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Unmanned Aerial Vehicle Video-Based Target Tracking Algorithm Using Sparse Representation

机译:非人空中车辆基于视频的目标跟踪算法使用稀疏表示

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摘要

Target tracking based on unmanned aerial vehicle (UAV) video is a significant technique in intelligent urban surveillance systems for smart city applications, such as smart transportation, road traffic monitoring, inspection of stolen vehicle, etc. In this paper, a computer vision-based target tracking algorithm aiming at locating UAV-captured targets, like pedestrian and vehicle, is proposed using sparse representation theory. First of all, each target candidate is sparsely represented in the subspace spanned by a joint dictionary. Then, the sparse representation coefficient is further constrained by an L-2 regularization based on temporal consistency. To cope with the partial occlusion appearing in UAV videos, a Markov random field (MRF)-based binary support vector with contiguous occlusion constraint is introduced to our sparse representation model. For long-term tracking, the particle filter framework along with a dynamic template update scheme is designed. Both qualitative and quantitative experiments implemented on visible (Vis) and infrared (IR) UAV videos prove that the presented tracker can achieve better performances in terms of precision rate and success rate when compared with other state-of-the-art trackers.
机译:基于无人驾驶飞行器(UAV)视频的目标跟踪是智能城市应用中智能城市应用的重要技术,如智能运输,道路交通监控,被盗车辆的检查等。本文,计算机视觉使用稀疏表示理论提出了针对定位无人机捕获的目标的目标跟踪算法,如行人和​​车辆。首先,每个目标候选者在由联合词典跨越的子空间中稀疏地表示。然后,基于时间一致性,通过L-2正则化进一步约束稀疏表示系数。为了应对在UAV视频中出现的部分闭塞,引入了具有连续遮挡约束的马尔可夫随机字段(MRF)的基二进制支持向量,引入了我们的稀疏表示模型。对于长期跟踪,设计了粒子滤波器框架以及动态模板更新方案。在可见(VIS)和红外(IR)和红外(IR)UAV视频中实施的定性和定量实验证明,与其他最先进的跟踪器相比,所提出的跟踪器可以在精密速率和成功率方面实现更好的表现。

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