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A Viterbi Tracker for Local Features

机译:用于本地功能的Viterbi跟踪器

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摘要

The long term tracking of sparse local features in an image is important for many applications including camera calibration for stereo applications, camera or global motion estimation and people surveillance. The majority of existing tracking frameworks are based on some kind of Prediction/correction idea e.g. KLT and Particle Filters. However, given a careful selection of interest points throughout the sequence, the problem of tracking can be solved with the Viterbi algorithm. This work introduces a novel approach to interest point selection for tracking using the Mean Shift algorithm over short time windows. The resulting points are then articulated within a Viterbi algorithm for creating very long term tracking data. The tracks are shown to be more accurate than traditional KLT implementations and also do not suffer from accumulation of error with time.
机译:图像中的稀疏本地特征的长期跟踪对于许多应用对于立体声应用,摄像机或全球运动估计和人们监视,包括相机校准,包括相机校准。大多数现有的跟踪框架基于某种预测/校正思想,例如, KLT和粒子过滤器。然而,在整个序列中仔细选择兴趣点,可以用Viterbi算法解决跟踪问题。这项工作介绍了在短时间窗口中使用平均移位算法跟踪的兴趣点选择的新方法。然后在维特比算法内阐述所得到的点,用于产生非常长期的跟踪数据。曲目被示出比传统的KLT实现更准确,并且也不会随着时间的时间累积误差。

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