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Visual Face Tracking: a Coarse-to-Fine Target State Estimation

机译:视觉面部跟踪:粗略的目标状态估计

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Keypoint-based methods are used in visual tracking applications. These methods often model the target as a collection of keypoint descriptors. Target localization on subsequent frames is thus a complex task that involves de-tecting keypoints, computing descriptors, matching features, and checking match consistency to update the reference model adequately and avoid tracker drifts. This work aims to boost keypoint tracking efficiency while reducing complexity by a coarse-to-fine state estimation to track human faces. In this context, we present a novel face tracking algorithm combining color distribution and keypoints to model the target. Our tracking strategy is based on a color model to predict a coarse state where the target search should be performed using keypoints. The fine estimation of the target state is then made by matching candidate keypoints with those of a reference appearance model that evolves during the tracking procedure. Qualitative and quantitative evaluations conducted on a number of challenging video clips demonstrate the validity of the proposed method and its competitiveness with state of the art trackers.
机译:基于关键点的方法用于视觉跟踪应用程序。这些方法通常将目标模拟为关键点描述符的集合。因此,在后续帧上的目标本地化是一种复杂的任务,涉及取消修整关键点,计算描述符,匹配特征和检查匹配一致性以充分更新参考模型,并避免跟踪器漂移。这项工作旨在提高Keypoint跟踪效率,同时通过粗略的状态估计来降低复杂性以跟踪人面。在这种情况下,我们提出了一种组合颜色分布和关键点的新型面部跟踪算法来模拟目标。我们的跟踪策略基于颜色模型来预测应使用关键点执行目标搜索的粗略状态。然后通过将候选键点与在跟踪过程期间演变的参考外观模型的那些匹配来进行目标状态的精细估计。在许多具有挑战性的视频剪辑中进行的定性和定量评估表明了拟议方法及其与艺术追踪者状态的竞争力的有效性。

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