Progress in the last decade has brought about significant improvements in the accuracy and speed of SLAM systems, broadening their mapping capabilities. Despite these advancements, long-term operation remains a major challenge, primarily due to the wide spectrum of perturbations robotic systems may encounter. Increasing the robustness of SLAM algorithms is an ongoing effort, however it usually addresses a specific perturbation. Generalisation of robustness across a large variety of challenging scenarios is not well-studied nor understood. This paper presents a systematic evaluation of the robustness of open-source state-of-the-art SLAM algorithms with respect to challenging conditions such as fast motion, non-uniform illumination, and dynamic scenes. The experiments are performed with perturbations present both independently of each other, as well as in combination in long-term deployment settings in unconstrained environments (lifelong operation).
翻译:尽管取得了这些进展,但长期运作仍是一项重大挑战,主要原因是机器人系统可能遇到的扰动范围很广。提高SLAM算法的稳健性是一项持续的努力,但通常处理的是特定的扰动。在各种挑战性假设中普遍采用强力的做法,没有很好地加以研究,也没有被理解。本文件对开放源头的最新SLAM算法在快速运动、非统一照明和动态场景等具有挑战性的条件下的稳健性进行了系统评估。实验是独立地进行,同时在不受制约的环境中长期部署(终身运作)进行。