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Resolving occlusions with structural kalman filter

机译:用结构卡尔曼滤波器解决闭塞

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摘要

Moving object tracking is one of the most important techniques in motion analysis and understanding and it has many difficult problems to solve. Most of all occlusions during the process of tracking is very diffcult problem and it could make the tracking system fail to track moving objects reliably. With occlusions, a tracking systme can not continue to track targets because it can not match occluded regions in an image. So we need to study some effective methods to track moving objects in spite of potential occlusions. In this paper, we propose an advanced Kalman filter named structural Kalman filter which can predict moving objects reliably in case of partial occlusion by combining several Kalman filters corresponding to sub-regions of a moving object. By predicting occluded sub-regions, a trackign system can track such occluded regions continuously when the regions appear again. In other words, the predicted information is used to find the reappearing regions again.
机译:移动对象跟踪是运动分析和理解中最重要的技术之一,并且可以解决许多难题。跟踪过程中的大多数闭锁是非常差异的问题,它可以使跟踪系统无法可靠地跟踪移动物体。通过闭塞,跟踪系统不能继续跟踪目标,因为它不能匹配图像中的遮挡区域。因此,我们需要研究一些有效的方法来追踪移动物体,尽管潜在闭塞。在本文中,我们提出了一个名为结构卡尔曼滤波器的先进的卡尔曼滤波器,其可以通过组合对应于移动物体的子区域的若干卡尔曼滤波器来预测移动物体。通过预测封闭的子区域,当区域再次出现时,试验系统可以连续地追踪这种遮挡区域。换句话说,预测信息用于再次找到重新出现的区域。

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