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Extremely Tiny Siamese Networks with Multi-level Fusions for Visual Object Tracking

机译:具有用于视觉对象跟踪的多级融合功能的极小连体网络

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Siamese architectures have enhanced the performance of visual object tracking a lot these years. Though their great influence, less work focuses on designing tiny networks for tracking. In this paper, we propose a novel tiny Siamese (TinySiam) architecture with extremely tiny parameters and computations. Due to the limited computation requirement, the tracker could run in an extremely fast speed and has the potential to be exploited directly in embedded devices. For efficient designs in the tiny network, we first utilize the layer-level fusion between different layers by concatenating their features in the building block, which ensures the information reusing. Second, we use channel shuffle and channel split operations to ensure the channel-level feature fusion in different convolution groups, which increases the information interaction between groups. Third, we utilize the depth-wise convolution to effectively decrease convolution parameters, which benefits fast tracking a lot. The final constructed network (24K parameters and 59M FLOPs) drastically lowers model complexity. Experimental results on GOT-10k and DTB70 benchmarks for both ordinary and aerial tracking illustrate the excellently real-time attribute (129 FPS on GOT-10k and 166 FPS on DTB70) and the robust tracking performance of our TinySiam Tracker.
机译:近年来,暹罗体系结构大大提高了视觉对象跟踪的性能。尽管它们的影响很大,但较少的工作集中在设计用于跟踪的小型网络上。在本文中,我们提出了一种新颖的小型暹罗(TinySiam)体系结构,具有极小的参数和计算能力。由于有限的计算要求,跟踪器可以以极快的速度运行,并且有可能直接在嵌入式设备中使用。为了在微型网络中进行有效的设计,我们首先通过将不同层的功能串联在构建块中来利用不同层之间的层级融合,从而确保信息的重用。其次,我们使用通道混洗和通道拆分操作来确保不同卷积组中的通道级特征融合,从而增加了组之间的信息交互。第三,我们利用深度卷积来有效地减少卷积参数,这对快速跟踪有很多好处。最终构建的网络(24K参数和59M FLOP)大大降低了模型的复杂性。在普通和空中跟踪的GOT-10k和DTB70基准测试中的实验结果表明,我们的TinySiam Tracker具有出色的实时属性(GOT-10k上为129 FPS,DTB70上为166 FPS)以及强大的跟踪性能。

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