Learning to safely navigate in unknown environments is an important task for autonomous drones used in surveillance and rescue operations. In recent years, a number of learning-based Simultaneous Localisation and Mapping (SLAM) systems relying on deep neural networks (DNNs) have been proposed for applications where conventional feature descriptors do not perform well. However, such learning-based SLAM systems rely on DNN feature encoders trained offline in typical deep learning settings. This makes them less suited for drones deployed in environments unseen during training, where continual adaptation is paramount. In this paper, we present a new method for learning to SLAM on the fly in unknown environments, by modulating a low-complexity Dictionary Learning and Sparse Coding (DLSC) pipeline with a newly proposed Quadratic Bayesian Surprise (QBS) factor. We experimentally validate our approach with data collected by a drone in a challenging warehouse scenario, where the high number of ambiguous scenes makes visual disambiguation hard.
翻译:学习在未知环境中安全航行是用于监视和救援行动的自主无人驾驶飞机的一项重要任务。近年来,一些依靠深神经网络(DNNS)的基于学习的同步本地化和绘图系统(SLAM)被提议用于传统特征描述器不起作用的应用。然而,这类基于学习的SLAM系统依赖在典型的深层学习环境中受过训练的DNN特效编码器进行离线操作。这使得它们更不适合在培训过程中看不见的环境中部署的无人驾驶飞机,在这种环境中,持续适应是最重要的。在本文中,我们介绍了一种在未知环境中向SLAM学习的新方法,即以新提议的Quadratic Bayesian Suppris(QBS)因子调节低兼容性词学习和微晶化编码管道(DLSC ) 。我们实验性地验证了在具有挑战性的仓库情景下由无人驾驶飞机收集的数据,在这种情景下,大量的模糊的场景点使得视觉失明变得困难。