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首页> 外文期刊>Journal of visual communication & image representation >TRBACF: Learning temporal regularized correlation filters for high performance online visual object tracking
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TRBACF: Learning temporal regularized correlation filters for high performance online visual object tracking

机译:TRBACF:学习高性能在线视觉对象跟踪的临时正则化相关滤波器

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摘要

Correlation filter-based trackers (CFTs) have recently shown remarkable performance in the field of visual object tracking. The advantage of these trackers originates from their ability to convert time-domain calculations into frequency domain calculations. However, a significant problem of these CFTs is that the model is insufficiently robust when the tracking scenarios are too complicated, meaning that the ideal tracking performance cannot be acquired. Recent work has attempted to resolve this problem by reducing the boundary effects from modeling the foreground and background of the object target effectively (e.g., CFLB, BACF, and CACF). Although these methods have demonstrated reasonable performance, they are often affected by occlusion, deformation, scale variation, and other challenging scenes. In this study, considering the relationship between the current frame and the previous frame of a moving object target in a time series, we propose a temporal regularization strategy to improve the BACF tracker (denoted as TRBACF), a typical representative of the aforementioned trackers. The TRBACF tracker can efficiently adjust the model to adapt the change of the tracking scenes, thereby enhancing its robustness and accuracy. Moreover, the objective function of our TRBACF tracker can be solved by an improved alternating direction method of multipliers, which can speed up the calculation in the Fourier domain. Extensive experimental results demonstrate that the proposed TRBACF tracker achieves competitive tracking performance compared with state-of-the-art trackers.
机译:基于相关滤波器的跟踪器(CFT)最近在Visual Object跟踪领域中显示了显着性能。这些跟踪器的优点来自他们将时域计算转换为频域计算的能力。然而,这些CFT的重大问题是,当跟踪方案太复杂时,该模型是不充分的强劲,这意味着无法获取理想的跟踪性能。最近的工作已经通过减少有效地(例如,CFLB,BACF和CACF)来降低对象目标的前景和背景的边界效应来解决这个问题。虽然这些方法表明了合理的性能,但它们通常受遮挡,变形,规模变化和其他具有挑战性的场景的影响。在这项研究中,考虑到当前帧与移动物体目标的前一帧之间的关系在时间序列中,我们提出了一种时间正则化策略,以改善BACF跟踪器(表示为TRBACF),是上述跟踪器的典型代表。 TRBACF跟踪器可以有效地调整模型以调整跟踪场景的变化,从而提高其鲁棒性和准确性。此外,可以通过改进的乘法器的交替方向方法来解决我们的TRBACF跟踪器的目标函数,其可以加速傅里叶域中的计算。广泛的实验结果表明,与最先进的跟踪器相比,所提出的TRBACF跟踪器实现了竞争力的跟踪性能。

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