Traversability estimation for mobile robots in off-road environments requires more than conventional semantic segmentation used in constrained environments like on-road conditions. Recently, approaches to learning a traversability estimation from past driving experiences in a self-supervised manner are arising as they can significantly reduce human labeling costs and labeling errors. However, the self-supervised data only provide supervision for the actually traversed regions, inducing epistemic uncertainty according to the scarcity of negative information. Negative data are rarely harvested as the system can be severely damaged while logging the data. To mitigate the uncertainty, we introduce a deep metric learning-based method to incorporate unlabeled data with a few positive and negative prototypes in order to leverage the uncertainty, which jointly learns using semantic segmentation and traversability regression. To firmly evaluate the proposed framework, we introduce a new evaluation metric that comprehensively evaluates the segmentation and regression. Additionally, we construct a driving dataset `Dtrail' in off-road environments with a mobile robot platform, which is composed of a wide variety of negative data. We examine our method on Dtrail as well as the publicly available SemanticKITTI dataset.
翻译:越野环境中移动机器人的可变性估计要求的不仅仅是在诸如公路条件等受限制环境中使用的常规语义分割法。最近,以自我监督的方式从过去驾驶经验中学习可变性估计法的做法正在形成,因为这种方法可以大大减少人类标签成本和标签错误。然而,自我监督的数据只为实际穿透区域提供监督,根据负面信息的稀缺程度,造成隐性不确定性。由于系统在记录数据时可能受到严重破坏,因此很少采集负面数据。为了减轻不确定性,我们采用了一种深层次的基于学习的衡量方法,将无标签数据与少数正反面原型结合起来,以利用不确定性,共同学习使用语义分割和可穿透性回归法。为了坚定地评估拟议框架,我们引入了一个新的评价指标,全面评价分解和回归情况。此外,我们用一个由大量负面数据组成的移动机器人平台,在离岸环境中建造了一个驱动数据集“缺陷”。我们研究了在Dtreilgy上采用的方法,作为公开可获取的数据。