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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Online selection of discriminative tracking features
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Online selection of discriminative tracking features

机译:在线选择歧视性跟踪功能

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摘要

This paper presents an online feature selection mechanism for evaluating multiple features while tracking and adjusting the set of features used to improve tracking performance. Our hypothesis is that the features that best discriminate between object and background are also best for tracking the object. Given a set of seed features, we compute log likelihood ratios of class conditional sample densities from object and background to form a new set of candidate features tailored to the local object/background discrimination task. The two-class variance ratio is used to rank these new features according to how well they separate sample distributions of object and background pixels. This feature evaluation mechanism is embedded in a mean-shift tracking system that adaptively selects the top-ranked discriminative features for tracking. Examples are presented that demonstrate how this method adapts to changing appearances of both tracked object and scene background. We note susceptibility of the variance ratio feature selection method to distraction by spatially correlated background clutter and develop an additional approach that seeks to minimize the likelihood of distraction.
机译:本文提出了一种在线特征选择机制,用于评估多个特征,同时跟踪和调整用于改善跟踪性能的一组特征。我们的假设是,最好区分对象和背景的功能也最适合跟踪对象。给定一组种子特征,我们从对象和背景计算类条件样本密度的对数似然比,以形成适合于本地对象/背景区分任务的一组候选特征。两类方差比用于根据这些新特征将对象和背景像素的样本分布分开的程度来对其进行排名。该特征评估机制嵌入在均值漂移跟踪系统中,该系统自适应地选择排名最高的判别特征进行跟踪。提供了一些示例,这些示例演示了此方法如何适应跟踪对象和场景背景的外观变化。我们注意到方差比特征选择方法易受空间相关的背景杂波干扰,并开发了另一种方法,以尽量减少干扰的可能性。

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