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Autonomous localisation of rovers for future planetary exploration.

机译:漫游器的自主定位,以供将来的行星探索之用。

摘要

Future Mars exploration missions will have increasingly ambitious goals compared to current rover and lander missions. There will be a need for extremely long distance traverses over shorter periods of time. This will allow more varied and complex scientific tasks to be performed and increase the overall value of the missions. The missions may also include a sample return component, where items collected on the surface will be returned to a cache in order to be returned to Earth, for further study. In order to make these missions feasible, future rover platforms will require increased levels of autonomy, allowing them to operate without heavy reliance on a terrestrial ground station. Being able to autonomously localise the rover is an important element in increasing the rover's capability to independently explore.ududThis thesis develops a Planetary Monocular Simultaneous Localisation And Mapping (PM-SLAM) system aimed specifically at a planetary exploration context. The system uses a novel modular feature detection and tracking algorithm called hybrid-saliency in order to achieve robust tracking, while maintaining low computational complexity in the SLAM filter. The hybrid saliency technique uses a combination of cognitive inspired saliency features with point-based feature descriptors as input to the SLAM filter. The system was tested on simulated datasets generated using the Planetary, Asteroid and Natural scene Generation Utility (PANGU) as well as two real world datasets which closely approximated images from a planetary environment. The system was shown to provide a higher accuracy of localisation estimate than a state-of-the-art VO system tested on the same data set.ududIn order to be able to localise the rover absolutely, further techniques are investigated which attempt to determine the rover's position in orbital maps. Orbiter Mask Matching uses point-based features detected by the rover to associate descriptors with large features extracted from orbital imagery and stored in the rover memory prior the mission launch. A proof of concept is evaluated using a PANGU simulated boulder field.
机译:与目前的火星和着陆器任务相比,未来的火星探索任务将具有越来越雄心勃勃的目标。将需要在较短的时间内进行极长的距离遍历。这将允许执行更多不同和复杂的科学任务,并增加任务的总体价值。这些任务还可能包括一个样本返回组件,该组件将从地面收集的物品返回到缓存中,以便返回地球,以供进一步研究。为了使这些任务可行,未来的流动站平台将需要提高自治程度,使其在不严重依赖地面地面站的情况下运行。能够自主定位流动站是提高流动站独立探索能力的重要因素。 ud ud本论文开发了专门针对行星探测环境的行星单眼同时定位与制图(PM-SLAM)系统。该系统使用一种称为混合显着性的新型模块化特征检测和跟踪算法,以实现鲁棒的跟踪,同时在SLAM滤波器中保持较低的计算复杂度。混合显着性技术将认知启发性显着性特征与基于点的特征描述符结合使用,作为SLAM过滤器的输入。该系统在使用行星,小行星和自然场景生成实用程序(PANGU)生成的模拟数据集以及两个与行星环境的图像非常近似的真实数据集上进行了测试。与在相同数据集上测试的最新VO系统相比,该系统可提供更高的定位估计精度。 ud ud为了能够绝对定位流动站,我们研究了进一步的技术,确定流动站在轨道图中的位置。轨道面罩匹配使用流动站检测到的基于点的特征,将描述符与从轨道图像提取并在任务发射前存储在流动站内存中的较大特征相关联。使用PANGU模拟的巨石场评估概念验证。

著录项

  • 作者

    Bajpai Abhinav;

  • 作者单位
  • 年度 2017
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

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