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Matting-driven online learning of Hough forests for object tracking

机译:追踪驱动的Hough森林在线学习以进行对象跟踪

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Accurate segmentation provides a useful contour constraint to alleviate drifting during online learning for tracking. Towards this end, we present a closed-loop method for object tracking that links Hough forests and alpha matting via an effective back-projection scheme for patches. A novel hybrid-Hough-forests-based method first estimates object location. Given the object location, the trimap of matting is then automatically generated from the patches back-projected from the Hough forests. Subsequently, an accurate contour of the object can be obtained based on a robust matting technique. Based on such an accurate contour, an update strategy is utilized to obtain reliably labeled samples to update the Hough forests to decrease the risk of model drift. Extensive comparisons on challenging sequences demonstrate the robustness and effectiveness of the proposed method.
机译:精确的分割提供了有用的轮廓约束,以减轻在线学习跟踪时的漂移。为此,我们提出了一种用于对象跟踪的闭环方法,该方法通过有效的补丁投影方案将霍夫森林和Alpha遮罩链接起来。一种新颖的基于混合霍夫森林的方法首先估计对象的位置。在给定对象位置的情况下,然后根据从霍夫森林反向投影的补丁自动生成抠图的三图。随后,可以基于鲁棒的消光技术获得对象的精确轮廓。基于这样的精确轮廓,可以使用更新策略来获得可靠标记的样本,以更新霍夫森林以降低模型漂移的风险。在具有挑战性的序列上进行的广泛比较证明了所提出方法的鲁棒性和有效性。

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