Boris BabenkoShuicheng YanSerge Belongie
In this paper, we address the problem of tracking an object in a video given its location in the first frame and no other information. Recently, a class of tracking techniques called "tracking by detection" has 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 degrade the classifier and can cause 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 propose a novel online MIL algorithm for object tracking that achieves superior results with real-time performance. We present thorough experimental results (both qualitative and quantitative) on a number of challenging video clips.
Min YangCaixia ZhangYuwei WuMingtao PeiYunde Jia
Feng WuShaowu PengJingkai ZhouQiong LiuXiaojia Xie
Marjan AbdechiriKarim FaezHamidreza Amindavar
Zhiyu ZhouXiaomei PengDichong WuZefei Zhu
Chao XuWenyuan TaoZhaopeng MengZhiyong Feng