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Unmanned Aerial Vehicle Object Tracking by Correlation Filter with Adaptive Appearance Model

机译:自适应外观模型的相关滤波器跟踪无人机

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摘要

With the increasing availability of low-cost, commercially available unmanned aerial vehicles (UAVs), visual tracking using UAVs has become more and more important due to its many new applications, including automatic navigation, obstacle avoidance, traffic monitoring, search and rescue, etc. However, real-world aerial tracking poses many challenges due to platform motion and image instability, such as aspect ratio change, viewpoint change, fast motion, scale variation and so on. In this paper, an efficient object tracking method for UAV videos is proposed to tackle these challenges. We construct the fused features to capture the gradient information and color characteristics simultaneously. Furthermore, cellular automata is introduced to update the appearance template of target accurately and sparsely. In particular, a high confidence model updating strategy is developed according to the stability function. Systematic comparative evaluations performed on the popular UAV123 dataset show the efficiency of the proposed approach.
机译:随着低成本,商用无人飞行器(UAV)的可用性日益提高,使用无人机的视觉跟踪由于其许多新应用而变得越来越重要,包括自动导航,避障,交通监控,搜索和救援等。然而,由于平台运动和图像的不稳定性,现实世界中的空中跟踪提出了许多挑战,例如宽高比变化,视点变化,快速运动,比例变化等。本文提出了一种有效的无人机视频目标跟踪方法,以解决这些挑战。我们构造融合特征以同时捕获渐变信息和颜色特征。此外,引入了细胞自动机以准确而稀疏地更新目标的出现模板。特别地,根据稳定性函数开发了高置信度模型更新策略。对流行的UAV123数据集进行的系统比较评估显示了该方法的有效性。

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