视觉跟踪与在线多实例学习

Boris Babenko, Ming-Hsuan Yang, Serge J. Belongie
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引用次数: 1986

摘要

在本文中,我们解决了学习自适应外观模型用于目标跟踪的问题。特别是,一类被称为“检测跟踪”的跟踪技术已被证明可以在实时速度下提供有希望的结果。这些方法以在线的方式训练一个判别分类器来分离目标和背景。这个分类器通过使用当前跟踪器状态从当前帧中提取正例和负例来引导自己。因此,跟踪器中的轻微不准确可能导致错误标记的训练样例,从而降低分类器的性能,并可能导致进一步的漂移。在本文中,我们表明使用多实例学习(MIL)代替传统的监督学习可以避免这些问题,因此可以使用更少的参数调整产生更鲁棒的跟踪器。提出了一种新的在线MIL目标跟踪算法,该算法具有较好的实时性。
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Visual tracking with online Multiple Instance Learning
In this paper, we address the problem of learning an adaptive appearance model for object tracking. In particular, a class of tracking techniques called “tracking by detection” have been shown to give promising results at real-time speeds. These methods train a discriminative classifier in an online manner to separate the object from the background. This classifier bootstraps itself by using the current tracker state to extract positive and negative examples from the current frame. Slight inaccuracies in the tracker can therefore lead to incorrectly labeled training examples, which degrades the classifier and can cause further drift. In this paper we show that using Multiple Instance Learning (MIL) instead of traditional supervised learning avoids these problems, and can therefore lead to a more robust tracker with fewer parameter tweaks. We present a novel online MIL algorithm for object tracking that achieves superior results with real-time performance.
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