Autonomous exploration is an essential capability for mobile robots, as the majority of their applications require the ability to efficiently collect information about their surroundings. In the literature, there are several approaches, ranging from frontier-based methods to hybrid solutions involving the ability to plan both local and global exploring paths, but only few of them focus on improving local exploration by properly tuning the planned trajectory, often leading to "stop-and-go" like behaviors. In this work we propose a novel RRT-inspired B\'ezier-based next-best-view trajectory planner able to deal with the problem of fast local exploration. Gaussian process inference is used to guarantee fast exploration gain retrieval while still being consistent with the exploration task. The proposed approach is compared with other available state-of-the-art algorithms and tested in a real-world scenario. The implemented code is publicly released as open-source code to encourage further developments and benchmarking.
翻译:自主勘探是移动机器人的基本能力,因为大多数应用都要求有能力高效率地收集关于其周围环境的信息。文献中,有几种方法,从边疆方法到涉及规划本地和全球探索路径能力的混合解决方案,但其中只有极少数侧重于通过适当调整计划轨迹改进本地勘探,往往导致“停止和运行”类似行为。在这项工作中,我们提议建立一个新型的RRT(受RRT(RT)启发的B\\'ezier)基于下一流最佳轨迹规划仪,能够处理快速本地勘探问题。Gaussian进程推论用于保证快速勘探收益的检索,同时仍然与勘探任务保持一致。拟议方法与其他现有的最新算法相比,并在现实世界情景中测试。已执行的代码作为开放源代码公开发布,以鼓励进一步的发展和基准。