Author/Authors :
Marc Christie ، نويسنده , , Jean-Marie Norm، نويسنده ,
Abstract :
In this paper, we present a semantic space partitioning (SSP) approach to the virtual camera composition problem.
Virtual camera composition (VCC) consists in positioning a camera in a virtual world, such that the resulting
image satisfies a set of visual cinematographic properties. Whereas most related works concentrate on numerically
computing a unique camera position satisfying the problem, we offer to isolate identical possible solutions in
3D volumes with respect to their visual properties, and to propose them to the user. We introduce the notion of
semantic volumes as an extension of visual aspects to characterize, compute and manipulate distinct solution sets.
Our approach relies on (1) a space partitioning process derived from a study of possible camera locations w.r.t.
to the objects in the scene and (2) local search numerical techniques to compute good representatives of each
volume. This work is motivated by the lack of VCC tools in 3D software and the will to integrate cinematographic
semantics in the description, solving and interaction processes. Experimental results illustrate the suitability of
our approach for identifying and providing distinct solution sets. Furthermore, the exploitation of the semantic
volumes lays the groundwork for natural and efficient user interaction by providing knowledge and reasoning on
possible classes of solutions.