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Correlation filter-based self-paced object tracking

机译:基于相关滤波器的自定节子对象跟踪

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Object tracking is an important capability for robots tasked with interacting with humans and the environment, and it enables robots to manipulate objects. In object tracking, selecting samples to learn a robust and efficient appearance model is a challenging task. Model learning determines both the strategy and frequency of model updating, which concerns many details that can affect the tracking results. In this paper, we propose an object tracking approach by formulating a new objective function that integrates the learning paradigm of self-paced learning into object tracking such that reliable samples can be automatically selected for model learning. Sample weights and model parameters can be learned by minimizing this single objective function under the framework of kernelized correlation filters. Moreover, a real-valued error-tolerant self-paced function with a constraint vector is proposed to combine prior knowledge, i.e., the characteristics of object tracking, with information learned during tracking. We demonstrate the robustness and efficiency of our object tracking approach on a recent object tracking benchmark data set: OTB 2013.
机译:对象跟踪是机器人任务与人类和环境交互的重要功能,它使机器人能够操纵对象。在对象跟踪中,选择样本以学习稳健且有效的外观模型是一个具有挑战性的任务。模型学习确定模型更新的策略和频率,涉及可能影响跟踪结果的许多细节。在本文中,我们通过制定新的目标函数来提出一种对象跟踪方法,该目的函数集成了自定步学习的学习范式,以便可以自动选择可靠的样本以进行模型学习。可以通过在核化相关滤波器框架下最小化此单个目标函数来学习样本权重和模型参数。此外,提出了一种具有约束向量的实值差错自定位函数,以组合先前知识,即对象跟踪的特征,以及在跟踪期间学到的信息。我们展示了对最近对象跟踪基准数据集的对象跟踪方法的鲁棒性和效率:OTB 2013。

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