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Online structured sparse learning with labeled information for robust object tracking

机译:具有标记信息的在线结构化稀疏学习,可​​进行可靠的对象跟踪

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摘要

We formulate object tracking under the particle filter framework as a collaborative tracking problem. The priori information from training data is exploited effectively to online learn a discriminative and reconstructive dictionary, simultaneously without losing structural information. Specifically, the class label and the semantic structure information are incorporated into the dictionary learning process as the classification error term and ideal coding regularization term, respectively. Combined with the traditional reconstruction error, a unified dictionary learning framework for robust object tracking is constructed. By minimizing the unified objective function with different mixed norm constraints on sparse coefficients, two robust optimizing methods are developed to learn the high-quality dictionary and optimal classifier simultaneously. The best candidate is selected by minimizing the reconstructive error and classification error jointly. As the tracking continues, the proposed algorithms alternate between the robust sparse coding and the dictionary updating. The proposed trackers are empirically compared with 14 state-of-the-art trackers on some challenging video sequences. Both quantitative and qualitative comparisons demonstrate that the proposed algorithms perform well in terms of accuracy and robustness. (C) 2017 SPIE and IS& T
机译:我们将粒子过滤器框架下的对象跟踪公式化为协作跟踪问题。来自训练数据的先验信息可有效地用于在线学习判别性和重建性词典,同时又不会丢失结构信息。具体地,将类别标签和语义结构信息分别作为分类错误项和理想编码正则化项并入字典学习过程。结合传统的重构误差,构建了统一的字典学习框架,用于鲁棒的目标跟踪。通过最小化稀疏系数具有不同混合范数约束的统一目标函数,开发了两种鲁棒的优化方法来同时学习高质量词典和最优分类器。通过共同最小化重构误差和分类误差来选择最佳候选者。随着跟踪的继续,所提出的算法在鲁棒的稀疏编码和字典更新之间交替。在一些具有挑战性的视频序列上,将建议的跟踪器与14个最新的跟踪器进行经验比较。定量和定性比较都表明,所提算法在准确性和鲁棒性方面表现良好。 (C)2017 SPIE和IS&T

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