一种通过遮挡进行目标跟踪的背景层模型

Yue Zhou, Hai Tao
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引用次数: 109

摘要

运动层估计是最近出现的一种很有前途的目标跟踪方法。在本文中,我们通过引入背景遮挡层的概念和明确推断前景层的深度顺序,扩展了以往基于层的跟踪器研究。背景遮挡层位于前景层的前面、后面和中间。背景区域中的每个像素都属于这些图层中的一个,并遮挡其后面的所有前景图层。与前景排序一起,通过遮挡可靠地跟踪物体所需的完整信息包含在我们的表示中。提出了一种MAP估计框架,用于同时更新运动层参数、排序参数和背景遮挡层。实验结果表明,在各种遮挡条件下,包括运动物体进行复杂运动或具有复杂相互作用的情况下,我们的跟踪算法能够可靠地处理许多困难的跟踪任务。
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A background layer model for object tracking through occlusion
Motion layer estimation has recently emerged as a promising object tracking method. In this paper, we extend previous research on layer-based tracker by introducing the concept of background occluding layers and explicitly inferring depth ordering of foreground layers. The background occluding layers lie in front of, behind, and in between foreground layers. Each pixel in the background regions belongs to one of these layers and occludes all the foreground layers behind it. Together with the foreground ordering, the complete information necessary for reliably tracking objects through occlusion is included in our representation. An MAP estimation framework is developed to simultaneously update the motion layer parameters, the ordering parameters, and the background occluding layers. Experimental results show that under various conditions with occlusion, including situations with moving objects undergoing complex motions or having complex interactions, our tracking algorithm is able to handle many difficult tracking tasks reliably.
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