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Robot-Dependent Traversability Estimation for Outdoor Environments Using Deep Multimodal Variational Autoencoders

Matthias Eder, Gerald Steinbauer-Wagner

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Abstract

Efficient and reliable navigation in off-road envi- ronments poses a significant challenge for robotics, especially when factoring in the varying capabilities of robots across dif- ferent terrains. To achieve this, the robot system’s traversability is usually estimated to plan traversable routes through an environment. This paper presents a new approach that utilizes Deep Multimodal Variational Autoencoders (DMVAEs) for estimating the traversability of different robots in complex off- road terrains. Our method utilizes DMVAEs to capture essential environmental information and robot properties, effectively modeling factors that influence robotic traversability. The key contribution of this research is a two-stage traversability estima- tion framework for various robots in diverse off-road conditions that integrates robot properties in addition to environmental information to predict the traversability for various robots in a single model. We validate our method through real-world experiments involving four ground robots navigating an alpine environment. Comparative evaluations against state-of-the-art traversability estimation methods demonstrate the superior accuracy and robustness of our approach. Additionally, we investigate the transfer of trained models to new robots, enhancing their traversability estimation and extending the applicability of our framework.

Index terms

Field Robots Motion and Path Planning Data Sets for Robot Learning