ABSTRACT
In this paper, an improved tracking algorithm in crowded scenes and dynamic background is presented, detecting motion objects with an improved TFDM [1] based on adaptive background registration automatically, and tracking objects with a joint method of Motion Trajectory and MFTM [1]. The experimental results show that the better effects of detecting and tracking can be acquired than [1] in crowded scenes and dynamic background.
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Index Terms
- An improved tracking algorithm in crowded scenes and dynamic background
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