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A new improved filter for target tracking: compressed iterative particle filter

机译:一种用于目标跟踪的改进的新滤波器:压缩迭代粒子滤波器

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Target tracking in video is a hot topic in computer vision field, which has wide applications in surveillance, robot navigation and human-machine interaction etc. Meanshift is widely used algorithm in video target tracking field. The basic mean shift algorithm only considers the color of targets as the tracking characteris- tic feature, so if the appearance of the target changes greatly or there exits other objects whose color is similar to the target, the tracking process will fail. To enhance the stability and robustness of the algorithm, we introduce par- ticle filter into the tracking process. Basic particle filter has some disadvantages such as low accuracy, high computational complexity. In this paper, an improved particle filter GA-UPF was proposed, in which a new re-sampling algorithm was used to predict target centroid position. The target tracking system of binocular stereo vision is designed and implemented. Experi- mental results have shown that our algorithm can tracking object in video with high accuracy and low computational complexity.
机译:视频目标跟踪是计算机视觉领域的热门话题,在监视,机器人导航和人机交互等领域有着广泛的应用。Meanshift在视频目标跟踪领域得到了广泛的应用。基本的均值漂移算法仅将目标的颜色视为跟踪特征,因此,如果目标的外观发生很大变化或存在其他颜色与目标相似的对象,则跟踪过程将失败。为了提高算法的稳定性和鲁棒性,我们在跟踪过程中引入了粒子滤波器。基本粒子滤波器具有一些缺点,例如精度低,计算复杂度高。本文提出了一种改进的粒子滤波器GA-UPF,其中使用了一种新的重采样算法来预测目标质心位置。设计并实现了双目立体视觉目标跟踪系统。实验结果表明,我们的算法可以高精度,低计算复杂度地跟踪视频中的对象。

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