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Robust Object Tracking Based on Self-adaptive Search Area

机译:基于自适应搜索区域的鲁棒目标跟踪

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摘要

Discriminative correlation filter (DCF) based trackers have recently achieved excellent performance with great computational efficiency. However, DCF based trackers suffer boundary effects, which result in the unstable performance in challenging situations exhibiting fast motion. In this paper, we propose a novel method to mitigate this side-effect in DCF based trackers. We change the search area according to the prediction of target motion. When the object moves fast, broad search area could alleviate boundary effects and reserve the probability of locating object. When the object moves slowly, narrow search area could prevent effect of useless background information and improve computational efficiency to attain real-time performance. This strategy can impressively soothe boundary effects in situations exhibiting fast motion and motion blur, and it can be used in almost all DCF based trackers. The experiments on OTB benchmark show that the proposed framework improves the performance compared with the baseline trackers.
机译:基于区分相关滤波器(DCF)的跟踪器最近以出色的计算效率实现了出色的性能。但是,基于DCF的跟踪器会受到边界影响,这会在表现出快速运动的挑战性情况下导致性能不稳定。在本文中,我们提出了一种新颖的方法来减轻基于DCF的跟踪器中的这种副作用。我们根据目标运动的预测来更改搜索区域。当物体快速移动时,广阔的搜索区域可以减轻边界效应并保留定位物体的可能性。当对象缓慢移动时,狭窄的搜索区域可以防止无用的背景信息的影响,并提高计算效率以实现实时性能。这种策略可以在出现快速运动和运动模糊的情况下显着缓解边界效应,并且几乎可以在所有基于DCF的跟踪器中使用。在OTB基准上进行的实验表明,与基准跟踪器相比,该框架可提高性能。

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