Simultaneous localization and mapping (SLAM) is one of the key components of a control system that aims to ensure autonomous navigation of a mobile robot in unknown environments. In a variety of practical cases a robot might need to travel long distances in order to accomplish its mission. This requires long-term work of SLAM methods and building large maps. Consequently the computational burden (including high memory consumption for map storage) becomes a bottleneck. Indeed, state-of-the-art SLAM algorithms include specific techniques and optimizations to tackle this challenge, still their performance in long-term scenarios needs proper assessment. To this end, we perform an empirical evaluation of two widespread state-of-the-art RGB-D SLAM methods, suitable for long-term navigation, i.e. RTAB-Map and Voxgraph. We evaluate them in a large simulated indoor environment, consisting of corridors and halls, while varying the odometer noise for a more realistic setup. We provide both qualitative and quantitative analysis of both methods uncovering their strengths and weaknesses. We find that both methods build a high-quality map with low odometry noise but tend to fail with high odometry noise. Voxgraph has lower relative trajectory estimation error and memory consumption than RTAB-Map, while its absolute error is higher.
翻译:同步本地化和绘图(SLAM)是旨在确保移动机器人在未知环境中自主导航的控制系统的关键组成部分之一。 在各种实际情况下,机器人可能需要长途旅行才能完成任务。这需要SLAM方法的长期工作和大地图的建造。因此,计算负担(包括用于地图储存的高记忆消耗量)成为瓶颈。事实上,最先进的SLAM算法包括了应对这一挑战的具体技术和优化,它们的长期性能仍然需要适当评估。我们为此对两种广泛的先进RGB-D SLAM方法进行实证评估,这两种方法都适合长期导航,即RTAB-Map和Voxgraph。我们在大型模拟室内环境中评估它们(包括走廊和大厅),同时为更现实的设置而改变超强的噪音。我们从质量和数量上分析了这两种方法的长处和弱点。我们发现,两种方法都建立了高质量的RGB-DSLM方法,既适合长期导航,也适合长期航行,即RT-M-M和Voxgraph。我们发现,其绝对性偏差是高分辨率,但也倾向于高压。