作者
Georg Nebehay, Roman Pflugfelder
发表日期
2014/3/24
研讨会论文
IEEE Winter Conference on Applications of Computer Vision
页码范围
862-869
出版商
IEEE
简介
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 …
引用总数
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学术搜索中的文章
G Nebehay, R Pflugfelder - IEEE Winter Conference on Applications of Computer …, 2014