Robust perception is an essential component to enable long-term operation of mobile robots. It depends on failure resilience through reliable sensor data and preprocessing, as well as failure awareness through introspection, for example the ability to self-assess localization performance. This paper presents CorAl: a principled, intuitive, and generalizable method to measure the quality of alignment between pairs of point clouds, which learns to detect alignment errors in a self-supervised manner. CorAl compares the differential entropy in the point clouds separately with the entropy in their union to account for entropy inherent to the scene. By making use of dual entropy measurements, we obtain a quality metric that is highly sensitive to small alignment errors and still generalizes well to unseen environments. In this work, we extend our previous work on lidar-only CorAl to radar data by proposing a two-stage filtering technique that produces high-quality point clouds from noisy radar scans. Thus we target robust perception in two ways: by introducing a method that introspectively assesses alignment quality, and applying it to an inherently robust sensor modality. We show that our filtering technique combined with CorAl can be applied to the problem of alignment classification, and that it detects small alignment errors in urban settings with up to 98% accuracy, and with up to 96% if trained only in a different environment. Our lidar and radar experiments demonstrate that CorAl outperforms previous methods both on the ETH lidar benchmark, which includes several indoor and outdoor environments, and the large-scale Oxford and MulRan radar data sets for urban traffic scenarios The results also demonstrate that CorAl generalizes very well across substantially different environments without the need of retraining.
翻译:强力感知是移动机器人长期操作的基本组成部分。 它取决于通过可靠的传感器数据和预处理的可靠传感器数据和预处理而导致的故障复原力, 以及通过内窥测( 例如, 自我评估本地化性能的能力) 的失败感知。 本文展示了 CorAl: 一个原则性、 直观性和可概括性的方法, 用来测量点云对对齐质量的测量, 它学会以自我监督的方式检测点云对齐的差错。 CorAl 比较点的差异性激流与其联盟的增压值分开, 以说明其内部的变异性。 通过使用双轨测量, 我们获得了一个对小型校准错误高度敏感的质量指标, 并且仍然能够对看不见的环境进行概括化。 在这项工作中, 我们把我们以前关于单点云对齐工作的工作扩大到雷达数据的质量, 提出一个两阶段过滤技术, 从噪音的雷达扫描中产生高质量的云。 因此, 我们只用两种方式将稳健的感知觉觉觉测到两种方法: 引入一种对调调调调的校正性对齐质量质量质量, 并且将它应用到一个内部的轨变校正的校准的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正, 。 我们的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正, 。的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校正的校