首页> 外文期刊>International Journal of Innovative Computing Information and Control >HUMAN TRACKING USING PARTICLE FILTER BASED ON SWITCHING ADAPTIVE/NONADAPTIVE OBSERVATION MODEL
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HUMAN TRACKING USING PARTICLE FILTER BASED ON SWITCHING ADAPTIVE/NONADAPTIVE OBSERVATION MODEL

机译:基于切换自适应/非自适应观测模型的粒子滤波人类跟踪

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摘要

In this paper, we describe a human tracking method based on a particle filter with the switching observation model. During tracking humans in video scenes, occlusions and shape changes of target human often occur. Adaptive observation model in which the model is updated in every frame is effective for shape changes; however, it causes wrong tracking in occlusion scene. To realize robust tracking, switching observation model is introduced. In the method, adaptive observation is basically used, and the update of observation model is stopped when an occlusion occurs. To detect an occlusion, likelihoods are used. The model is applied to some datasets, and the effectiveness of the method is verified.
机译:在本文中,我们描述了一种基于带有切换观测模型的粒子滤波的人体跟踪方法。在视频场景中跟踪人的过程中,经常发生目标人的遮挡和形状变化。在每帧中更新模型的自适应观察模型对于形状变化是有效的;但是,它会导致遮挡场景中的错误跟踪。为了实现鲁棒的跟踪,引入了切换观测模型。该方法主要使用自适应观察,当发生遮挡时停止观察模型的更新。为了检测遮挡,使用了可能性。该模型被应用于一些数据集,并验证了该方法的有效性。

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