论文标题
基于学习的可靠性估算可靠的激光雷达本地化
Learning-based Localizability Estimation for Robust LiDAR Localization
论文作者
论文摘要
由于范围和几何形状的直接整合,基于激光雷达的本地化和映射是许多现代机器人系统中的核心组件之一,可以实时进行精确的运动估算和高质量的高质量图。然而,由于场景中存在环境限制不足的结果,这种对几何形状的依赖会导致本地化失败,发生在隧道等自对称环境中。这项工作通过提出一种基于神经网络的估计方法来检测机器人操作过程中的(非)本地化性,从而确切解决了此问题。特别注意扫描到扫描登记的可本质性,因为它是许多激光射击估计管道中的关键组成部分。与以前的主要检测方法相反,该提出的方法可以通过估算原始传感器测量的可定位性,而无需评估基本的注册优化,从而实现了失败的早期检测。此外,由于需要启发式识别退化检测阈值,因此先前的方法在跨环境和传感器类型的概括能力上仍然有限。提出的方法通过从不同环境的集合中学习,从而避免了这个问题,从而使网络在各种情况下都可以运行。此外,该网络仅在模拟数据上进行培训,避免在挑战性和堕落(通常难以访问)环境中收集艰巨的数据。在跨越具有挑战性的环境和两种不同的传感器类型上进行的现场实验中测试了提出的方法,而没有任何修改。观察到的检测性能与特定环境特异性阈值调整后的最新方法相当。
LiDAR-based localization and mapping is one of the core components in many modern robotic systems due to the direct integration of range and geometry, allowing for precise motion estimation and generation of high quality maps in real-time. Yet, as a consequence of insufficient environmental constraints present in the scene, this dependence on geometry can result in localization failure, happening in self-symmetric surroundings such as tunnels. This work addresses precisely this issue by proposing a neural network-based estimation approach for detecting (non-)localizability during robot operation. Special attention is given to the localizability of scan-to-scan registration, as it is a crucial component in many LiDAR odometry estimation pipelines. In contrast to previous, mostly traditional detection approaches, the proposed method enables early detection of failure by estimating the localizability on raw sensor measurements without evaluating the underlying registration optimization. Moreover, previous approaches remain limited in their ability to generalize across environments and sensor types, as heuristic-tuning of degeneracy detection thresholds is required. The proposed approach avoids this problem by learning from a collection of different environments, allowing the network to function over various scenarios. Furthermore, the network is trained exclusively on simulated data, avoiding arduous data collection in challenging and degenerate, often hard-to-access, environments. The presented method is tested during field experiments conducted across challenging environments and on two different sensor types without any modifications. The observed detection performance is on par with state-of-the-art methods after environment-specific threshold tuning.