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The QUAD-AV Project: multi-sensory approach for obstacle detection in agricultural autonomous robotics

R. Rouveure, Giulio Reina, Mario Massimo Foglia, Rainer Worst, S. Seyed-Sadri, Morten Rufus Blas, Patrice Faure

Year
2022
Citations
12

Abstract

Autonomous vehicles are being increasingly adopted in agriculture to improve productivity and efficiency. For an autonomous agricultural vehicle to operate safely, environment perception and interpretation capabilities are fundamental requirements. The Ambient Awareness for Autonomous Agricultural Vehicles (QUAD-AV) project explores a multisensory approach to provide an autonomous agricultural vehicle with such ambient awareness. The proposed methods and systems will aim at increasing the overall level of safety of an autonomous agricultural vehicle with respect to itself, to people and animals as\nwell as to property. The 'obstacle detection' problem is specifically addressed within the QUAD-AV project. The paper focuses on the presentation of the different selected technologies (vision/stereovision, thermography, ladar, microwave radar) through the presentation of preliminary results.

Keywords

ObstacleRoboticsArtificial intelligenceComputer scienceComputer visionAgricultureRobotGeography

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