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SPIEVIP
2010

Automatic scene activity modeling for improving object classification

13 years 6 months ago
Automatic scene activity modeling for improving object classification
In video surveillance, automatic methods for scene understanding and activity modeling can exploit the high redundancy of object trajectories observed over a long period of time. The goal of scene understanding is to generate a semantic model of the scene describing the patterns of normal activities. We are proposing to boost the performances of a real time object tracker in terms of object classification based on the accumulation of statistics over time. Based on the object shape, an initial three class object classification (Vehicle, Pedestrian and Other) is performed by the tracker. This initial labeling is usually very noisy because of object occlusions/merging and the eventual presence of shadows. The proposed scene activity modeling approach is derived from Makris and Ellis algorithm where the scene is described in terms of clusters of similar trajectories (called routes). The original envelope based model is replaced by a simpler statistical model around each route's node....
Samuel Foucher, Marc Lalonde, Langis Gagnon
Added 30 Sep 2010
Updated 30 Sep 2010
Type Conference
Year 2010
Where SPIEVIP
Authors Samuel Foucher, Marc Lalonde, Langis Gagnon
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