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Particle Filter Algorithm for Object Tracking Based on Color Local Entropy

机译:基于颜色局部熵的粒子滤波目标跟踪算法

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摘要

To achieve accurate visual object tracking and overcome the difficulties brought by the object deformation, occlusion, and illumination variations, a particle filter for object tracking algorithm based on color local entropy (CLE) is proposed. First we improved the traditional histogram weighted function by using a scale factor. Then, for the shortcoming that the color feature is sensitive to illumination and environmental interference, a color local entropy object observation model is constructed by mapping the object from color feature space to local entropy space. In addition, an adaptive updating strategy of the object template is designed and the number of particle is adjusted dynamically according to the tracking performance. The experimental results show that compared with several existing algorithms, the proposed algorithm is more effective and robust for the real-time object tracking under the situation of illumination variation, object occlusion, and nonlinear motion.
机译:为了实现精确的视觉目标跟踪并克服目标变形,遮挡和光照变化带来的困难,提出了一种基于颜色局部熵(CLE)的目标跟踪算法粒子滤波器。首先,我们使用比例因子改进了传统的直方图加权函数。然后,针对颜色特征对光照和环境干扰敏感的缺点,通过将对象从颜色特征空间映射到局部熵空间,构造了颜色局部熵对象观察模型。另外,设计了对象模板的自适应更新策略,并根据跟踪性能动态调整了粒子数量。实验结果表明,与现有的几种算法相比,该算法在光照变化,物体遮挡和非线性运动的情况下,对实时物体跟踪更加有效和鲁棒。

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