可靠的实时变化检测和绘制3D激光雷达

Lorenz Wellhausen, Renaud Dubé, A. Gawel, R. Siegwart, César Cadena
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引用次数: 14

摘要

搜索和救援机器人的一个常见场景是绘制灾难现场的地图和巡逻,以评估情况并计划救援队的潜在任务。必须特别重视环境的变化,因为这些变化可能与建筑物倒塌、物体移动等关键事件相对应。本文提出了一种用于装备激光雷达的机器人的变化检测管道,以帮助人类检测这些变化。通过计算地图中最近体素的Mahalanobis距离,将本地3D点云数据与基于八树的占用地图表示环境进行比较。通过聚类算法对阈值距离进行处理,得到一组候选变更。最后,使用随机森林分类器过滤这些集合中的异常值。在出击期间,根据其分类得分和出现次数连续映射更改。在机器人操作过程中实时报告变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reliable real-time change detection and mapping for 3D LiDARs
A common scenario in Search and Rescue robotics is to map and patrol a disaster site to assess the situation and plan potential missions of rescue teams. Particular importance has to be given to changes in the environment as these may correspond to critical events like building collapses, movement of objects, etc. This paper presents a change detection pipeline for LiDAR-equipped robots to assist humans in detecting those changes. The local 3D point cloud data is compared to an octree-based occupancy map representation of the environment by computing the Mahalanobis distance to the closest voxel in the map. The thresholded distance is processed by a clustering algorithm to obtain a set of change candidates. Finally, outliers in these sets are filtered using a random forest classifier. Changes are continuously mapped during a sortie based on their classification score and number of occurrences. Changes are reported in real time during robot operation.
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