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Onboard Robust Visual Tracking for UAVs Using a Reliable Global-Local Object Model

机译:使用可靠的全局-本地对象模型对无人机进行机载鲁棒视觉跟踪

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摘要

In this paper, we present a novel onboard robust visual algorithm for long-term arbitrary 2D and 3D object tracking using a reliable global-local object model for unmanned aerial vehicle (UAV) applications, e.g., autonomous tracking and chasing a moving target. The first main approach in this novel algorithm is the use of a global matching and local tracking approach. In other words, the algorithm initially finds feature correspondences in a way that an improved binary descriptor is developed for global feature matching and an iterative Lucas–Kanade optical flow algorithm is employed for local feature tracking. The second main module is the use of an efficient local geometric filter (LGF), which handles outlier feature correspondences based on a new forward-backward pairwise dissimilarity measure, thereby maintaining pairwise geometric consistency. In the proposed LGF module, a hierarchical agglomerative clustering, i.e., bottom-up aggregation, is applied using an effective single-link method. The third proposed module is a heuristic local outlier factor (to the best of our knowledge, it is utilized for the first time to deal with outlier features in a visual tracking application), which further maximizes the representation of the target object in which we formulate outlier feature detection as a binary classification problem with the output features of the LGF module. Extensive UAV flight experiments show that the proposed visual tracker achieves real-time frame rates of more than thirty-five frames per second on an i7 processor with 640 × 512 image resolution and outperforms the most popular state-of-the-art trackers favorably in terms of robustness, efficiency and accuracy.
机译:在本文中,我们提出了一种新颖的机载鲁棒视觉算法,可使用可靠的全局局部对象模型(适用于无人飞行器(UAV)应用)进行长期任意2D和3D对象跟踪,例如自主跟踪和追踪运动目标。这种新颖算法的第一个主要方法是使用全局匹配和局部跟踪方法。换句话说,该算法最初是通过开发一种改进的二进制描述符来进行全局特征匹配,然后使用一种迭代的Lucas-Kanade光流算法来进行局部特征跟踪的方式来找到特征对应关系。第二个主要模块是使用高效的局部几何过滤器(LGF),该过滤器基于新的前后对成对不相似性度量来处理异常特征对应关系,从而保持成对几何一致性。在提出的LGF模块中,使用有效的单链路方法来应用分层的聚集聚类,即,自下而上的聚集。提出的第三个模块是启发式局部离群因子(据我们所知,它是首次用于处理视觉跟踪应用程序中的离群特征),它进一步最大化了我们制定的目标对象的表示形式异常特征检测是LGF模块输出特征的二进制分类问题。广泛的无人机飞行实验表明,所提出的视觉跟踪器在具有640×512图像分辨率的i7处理器上实现了每秒超过35帧的实时帧速率,并且在性能上优于最流行的最新跟踪器健壮性,效率和准确性。

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