CorAl: Introspection for Robust Radar and Lidar Perception in Diverse Environments Using Differential Entropy
Daniel Adolfsson, Manuel Castellano-Quero, Martin Magnusson, Achim J., Lilienthal, Henrik Andreasson

TL;DR
CorAl is a novel self-supervised method that assesses point cloud alignment quality using differential entropy, enhancing robust perception for mobile robots across diverse environments with radar and lidar data.
Contribution
It introduces a generalizable entropy-based metric for alignment quality and extends previous lidar work to radar, improving robustness and error detection in perception systems.
Findings
Detects small alignment errors with up to 98% accuracy in urban settings.
Generalizes well across different environments without retraining.
Outperforms previous methods on multiple lidar and radar datasets.
Abstract
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…
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