Consensus-based matching and tracking of keypoints for object tracking

G. Nebehay, R. Pflugfelder
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引用次数: 166

Abstract

We propose a novel keypoint-based method for long-term model-free object tracking in a combined matching-and-tracking framework. In order to localise the object in every frame, each keypoint casts votes for the object center. As erroneous keypoints are hard to avoid, we employ a novel consensus-based scheme for outlier detection in the voting behaviour. To make this approach computationally feasible, we propose not to employ an accumulator space for votes, but rather to cluster votes directly in the image space. By transforming votes based on the current keypoint constellation, we account for changes of the object in scale and rotation. In contrast to competing approaches, we refrain from updating the appearance information, thus avoiding the danger of making errors. The use of fast keypoint detectors and binary descriptors allows for our implementation to run in real-time. We demonstrate experimentally on a diverse dataset that is as large as 60 sequences that our method outperforms the state-of-the-art when high accuracy is required and visualise these results by employing a variant of success plots.
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基于共识的目标跟踪关键点匹配与跟踪
提出了一种基于关键点的无模型长期目标跟踪方法。为了在每一帧中定位对象,每个关键点对对象中心进行投票。由于错误的关键点难以避免,我们采用了一种新的基于共识的方案来检测投票行为中的异常值。为了使这种方法在计算上可行,我们建议不为投票使用累加器空间,而是直接在图像空间中对投票进行聚类。通过基于当前关键点星座的投票转换,我们考虑了物体在尺度和旋转上的变化。与竞争的方法相比,我们避免了更新外观信息,从而避免了出错的危险。使用快速关键点检测器和二进制描述符允许我们的实现实时运行。我们在多达60个序列的不同数据集上通过实验证明,当需要高精度时,我们的方法优于最先进的方法,并通过采用成功图的变体来可视化这些结果。
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