4.6 Article

Learning Risk-Aware Costmaps for Traversability in Challenging Environments

Journal

IEEE ROBOTICS AND AUTOMATION LETTERS
Volume 7, Issue 1, Pages 279-286

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LRA.2021.3125047

Keywords

Planning under uncertainty; deep learning methods; field robots; motion and path planning; robotics in hazardous fields

Categories

Funding

  1. JPL Year Round Internship Program
  2. National Aeronautics and Space Administration (NASA)

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One of the main challenges in autonomous robotic exploration and navigation is determining safe paths in unknown and unstructured environments. This study introduces a learning approach using a neural network to robustly calculate the distribution of traversability costs, focusing on learning tail risks. The method shows improved accuracy, robustness, and computational efficiency compared to baselines, and is validated in challenging environments.
One of the main challenges in autonomous robotic exploration and navigation in unknown and unstructured environments is determining where the robot can or cannot safely move. A significant source of difficulty in this determination arises from stochasticity and uncertainty, coming from localization error, sensor sparsity and noise, difficult-to-model robot-ground interactions, and disturbances to the motion of the vehicle. Classical approaches to this problem rely on geometric analysis of the surrounding terrain, which can be prone to modeling errors and can be computationally expensive. Moreover, modeling the distribution of uncertain traversability costs is a difficult task, compounded by the various error sources mentioned above. In this work, we take a principled learning approach to this problem. We introduce a neural network architecture for robustly learning the distribution of traversability costs. Because we are motivated by preserving the life of the robot, we tackle this learning problem from the perspective of learning tail-risks, i.e. the conditional value-at-risk (CVaR). We show that this approach reliably learns the expected tail risk given a desired probability risk threshold between 0 and 1, producing a traversability costmap which is more robust to outliers, more accurately captures tail risks, and is more computationally efficient, when compared against baselines. We validate our method on data collected by a legged robot navigating challenging, unstructured environments including an abandoned subway, limestone caves, and lava tube caves.

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