Towards an obstacle detection system for robot obstacle negotiation

Han Wang, Quan Zhang, Zhenquan Fan, Gongcheng Wang, Pengchao Ding, Weidong Wang
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Abstract

Purpose

To solve the obstacle detection problem in robot autonomous obstacle negotiation, this paper aims to propose an obstacle detection system based on elevation maps for three types of obstacles: positive obstacles, negative obstacles and trench obstacles.

Design/methodology/approach

The system framework includes mapping, ground segmentation, obstacle clustering and obstacle recognition. The positive obstacle detection is realized by calculating its minimum rectangle bounding boxes, which includes convex hull calculation, minimum area rectangle calculation and bounding box generation. The detection of negative obstacles and trench obstacles is implemented on the basis of information absence in the map, including obstacles discovery method and type confirmation method.

Findings

The obstacle detection system has been thoroughly tested in various environments. In the outdoor experiment, with an average speed of 22.2 ms, the system successfully detected obstacles with a 95% success rate, indicating the effectiveness of the detection algorithm. Moreover, the system’s error range for obstacle detection falls between 4% and 6.6%, meeting the necessary requirements for obstacle negotiation in the next stage.

Originality/value

This paper studies how to solve the obstacle detection problem when the robot obstacle negotiation.

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开发用于机器人障碍物协商的障碍物检测系统
目的为了解决机器人自主障碍物协商中的障碍物检测问题,本文旨在提出一种基于高程图的障碍物检测系统,可检测正障碍物、负障碍物和沟槽障碍物三种类型的障碍物。正障碍物检测通过计算其最小矩形边界框来实现,包括凸壳计算、最小面积矩形计算和边界框生成。负障碍物和沟槽障碍物的检测是基于地图中缺失的信息实现的,包括障碍物发现方法和类型确认方法。在室外实验中,系统以平均 22.2 毫秒的速度成功检测到障碍物,成功率高达 95%,表明了检测算法的有效性。此外,系统检测障碍物的误差范围在 4% 至 6.6% 之间,满足了下一阶段障碍物协商的必要条件。 原创性/价值 本文研究了如何解决机器人障碍物协商时的障碍物检测问题。
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