Feeling the Force: A Nuanced Physics-based Traversability Sensor for Navigation in Unstructured Vegetation
Zaar Khizar, Johann Laconte, Roland Lenain, Romuald Aufrere

TL;DR
This paper presents a novel force-based sensor that measures vegetation-robot interactions to improve navigation safety and efficiency in unstructured natural environments.
Contribution
It introduces a new sensor that directly measures forces exerted by vegetation, enabling nuanced assessment of traversability for robotic navigation.
Findings
Sensor effectively measures subtle force variations
Force data improves navigation decision-making
Validated through experimental tests
Abstract
In many applications, robots are increasingly deployed in unstructured and natural environments where they encounter various types of vegetation. Vegetation presents unique challenges as a traversable obstacle, where the mechanical properties of the plants can influence whether a robot can safely collide with and overcome the obstacle. A more nuanced approach is required to assess the safety and traversability of these obstacles, as collisions can sometimes be safe and necessary for navigating through dense or unavoidable vegetation. This paper introduces a novel sensor designed to directly measure the applied forces exerted by vegetation on a robot: by directly capturing the push-back forces, our sensor provides a detailed understanding of the interactions between the robot and its surroundings. We demonstrate the sensor's effectiveness through experimental validations, showcasing its…
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