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Deep Bidirectional Correlation Filters for Visual Object Tracking

机译:用于视觉对象跟踪的深度双向相关过滤器

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Visual Object Tracking (VOT) is an essential task for many computer vision applications. VOT becomes challenging when a target object faces severe occlusion, drastic illumination changes, and scale variation problems. In the literature, Discriminative Correlation Filters (DCFs)-based tracking methods have achieved promising results in terms of accuracy and efficiency in many complex VOT scenarios. A plethora of DCFs trackers have been proposed which exploit information observed in past frames to create and update DCFs for VOT. To adapt to target appearance variations, the DCFs are enhanced by incorporating spatial and temporal consistency constraints. Nevertheless, the performance degradation is observed for these methods because of the aforementioned limitations. To address these issues, we propose a novel algorithm based on bidirectional DCFs for VOT. In this algorithm, we propose the original idea of leveraging information from both past and future frames. The proposed algorithm first tracks the target object forward in the video sequence and then its uses the predicted location of the last window frame and track the target object backward towards the current frame. We design an appearance consistency loss function by taking the L2 norm between the regression target of the forward tracking and response map of the backward tracking to obtain the resulting response map. Our proposed algorithm realizes a highly accurate DCFs because forward and backward tracking information are fused together for consistent VOT. Although, a result will be output with some small delay because information is taken from a future to the present period, our proposed algorithm has the merit of addressing the drastic appearance variations VOT challenges. We evaluate our proposed tracker using deep features on three publicly available challenging datasets. Our results demonstrate the superior performance of the proposed tracker compared to the existing state-of-the-art trackers.
机译:视觉对象跟踪(VOT)是许多计算机视觉应用程序的一项基本任务。当目标物体面临严重的遮挡,剧烈的照明变化和比例变化问题时,VOT变得具有挑战性。在文献中,基于区分相关滤波器(DCF)的跟踪方法在许多复杂的VOT场景中在准确性和效率方面都取得了令人鼓舞的结果。已经提出了许多DCF跟踪器,它们利用在过去的帧中观察到的信息来创建和更新用于VOT的DCF。为了适应目标外观变化,通过合并空间和时间一致性约束来增强DCF。然而,由于上述局限性,对于这些方法观察到性能下降。为了解决这些问题,我们提出了一种基于双向DCF的VOT算法。在此算法中,我们提出了利用过去和未来框架中的信息的原始思想。所提出的算法首先在视频序列中向前跟踪目标对象,然后使用最后一个窗口帧的预测位置向后向当前帧跟踪目标对象。我们通过采用前向跟踪的回归目标与后向跟踪的响应图之间的L2范数来设计外观一致性损失函数,以获得结果响应图。我们提出的算法实现了高精度DCF,因为前向和后向跟踪信息融合在一起以获得一致的VOT。尽管由于从将来到现在都需要信息,所以结果将以很小的延迟输出,但是我们提出的算法具有解决剧烈的外观变化VOT挑战的优点。我们使用三个公开的具有挑战性的数据集上的深层功能来评估我们提出的跟踪器。我们的结果表明,与现有的最新跟踪器相比,该提议的跟踪器具有出色的性能。

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