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Real-time Hierarchical Bayesian Data Fusion for Vision-based Target Tracking with Unmanned Aerial Platforms

机译:实时分层贝叶斯数据融合,用于无人空中平台的基于视觉的目标跟踪

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摘要

Data fusion algorithms make it possible to aggregate information from multiple data sources in order to increase the robustness and accuracy of robotic vision systems. While Bayesian fusion methods are common in general applications involving multiple sensors, the computer vision field has largely relegated this approach. In particular, most object following algorithms tend to employ a fixed set of features computed by specialized algorithms, and therefore lack flexibility. In this work, we propose a general hierarchical Bayesian data fusion framework that allows any number of vision-based tracking algorithms to cooperate in the task of estimating the target position. The framework is adaptive in the sense that it responds to variations in the reliability of each individual tracker as estimated by its local statistics as well as by the overall consensus among the trackers. The proposed approach was validated in simulated experiments as well as in two robotic platforms and the experimental results confirm that it can significantly improve the performance of individual trackers.
机译:数据融合算法可以聚合来自多个数据源的信息,从而提高机器人视觉系统的鲁棒性和准确性。尽管贝叶斯融合方法在涉及多个传感器的一般应用中很常见,但计算机视觉领域已大大降低了这种方法的适用性。特别地,大多数对象跟随算法倾向于采用由专用算法计算出的固定特征集,因此缺乏灵活性。在这项工作中,我们提出了一个通用的分层贝叶斯数据融合框架,该框架允许任何数量的基于视觉的跟踪算法在估计目标位置的任务中进行协作。该框架具有适应性,因为它可以响应每个跟踪器的可靠性变化,这些变化由其本地统计数据以及跟踪器之间的总体共识估算得出。该方法在模拟实验以及两个机器人平台中均得到了验证,实验结果证实该方法可以显着提高单个跟踪器的性能。

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