Tracking Objects with Adaptive Feature Patches for PTZ Camera Visual Surveillance

Pattern Recognition(2010)

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摘要
Compared to the traditional tracking with fixed cameras, the PTZ-camera-based tracking is more challenging due to (i) lacking of reliable background modeling and subtraction; (ii) the appearance and scale of target changing suddenly and drastically. Tackling these problems, this paper proposes a novel tracking algorithm using patch-based object models and demonstrates its advantages with the PTZ-camera in the application of visual surveillance. In our method, the target model is learned and represented by a set of feature patches whose discriminative power is higher than others. The target model is matched and evaluated by both appearance and motion consistency measurements. The homography between frames is also calculated for scale adaptation. The experiment on several surveillance videos shows that our method outperforms the state-of-arts approaches.
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关键词
visual surveillance,tracking objects,patch-based object model,discriminative power,ptz-camera-based tracking,target model,surveillance video,feature patch,traditional tracking,adaptive feature patches,scale adaptation,novel tracking algorithm,ptz camera visual surveillance,visualization,object model
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