Spatial-Temporal Saliency Feature Extraction for Robust Mean-Shift Tracker.

Lecture Notes in Computer Science(2014)

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Abstract
Robust object tracking in crowded and cluttered dynamic scenes is a very difficult task in robotic vision due to complex and changeable environment and similar features between the background and foreground. In this paper, a saliency feature extraction method is fused into mean-shift tracker to overcome above difficulties. First, a spatial-temporal saliency feature extraction method is proposed to suppress the interference of the complex background. Furthermore, we proposed a saliency evaluation method by fusing the top-down visual mechanism to enhance the tracking performance. Finally, the efficiency of the saliency features based mean-shift tracker is validated through experimental results and analysis.
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Key words
Saliency Feature,Mean-Shift,Object Tracking
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