基于智能区域选择的超平面高效跟踪

C. Grassl, T. Zinßer, H. Niemann
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引用次数: 15

摘要

我们工作的主要目的是提高F. Jurie和M. Dhome的超平面跟踪器的精度。模式肛门。《机器智能》,第24卷,第2期。7, p.996-1000, 2002)用于实时模板匹配。由于算法初始化的计算时间取决于用于估计模板运动的点的数量,因此只考虑跟踪模板中点的子集。传统上,这个子集是随机确定的。我们提出了三种不同的方法来选择更适合超平面跟踪器的点。我们还建议通过使用特征强度而不是灰度强度来合并颜色信息,这可以大大提高估计精度,但只需要稍微增加计算时间。我们在真实图像序列的实验中仔细评估了所提出方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient hyperplane tracking by intelligent region selection
The main aim of our work is to improve the accuracy of the hyperplane tracker of F. Jurie and M. Dhome (see IEEE Trans. Pattern Anal. and Machine Intelligence, vol.24, no.7, p.996-1000, 2002) for real-time template matching. As the computation time of the initialization of the algorithm depends on the number of points used for estimating the motion of the template, only a subset of points in the tracked template is considered. Traditionally, this subset is determined at random. We present three different methods for selecting points better suited for the hyperplane tracker. We also propose to incorporate color information by working with eigenintensities instead of gray-level intensities, which can greatly improve the estimation accuracy, but only entails a slight increase in computation time. We have carefully evaluated the performance of the proposed methods in experiments with real image sequences.
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