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Discriminative multi-task objects tracking with active feature selection and drift correction

机译:具有活动特征选择和漂移校正功能的区分性多任务对象跟踪

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摘要

In this paper, we propose a discriminative multi-task objects tracking method with active feature selection and drift correction. The developed method formulates object tracking in a particle filter framework as multi-Task discriminative tracking. As opposed to generative methods that handle particles separately, the proposed method learns the representation of all the particles jointly and the corresponding coefficients are similar. The tracking algorithm starts from the active feature selection scheme, which adaptively chooses suitable number of discriminative features from the tracked target and background in the dynamic environment. Based on the selected feature space, the discriminative dictionary is constructed and updated dynamically. Only a few of them are used to represent all the particles at each frame. In other words, all the particles share the same dictionary templates and their representations are obtained jointly by discriminative multi-task learning. The particle that has the highest similarity with the dictionary templates is selected as the next tracked target state. This jointly sparsity and discriminative learning can exploit the relationship between particles and improve tracking performance. To alleviate the visual drift problem encountered in object tracking, a two-stage particle filtering algorithm is proposed to complete drift correction and exploit both the ground truth information of the first frame and observations obtained online from the current frame. Experimental evaluations on challenging sequences demonstrate the effectiveness, accuracy and robustness of the proposed tracker in comparison with state-of-the-art algorithms.
机译:在本文中,我们提出了一种具有主动特征选择和漂移校正的判别式多任务目标跟踪方法。所开发的方法将粒子过滤器框架中的对象跟踪公式化为多任务判别跟踪。与分别处理粒子的生成方法相反,该方法联合学习所有粒子的表示,并且相应的系数相似。跟踪算法从主动特征选择方案开始,该方案从动态环境中的跟踪目标和背景中自适应选择合适数量的判别特征。根据选定的特征空间,构造区别词典并动态更新。它们中只有少数几个用来表示每一帧的所有粒子。换句话说,所有粒子共享相同的字典模板,并且它们的表示通过有区别的多任务学习共同获得。与字典模板具有最高相似性的粒子被选为下一个跟踪的目标状态。这种稀疏和判别式学习可以共同利用粒子之间的关系并提高跟踪性能。为了减轻目标跟踪中出现的视觉漂移问题,提出了一种两阶段粒子滤波算法来完成漂移校正,并利用第一帧的地面真实信息和从当前帧在线获得的观测值。与最新算法相比,对具有挑战性的序列进行的实验评估证明了所提出的跟踪器的有效性,准确性和鲁棒性。

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