Hierarchical probabilistic models for video object segmentation and tracking

D Thirde, G Jones - … of the 17th International Conference on …, 2004 - ieeexplore.ieee.org
D Thirde, G Jones
Proceedings of the 17th International Conference on Pattern …, 2004ieeexplore.ieee.org
When tracking and segmenting semantic video objects, different forms of representational
model can be used to find the object region on a per-frame basis. We propose a novel
hierarchical technique using parametric models to describe the appearance and location of
an object and then use non-parametric methods to model the sub-object regions for
accurate pixel-wise segmentation. Our motivation is to use parametric models to locate the
object, improving the sensitivity of the non-parametric sub-object region models to …
When tracking and segmenting semantic video objects, different forms of representational model can be used to find the object region on a per-frame basis. We propose a novel hierarchical technique using parametric models to describe the appearance and location of an object and then use non-parametric methods to model the sub-object regions for accurate pixel-wise segmentation. Our motivation is to use parametric models to locate the object, improving the sensitivity of the non-parametric sub-object region models to background clutter. The results indicate this is a promising approach to extracting video objects.
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