Autonomous exploration is one of the important parts to achieve the fast autonomous mapping and target search. However, most of the existing methods are facing low-efficiency problems caused by low-quality trajectory or back-and-forth maneuvers. To improve the exploration efficiency in unknown environments, a fast autonomous exploration planner (FAEP) is proposed in this paper. Different from existing methods, we firstly design a novel frontiers exploration sequence generation method to obtain a more reasonable exploration path, which considers not only the flight-level but frontier-level factors in the asymmetric traveling salesman problem (ATSP). Then, according to the exploration sequence and the distribution of frontiers, an adaptive yaw planning method is proposed to cover more frontiers by yaw change during an exploration journey. In addition, to increase the speed and fluency of flight, a dynamic replanning strategy is also adopted. We present sufficient comparison and evaluation experiments in simulation environments. Experimental results show the proposed exploration planner has better performance in terms of flight time and flight distance compared to typical and state-of-the-art methods. Moreover, the effectiveness of the proposed method is further evaluated in real-world environments.
翻译:自主勘探是实现快速自主测绘和目标搜索的重要部分之一,然而,大多数现有方法都面临低效率问题,因为低质量的轨迹或前后操纵造成低效率问题。为了提高在未知环境中的勘探效率,本文件提出了快速自主勘探规划员(FAEP)的建议。与现有方法不同,我们首先设计了一种新的边界勘探序列生成方法,以获得更合理的勘探路径,该方法不仅考虑到飞行水平,而且考虑到不对称旅行推销员问题中的前沿因素。然后,根据勘探顺序和边界分布,建议采用适应性轨迹规划方法,在勘探旅程中通过斜线变化覆盖更多的边界。此外,为了提高飞行速度和流畅度,还采用了动态再规划战略。我们在模拟环境中进行了充分的比较和评价实验。实验结果表明,提议的勘探规划员在飞行时间和飞行距离方面比典型和最先进的方法表现更好。此外,在现实环境中进一步评价了拟议方法的有效性。