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Learning Soft Mask Based Feature Fusion with Channel and Spatial Attention for Robust Visual Object Tracking

机译:基于软掩模的基于软件融合,具有频道和空间注意力,可用于鲁棒性视觉对象跟踪

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摘要

We propose to improve the visual object tracking by introducing a soft mask based low-level feature fusion technique. The proposed technique is further strengthened by integrating channel and spatial attention mechanisms. The proposed approach is integrated within a Siamese framework to demonstrate its effectiveness for visual object tracking. The proposed soft mask is used to give more importance to the target regions as compared to the other regions to enable effective target feature representation and to increase discriminative power. The low-level feature fusion improves the tracker robustness against distractors. The channel attention is used to identify more discriminative channels for better target representation. The spatial attention complements the soft mask based approach to better localize the target objects in challenging tracking scenarios. We evaluated our proposed approach over five publicly available benchmark datasets and performed extensive comparisons with 39 state-of-the-art tracking algorithms. The proposed tracker demonstrates excellent performance compared to the existing state-of-the-art trackers.
机译:我们建议通过引入基于软掩模的低电平特征融合技术来改善视觉对象跟踪。通过整合信道和空间注意机制进一步加强所提出的技术。所提出的方法纳入暹罗框架内,以证明其对视觉对象跟踪的有效性。与其他区域相比,所提出的软掩模用于给目标区域提供更多重要性,以实现有效的目标特征表示并增加鉴别的功率。低级特征融合可以改善跟踪器鲁棒性对抗分散的麻烦。通道注意力用于识别更好的目标表示的更多辨别通道。空间关注补充了基于软件掩模的方法,以更好地本地化目标对象在具有挑战性的跟踪场景中。我们在五个公开的基准数据集中评估了我们提出的方法,并进行了广泛的比较,与39型技术的跟踪算法进行了广泛的比较。与现有的最先进的跟踪器相比,所提出的跟踪器展示了出色的性能。

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