Traversability illustrates the difficulty of driving through a specific region and encompasses the suitability of the terrain for traverse based on its physical properties, such as slope and roughness, surface condition, etc. In this survey we highlight the merits and limitations of all the major steps in the evolution of traversability estimation techniques, covering both non-trainable and machine-learning methods, leading up to the recent proliferation of deep learning literature. We discuss how the nascence of Deep Learning has created an opportunity for radical improvement in traversability estimation. Finally, we discuss how self-supervised learning can help satisfy deep methods' increased need for (challenging to acquire and label) large-scale datasets.
翻译:可变性表明在特定区域开车的困难,包括地貌因其物理特性,如坡度和粗糙度、地表状况等,适合穿越。 在这次调查中,我们强调了可穿行估计技术演变中所有主要步骤的优点和局限性,这些步骤既包括不可驾驭的方法,也包括机器学习方法,导致最近深层学习文献的泛滥。我们讨论了深层学习的新生如何为大幅度改进可穿行估计创造了机会。最后,我们讨论了自我监督的学习如何有助于满足(难以获取和标签的)大规模数据集的更深层方法的需要。