首页> 外文期刊>The International journal of robotics research >Efficient Information-based Visual Robotic Mapping in Unstructured Environments
【24h】

Efficient Information-based Visual Robotic Mapping in Unstructured Environments

机译:非结构化环境中基于信息的高效可视机器人映射

获取原文
获取原文并翻译 | 示例
           

摘要

In field environments it is often not possible to provide robot teams with detailed a priori environment and task models. In such unstructured environments, robots will need to create a dimensionally accurate three-dimensional geometric model of its surroundings by performing appropriate sensor actions. However, uncertainties in robot locations and sensing limitations/occlusions make this difficult. A new algorithm, based on iterative sensor planning and sensor redundancy, is proposed to build a geometrically consistent dimensional map of the environment for mobile robots that have articulated sensors. The aim is to acquire new information that leads to more detailed and complete knowledge of the environment. The robot(s) is controlled to maximize geometric knowledge gained of its environment using an evaluation function based on Shannon's information theory. Using the measured and Markovian predictions of the unknown environment, an information theory based metric is maximized to determine a robotic agent's next best view (NBV) of the environment. Data collected at this NBV pose are fused using a Kalman filter statistical uncertainty model to the measured environment map. The process continues until the environment mapping process is complete. The work is unique in the application of information theory to enhance the performance of environment sensing robot agents. It may be used by multiple distributed and decentralized sensing agents for efficient and accurate cooperative environment modeling. The algorithm makes no assumptions of the environment structure. Hence, it is robust to robot failure since the environment model being built is not dependent on any single agent frame, but is set in an absolute reference frame. It accounts for sensing uncertainty, robot motion uncertainty, environment model uncertainty and other critical parameters. It allows for regions of higher interest receiving greater attention by the agents. This algorithm is particularly well suited to unstructured environments, where sensor uncertainty and occlusions are significant. Simulations and experiments show the effectiveness of this algorithm.
机译:在现场环境中,通常无法为机器人团队提供详细的先验环境和任务模型。在这种非结构化的环境中,机器人将需要通过执行适当的传感器操作来创建其周围环境的尺寸精确的三维几何模型。然而,机器人位置的不确定性和感测限制/遮挡使这变得困难。提出了一种基于迭代传感器计划和传感器冗余的新算法,以为具有铰接传感器的移动机器人构建几何上一致的环境尺寸图。目的是获取新信息,从而获得有关环境的更详细和完整的知识。通过使用基于Shannon信息论的评估函数,可以控制机器人以最大化其周围环境的几何知识。使用未知环境的实测和马尔可夫预测,可以最大程度地利用基于信息论的指标来确定机械人对环境的次佳视角(NBV)。使用卡尔曼滤波器统计不确定性模型将在此NBV姿态收集的数据融合到所测量的环境图。该过程一直持续到环境映射过程完成为止。这项工作在应用信息论来增强环境感应机器人代理性能方面是独一无二的。多个分布式和分散式传感代理可以使用它进行高效,准确的协作环境建模。该算法不假设环境结构。因此,由于正在构建的环境模型不依赖于任何单个代理框架,而是在绝对参考框架中设置,因此它对机器人故障具有鲁棒性。它考虑了感应不确定性,机器人运动不确定性,环境模型不确定性和其他关键参数。它允许兴趣较高的区域受到代理商的更多关注。该算法特别适合于传感器不确定性和遮挡很严重的非结构化环境。仿真和实验证明了该算法的有效性。

著录项

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