基于多距离DBSCAN的机器人自主导航激光避障策略

Danilo Cáceres Hernández, Van-Dung Hoang, K. Jo
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引用次数: 3

摘要

在完全自主导航中,制导是自主导航成功的重要保证。本文提出了一种基于距离聚类分析的自主机器人安全导航避障策略。自主导航系统必须能够识别物体,以便在未知的室内/室外环境中进行无碰撞运动。首先,通过动态密度可达的实现,提出了基于密度的带噪声应用空间聚类(DBSCAN)方法检测目标;其次,通过距离聚类分析确定避碰最优路径;然后,提取一组可能的路径点,以估计最佳候选路径。初步结果被收集并在一组连续帧上进行测试。选择这些具体的测量方法是为了证明它们的有效性。
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Laser based obstacle avoidance strategy for autonomous robot navigation using DBSCAN for versatile distance
Towards fully autonomous navigation, guidance plays an important task for successful autonomous navigation. In this paper, the authors propose an obstacle avoidance strategy based on distance clustering analysis for safe autonomous robot navigation. Autonomous navigation systems must be able to recognize objects in order to perform a collision free motion in both unknown indoor/outdoor environments. Firstly, it was proposed to detect objects using the Density-based spatial clustering of applications with noise (DBSCAN) method through a dynamic density-reachable implementation. Secondly, in order to determine an optimal path for collision avoidance a distance clustering analysis was implemented. Subsequently, a set of possible waypoints were extracted in order to estimate the best path candidate. Preliminary results were gathered and tested on a group of consecutive frames. These specific methods of measurement were chosen to prove their effectiveness.
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