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Real-Time Tracking of Non-Rigid Objects using Mean Shift
- IEEE CVPR 2000
, 2000
"... A new method for real-time tracking of non-rigid objects seen from a moving camera isproposed. The central computational module is based on the mean shift iterations and nds the most probable target position in the current frame. The dissimilarity between the target model (its color distribution) an ..."
Abstract
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Cited by 424 (16 self)
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A new method for real-time tracking of non-rigid objects seen from a moving camera isproposed. The central computational module is based on the mean shift iterations and nds the most probable target position in the current frame. The dissimilarity between the target model (its color distribution) and the target candidates is expressed by a metric derived from the Bhattacharyya coefficient. The theoretical analysis of the approach shows that it relates to the Bayesian framework while providing a practical, fast and efficient solution. The capability of the tracker to handle in real-time partial occlusions, significant clutter, and target scale variations, is demonstrated for several image sequences.
Real-Time Tracking of Non-Rigid Objects using Mean Shift
, 2000
"... A new method for r eal-time tracking of non-rigid objects seen from a moving cameraisproposed. The central computational module is based on the mean shift iterations and finds the most prob able tar get p osition in the current frame. The dissimilarity between the target model (its c olor distribut ..."
Abstract
-
Cited by 1 (0 self)
- Add to MetaCart
A new method for r eal-time tracking of non-rigid objects seen from a moving cameraisproposed. The central computational module is based on the mean shift iterations and finds the most prob able tar get p osition in the current frame. The dissimilarity between the target model (its c olor distribution) and the target candidates is expr essed by a metric derivedfrom the Bhattacharyya coefficient. The theoretical analysis of the approach shows that it relates to the Bayesian framework while providing a practical, fast and efficient solution. The capability of the tracker to handle in real-time partial occlusions, significant clutter, and target scale variations, is demonstrated for several image sequences. 1

