Functional Graphical Models

نویسنده

  • Jocelyn Marchadier
چکیده

Functional models are frequently used in computer vision and photogrammetry, as they enable the mathematical formulation of several problems such as pose computation and more generally the parameter estimation problem. However, the structural properties of such models have only seldom been studied. This contribution is dedicated to the analysis of such properties. We propose a new formalism that enables the analysis and design of functional models. Figure 1: Orthogonal lines

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تاریخ انتشار 2003