A multi-sensor robotic platform for ground mapping and estimation beyond the visible spectrum
Annalisa Milella, Giulio Reina, Michael Nielsen

TL;DR
This paper presents a multi-sensor robotic platform that combines diverse sensors to create detailed multi-layer soil maps for improved agricultural ground management and autonomous vehicle navigation.
Contribution
It introduces an integrated multi-sensor approach combining exteroceptive and proprioceptive data for comprehensive soil mapping and change detection in agricultural environments.
Findings
Successful multi-layer soil mapping on different terrains
Enhanced soil characterization through sensor data fusion
Potential for autonomous agricultural vehicle navigation
Abstract
Accurate soil mapping is critical for a highly-automated agricultural vehicle to successfully accomplish important tasks including seeding, ploughing, fertilising and controlled traffic, with limited human supervision, ensuring at the same time high safety standards. In this research, a multi-sensor ground mapping and characterisation approach is proposed, whereby data coming from heterogeneous but complementary sensors, mounted on-board an unmanned rover, are combined to generate a multi-layer map of the environment and specifically of the supporting ground. The sensor suite comprises both exteroceptive and proprioceptive devices. Exteroceptive sensors include a stereo camera, a visible and near infrared camera and a thermal imager. Proprioceptive data consist of the vertical acceleration of the vehicle sprung mass as acquired by an inertial measurement unit. The paper details the…
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