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Real-Time Object Tracking with Template Tracking and Foreground Detection Network

机译:利用模板跟踪和前景检测网络进行实时对象跟踪

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摘要

In this paper, we propose a fast and accurate deep network-based object tracking method, which combines feature representation, template tracking and foreground detection into a single framework for robust tracking. The proposed framework consists of a backbone network, which feeds into two parallel networks, TmpNet for template tracking and FgNet for foreground detection. The backbone network is a pre-trained modified VGG network, in which a few parameters need to be fine-tuned for adapting to the tracked object. FgNet is a fully convolutional network to distinguish the foreground from background in a pixel-to-pixel manner. The parameter in TmpNet is the learned channel-wise target template, which initializes in the first frame and performs fast template tracking in the test frames. To enable each component to work closely with each other, we use a multi-task loss to end-to-end train the proposed framework. In online tracking, we combine the score maps from TmpNet and FgNet to find the optimal tracking results. Experimental results on object tracking benchmarks demonstrate that our approach achieves favorable tracking accuracy against the state-of-the-art trackers while running at a real-time speed of 38 fps.
机译:在本文中,我们提出了一种快速,准确的基于深度网络的对象跟踪方法,该方法将特征表示,模板跟踪和前景检测结合到一个用于鲁棒跟踪的单一框架中。所提出的框架由骨干网组成,该骨干网馈入两个并行网络,TmpNet用于模板跟踪,而FgNet用于前景检测。骨干网是经过预训练的改进的VGG网络,其中需要微调一些参数以适应被跟踪的对象。 FgNet是一个完全卷积网络,以像素到像素的方式将前景与背景区分开。 TmpNet中的参数是学习的通道目标模板,该模板在第一帧中初始化并在测试帧中执行快速模板跟踪。为了使每个组件能够彼此紧密协作,我们使用多任务丢失来端到端训练所提出的框架。在在线跟踪中,我们结合了TmpNet和FgNet的得分图来找到最佳跟踪结果。在目标跟踪基准上的实验结果表明,相对于最新的跟踪器,我们的方法在以38 fps的实时速度运行时可达到良好的跟踪精度。

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