2000
DOI: 10.1006/cviu.2000.0854
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Modeling Parameter Space Behavior of Vision Systems Using Bayesian Networks

Abstract: The performance of most vision systems (or subsystems) is significantly dependent on the choice of its various parameters or thresholds. The associated parameter search space is extremely large and nonsmooth; moreover, the optimal choices of the parameters are usually mutually dependent on each other. In this paper we offer a Bayesian network-based probabilistic formalism, which we call the parameter dependence networks (PDNs), to model, abstract, and analyze the parameter space behavior of vision systems. The… Show more

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Cited by 9 publications
(4 citation statements)
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References 32 publications
(48 reference statements)
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“…As a way out, authors have either tried to model system behavior by simpler functions, e.g. Bayesian networks (Sarkar and Chavali, 2000), or developed specialized solutions for the particular problem at hand. Within this work, we aim to exploit the cascade coupling of system modules.…”
Section: Previous Workmentioning
confidence: 99%
“…As a way out, authors have either tried to model system behavior by simpler functions, e.g. Bayesian networks (Sarkar and Chavali, 2000), or developed specialized solutions for the particular problem at hand. Within this work, we aim to exploit the cascade coupling of system modules.…”
Section: Previous Workmentioning
confidence: 99%
“…Even in problems with no random components, automata algorithms can prove to be useful as stochastic search techniques; an example being the problem of graph partitioning [52]. Some of the other areas in which LA are useful include image processing [53]- [55], intelligent vehicle control [56], pruning decision trees [28], object partitioning [57], string taxonomy [58], and learning rule bases of fuzzy systems [59]. LA models provide a fairly general purpose technique for adaptive decision making, optimization, and control.…”
Section: Applicationsmentioning
confidence: 99%
“…In practical applications of Bayesian networks, it is necessary to employ certain restrictions and assumptions on the network structure to make the problem of belief propagation in the Bayesian network tractable [33,34]. Fung and Del Favero [33] advocate using imprecise independence assumptions to simplify the Bayesian network structure for the problem domain of information retrieval.…”
Section: Approximations To Bayesian Networkmentioning
confidence: 99%
“…However, from the example topic given earlier in this discussion, the features stock, portfolio and profit are not synonyms or antonyms but are definitely not independent of each other. Sarkar and Chavali [34] use a similar set of constraints for constructing a Bayesian network for modeling parameter space behavior of vision systems. They look at the problem of assigning an optimal set of parameters and thresholds to various vision tasks.…”
Section: Approximations To Bayesian Networkmentioning
confidence: 99%