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Online discriminative dictionary learning via label information for multi task object tracking

机译:通过标签信息进行在线区分词典学习,以进行多任务对象跟踪

摘要

In this paper, a supervised approach to online learn a structured sparse and discriminative representation for object tracking is presented. Label information from training data is incorporated into the dictionary learning process to construct a compact and discriminative dictionary. This is accomplished by adding an ideal-code regularization term and classification error term to the total objective function. By minimizing the total objective function, we learn the high quality dictionary and optimal linear multi-classifier simultaneously. Combined with multi task sparse learning, the learned classifier is employed directly to separate the object from background. As the tracking continues, the proposed algorithm alternates between multi task sparse coding and dictionary updating. Experimental evaluations on the challenging sequences show that the proposed algorithm performs favorably against state-of-the-art methods in terms of effectiveness, accuracy and robustness.
机译:在本文中,提出了一种在线学习有监督的结构化稀疏和判别表示的对象跟踪方法。来自训练数据的标签信息被合并到字典学习过程中,以构建紧凑而有区别的字典。这是通过将理想代码正则化项和分类误差项添加到总目标函数来实现的。通过最小化总目标函数,我们可以同时学习高质量字典和最优线性多分类器。结合多任务稀疏学习,将学习到的分类器直接用于将对象与背景分离。随着跟踪的继续,所提出的算法在多任务稀疏编码和字典更新之间交替。在具有挑战性的序列上进行的实验评估表明,所提出的算法在有效性,准确性和鲁棒性方面均优于最新技术。

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