A plethora of state estimation techniques have appeared in the last decade using visual data, and more recently with added inertial data. Datasets typically used for evaluation include indoor and urban environments, where supporting videos have shown impressive performance. However, such techniques have not been fully evaluated in challenging conditions, such as the marine domain. In this paper, we compare ten recent open-source packages to provide insights on their performance and guidelines on addressing current challenges. Specifically, we selected direct methods and tightly-coupled optimization techniques that fuse camera and Inertial Measurement Unit (IMU) data together. Experiments are conducted by testing all packages on datasets collected over the years with underwater robots in our laboratory. All the datasets are made available online.
翻译:在过去的十年里,利用视觉数据,最近又增加了惯性数据,出现了大量的国家估算技术。通常用于评估的数据集包括室内和城市环境,支持性视频显示了令人印象深刻的性能。然而,在海洋领域等具有挑战性的条件下,这些技术没有得到充分的评估。在本文件中,我们比较了最近10个开放源码软件包,以提供关于其业绩的洞察力和应对当前挑战的准则。具体地说,我们选择了直接方法和紧密结合的优化技术,即引信相机和惰性测量单位(IMU)的数据。实验是通过测试多年来与实验室中的水下机器人一起收集的数据集的所有软件包进行的。所有数据集都可在网上查阅。