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BMVC
1998

Segmentation of Global Motion using Temporal Probabilistic Classification

13 years 5 months ago
Segmentation of Global Motion using Temporal Probabilistic Classification
The segmentation of pixels belonging to different moving elements within a cinematographic image sequence underpins a range of post-production special effects. In this work, the separation of foreground elements, such as actors, from arbitrary backgrounds rather than from a blue screen is accomplished by accurately estimating the visual motion induced by a moving camera. The optical-flow field of the background is recovered using a parametric motion model (motivated by the three-dimensional pan-and-zoom motion of a camera) embedded in a spatiotemporal least-squares minimisation framework. A maximum a posteriori probability (MAP) approach is used to assign pixel membership (background, uncovered, covered and foreground) defined relative to the background element. The standard approach, based on class-conditional a priori distributions of displaced-frame differences, is augmented by information capturing the expected temporal transitions of pixel labels.
P. R. Giaccone, Graeme A. Jones
Added 01 Nov 2010
Updated 01 Nov 2010
Type Conference
Year 1998
Where BMVC
Authors P. R. Giaccone, Graeme A. Jones
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