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基于离散图的多专家鲁棒目标跟踪。

Robust Object Tracking With Discrete Graph-Based Multiple Experts.

出版信息

IEEE Trans Image Process. 2017 Jun;26(6):2736-2750. doi: 10.1109/TIP.2017.2686601. Epub 2017 Mar 23.

DOI:10.1109/TIP.2017.2686601
PMID:28358683
Abstract

Variations of target appearances due to illumination changes, heavy occlusions, and target deformations are the major factors for tracking drift. In this paper, we show that the tracking drift can be effectively corrected by exploiting the relationship between the current tracker and its historical tracker snapshots. Here, a multi-expert framework is established by the current tracker and its historical trained tracker snapshots. The proposed scheme is formulated into a unified discrete graph optimization framework, whose nodes are modeled by the hypotheses of the multiple experts. Furthermore, an exact solution of the discrete graph exists giving the object state estimation at each time step. With the unary and binary compatibility graph scores defined properly, the proposed framework corrects the tracker drift via selecting the best expert hypothesis, which implicitly analyzes the recent performance of the multi-expert by only evaluating graph scores at the current frame. Three base trackers are integrated into the proposed framework to validate its effectiveness. We first integrate the online SVM on a budget algorithm into the framework with significant improvement. Then, the regression correlation filters with hand-crafted features and deep convolutional neural network features are introduced, respectively, to further boost the tracking performance. The proposed three trackers are extensively evaluated on three data sets: TB-50, TB-100, and VOT2015. The experimental results demonstrate the excellent performance of the proposed approaches against the state-of-the-art methods.

摘要

由于光照变化、严重遮挡和目标变形等原因,目标外观的变化是跟踪漂移的主要因素。在本文中,我们表明通过利用当前跟踪器与其历史跟踪器快照之间的关系,可以有效地纠正跟踪漂移。在这里,通过当前跟踪器及其历史训练的跟踪器快照建立了一个多专家框架。所提出的方案被公式化为一个统一的离散图优化框架,其节点由多个专家的假设建模。此外,存在一个离散图的精确解,在每个时间步给出物体状态估计。通过正确定义一元和二元兼容性图得分,该框架通过选择最佳专家假设来纠正跟踪器漂移,这通过仅在当前帧评估图得分来隐式地分析多专家的近期性能。将三个基础跟踪器集成到所提出的框架中以验证其有效性。我们首先将在线 SVM 预算算法集成到框架中,取得了显著的改进。然后,分别引入基于手工特征和深度卷积神经网络特征的回归相关滤波器,进一步提高了跟踪性能。在 TB-50、TB-100 和 VOT2015 三个数据集上对所提出的三个跟踪器进行了广泛评估。实验结果表明,所提出的方法在与最先进的方法的对比中表现出色。

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