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Object tracking using discriminative sparse appearance model

机译:使用区分稀疏外观模型的对象跟踪

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摘要

Object tracking based on sparse representation formulates tracking as searching the candidate with minimal reconstruction error in target template subspace. The key problem lies in modeling the target robustly to vary appearances. The appearance model in most sparsity-based trackers has two main problems. The first is that global structural information and local features are insufficiently combined because the appearance is modeled separately by holistic and local sparse representations. The second problem is that the discriminative information between the target and the background is not fully utilized because the background is rarely considered in modeling. In this study, we develop a robust visual tracking algorithm by modeling the target as a model for discriminative sparse appearance. A discriminative dictionary is trained from the local target patches and the background. The patches display the local features while their position distribution implies the global structure of the target. Thus, the learned dictionary can fully represent the target. The incorporation of the background into dictionary learning also enhances its discriminative capability. Upon modeling the target as a sparse coding histogram based on this learned dictionary, our tracker is embedded into a Bayesian state inference framework to locate a target. We also present a model update scheme in which the update rate is adjusted automatically. In conjunction with the update strategy, the proposed tracker can handle occlusion and alleviate drifting. Comparative results on challenging benchmark image sequences show that the tracking method performs favorably against several state-of-the-art algorithms. (C) 2015 Elsevier B.V. All rights reserved.
机译:基于稀疏表示的对象跟踪将跟踪公式化为在目标模板子空间中以最小的重构误差搜索候选对象。关键问题在于对目标进行强大的建模以改变外观。大多数基于稀疏性的跟踪器中的外观模型有两个主要问题。首先是全局结构信息和局部特征没有充分结合,因为外观是通过整体和局部稀疏表示分别建模的。第二个问题是目标和背景之间的区分信息没有得到充分利用,因为在建模中很少考虑背景。在这项研究中,我们通过将目标建模为判别性稀疏外观的模型,开发了一种鲁棒的视觉跟踪算法。从本地目标补丁和背景中训练出有区别的字典。补丁显示局部特征,而它们的位置分布暗示目标的整体结构。因此,学习词典可以完全代表目标。将背景结合到字典学习中也增强了其判别能力。在基于此学习词典将目标建模为稀疏编码直方图后,我们的跟踪器将嵌入到贝叶斯状态推断框架中以定位目标。我们还提出了一种模型更新方案,其中自动调整更新速率。结合更新策略,建议的跟踪器可以处理遮挡并减轻漂移。在具有挑战性的基准图像序列上的比较结果表明,该跟踪方法相对于几种最新算法表现良好。 (C)2015 Elsevier B.V.保留所有权利。

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