视频中目标轮廓跟踪的自适应外观模型

M. S. Allili, D. Ziou
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引用次数: 3

摘要

本文提出了一种新的视频序列目标跟踪算法。该方法基于变分演算,采用自适应参数混合模型对目标特征进行表征。跟踪的基础是利用活动轮廓在序列的连续帧之间匹配物体混合模型,同时使混合模型适应由于光照条件和相机几何形状而变化的物体外观变化。该方法的实现基于水平集活动轮廓,允许自动拓扑变化和稳定的数值格式。我们通过在真实视频序列上执行的对象跟踪示例验证了我们的方法。
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Adaptive Appearance Model for Object Contour Tracking in Videos
In this paper, we propose a novel object tracking algorithm in video sequences. The formulation of the object tracking is based on variational calculus, where an adaptive parametric mixture model is used for object features representation. The tracking is based on matching the object mixture models between successive frames of the sequence by using active contours while adapting the mixture model to varying object appearance changes due to illumination conditions and camera geometry. The implementation of the method is based on level set active contours which allow for automatic topology changes and stable numerical schemes. We validate our approach on examples of object tracking performed on real video sequences.
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