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A sampling-based multi-tree fusion algorithm for frontier detection

机译:一种基于采样的Frontier检测多树融合算法

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Autonomous exploration is a key step toward real robotic autonomy. Among various approaches for autonomous exploration, frontier-based methods are most commonly used. One efficient method of frontier detection exploits the idea of the rapidly-exploring random tree and uses tree edges to search for frontiers. However, this method usually needs to consume a lot of memory resources and searches for frontiers slowly in the environments where random trees are not easy to grow (unfavorable environments). In this article, a sampling-based multi-tree fusion algorithm for frontier detection is proposed. Firstly, the random tree’s growing and storage rules are changed so that the disadvantage of its slow growing under unfavorable environments is overcome. Secondly, a block structure is proposed to judge whether tree nodes in a block play a decisive role in frontier detection, so that a large number of redundant tree nodes can be deleted. Finally, two random trees with different growing rules are fused to speed up frontier detection. Experimental results in both simulated and real environments demonstrate that our algorithm for frontier detection consumes fewer memory resources and shows better performances in unfavorable environments.
机译:自治探索是真正的机器人自主权的关键步骤。在自治勘探的各种方法中,最常用的基于前沿的方法。一个有效的前沿检测方法利用了快速探索随机树的想法,并使用树边缘来搜索前沿。然而,这种方法通常需要消耗大量的内存资源并在随机树不易生长(不利环境)的环境中慢慢地搜索边界。在本文中,提出了一种用于前沿检测的基于采样的多树融合算法。首先,改变随机树的增长和存储规则,使其在不利环境中缓慢生长的缺点是克服。其次,提出了一种块结构来判断块中的树节点是否在前沿检测中发挥着决定性作用,从而可以删除大量冗余树节点。最后,两个具有不同增长规则的随机树融合以加快前沿检测。模拟和真实环境的实验结果表明,我们的前沿检测算法消耗了更少的内存资源,并在不利环境中显示了更好的性能。

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