This paper explores the application of semi-qualitative probabilistic networks (SQPNs) that combine numeric and qualitative information to computer vision problems. Our version of SQPN allows qualitative influences and imprecise probability measures us-ing intervals. We describe an Imprecise Dirichlet model for parameter learning and an iterative algorithm for evaluating posterior probabilities, maximum a posteriori and most probable explanations. Experiments on facial expression recognition and image segmentation problems are performed using real data. AMS Subject Classification: 68T37, 62F15, and 68T30
This thesis investigates the role of optimization in two areas of Computer Science: Computer Vision ...
98 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2003.With the growing use of comput...
We formulate several problems in early vision as inverse problems. Among the solution methods we r...
This paper explores semi-qualitative probabilistic networks (SQPNs) that combine numeric and qualita...
AbstractQualitative probabilistic networks (QPNs) are basically qualitative derivations of Bayesian ...
Semi-qualitative probabilistic networks (SQPNs) merge two important graphical model formalisms: Baye...
A probabilistic network consists of a graphical representation (a directed graph) of the important v...
AbstractQualitative probabilistic networks were designed to overcome, to at least some extent, the q...
A fundamental task for both biological perception systems and human-engineered agents is to infer un...
Semi-qualitative probabilistic networks (SQPNs) merge two important graphical model formalisms: Baye...
grantor: University of TorontoIn this thesis we explore and work with a particular probabi...
In designing a Bayesian network for an actual problem, developers need to bridge the gap between th...
Qualitative probabilistic networks have been designed for probabilistic reasoning in a qualitative w...
Computer vision is currently one of the most exciting areas of artificial intelligence research, lar...
AbstractIn designing a Bayesian network for an actual problem, developers need to bridge the gap bet...
This thesis investigates the role of optimization in two areas of Computer Science: Computer Vision ...
98 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2003.With the growing use of comput...
We formulate several problems in early vision as inverse problems. Among the solution methods we r...
This paper explores semi-qualitative probabilistic networks (SQPNs) that combine numeric and qualita...
AbstractQualitative probabilistic networks (QPNs) are basically qualitative derivations of Bayesian ...
Semi-qualitative probabilistic networks (SQPNs) merge two important graphical model formalisms: Baye...
A probabilistic network consists of a graphical representation (a directed graph) of the important v...
AbstractQualitative probabilistic networks were designed to overcome, to at least some extent, the q...
A fundamental task for both biological perception systems and human-engineered agents is to infer un...
Semi-qualitative probabilistic networks (SQPNs) merge two important graphical model formalisms: Baye...
grantor: University of TorontoIn this thesis we explore and work with a particular probabi...
In designing a Bayesian network for an actual problem, developers need to bridge the gap between th...
Qualitative probabilistic networks have been designed for probabilistic reasoning in a qualitative w...
Computer vision is currently one of the most exciting areas of artificial intelligence research, lar...
AbstractIn designing a Bayesian network for an actual problem, developers need to bridge the gap bet...
This thesis investigates the role of optimization in two areas of Computer Science: Computer Vision ...
98 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2003.With the growing use of comput...
We formulate several problems in early vision as inverse problems. Among the solution methods we r...