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Multiple Object Tracking via Prediction and Filtering with a Sobolev-Type Metric on Curves

机译:通过预测和滤波的Sobolev型度量对曲线进行多对象跟踪

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The problem of multi-target tracking of deforming objects in video sequences arises in many situations in image processing and computer vision. Many algorithms based on finite dimensional particle filters have been proposed. Recently, particle filters for infinite dimensional Shape Spaces have been proposed although predictions are restricted to a low dimensional subspace. We try to extend this approach using predictions in the whole shape space based on a Sobolev-type metric for curves which allows unrestricted infinite dimensional deformations. For the measurement model, we utilize contours which locally minimize a segmentation energy function and focus on the multiple contour tracking framework when there are many local minima of the segmentation energy to be detected. The method detects figures moving without the need of initialization and without the need for prior shape knowledge of the objects tracked.
机译:视频序列中变形对象的多目标跟踪问题出现在图像处理和计算机视觉的许多情况下。已经提出了许多基于有限维粒子滤波器的算法。最近,尽管预测仅限于低维子空间,但已经提出了用于无限维形状空间的粒子滤波器。我们尝试使用基于Sobolev型度量标准的曲线在整个形状空间中的预测来扩展此方法,从而允许无限制的无限尺寸变形。对于测量模型,我们利用局部最小化分割能量函数的轮廓,并在要检测的分割能量有许多局部最小值时集中在多个轮廓跟踪框架上。该方法无需初始化,也不需要事先了解被跟踪物体的形状就可以检测移动的图形。

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