首页> 外文会议>International Astronautical Congress >InFuse Data Fusion Methodology for Space Robotics, Awareness and Machine Learning
【24h】

InFuse Data Fusion Methodology for Space Robotics, Awareness and Machine Learning

机译:空间机器人,意识和机器学习的infuse数据融合方法

获取原文

摘要

Autonomous space vehicles such as orbital servicing satellites and planetary exploration rovers must be comprehensively aware of their environment in order to make appropriate decisions. Multi-sensor data fusion plays a vital role in providing these autonomous systems with sensory information of different types, from different locations, and at different times. The InFuse project, funded by the European Commission's Horizon 2020 Strategic Research Cluster in Space Robotics, provides the space community with an open-source Common Data Fusion Framework (CDFF) by which data may be fused in a modular fashion from multiple sensors. In this paper, we summarize the modular structure of this CDFF and show how it is used for the processing of sensor data to obtain data products for both planetary and orbital space robotic applications. Multiple sensor data from field testing that includes inertial measurements, stereo vision, and scanning laser range information is first used to produce robust multi-layered environmental maps for path planning. This information is registered and fused within the CDFF to produce comprehensive three-dimensional maps of the environment. To further explore the potential of the CDFF, we illustrate several applications of the CDFF that have been evaluated for orbital and planetary use cases of environmental reconstruction, mapping, navigation, and visual tracking. Algorithms for learning of maps, outlier detection, localization, and identification of objects are available within the CDFF and some early results from their use in space analogue scenarios are presented. These applications show how the CDFF can be used to provide a wide variety of data products for use by awareness and machine learning processes in space robots.
机译:自动空间车辆如轨道服务卫星和行星勘探流域必须全面了解其环境,以便做出适当的决策。多传感器数据融合在为这些自主系统提供不同类型的不同类型和不同时间提供了这些自治系统方面发挥着至关重要的作用。由欧盟委员会的地平线2020战略研究集群提供资金的注入项目为空间社区提供了具有开放源公共数据融合框架(CDFF)的空间社区,数据可以从多个传感器以模块化方式融合。在本文中,我们总结了该CDFF的模块化结构,并展示了如何用于处理传感器数据,以获得行星和轨道空间机器人应用的数据产品。来自现场测试的多个传感器数据,包括惯性测量,立体声视觉和扫描激光范围信息,首先用于生产用于路径规划的强大的多层环境贴图。此信息在CDFF内注册并融合,以生产环境的全面三维地图。为了进一步探索CDFF的潜力,我们说明了CDFF的若干应用,已被评估为轨道和行星用例的环境重建,映射,导航和视觉跟踪。在CDFF中提供了用于学习地图的算法,异常值检测,本地化和对象的识别,并且呈现了它们在空间模拟场景中的一些早期结果。这些应用程序展示了CDFF如何用于提供各种数据产品,以供空间机器人的认识和机器学习过程使用。

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号