transactions on Pattern Analysis and Machine Intelligence