Literature DB >> 33500915

Multi-Modal Detection and Mapping of Static and Dynamic Obstacles in Agriculture for Process Evaluation.

Timo Korthals1, Mikkel Kragh2, Peter Christiansen2, Henrik Karstoft2, Rasmus N Jørgensen2, Ulrich Rückert1.   

Abstract

Today, agricultural vehicles are available that can automatically perform tasks such as weed detection and spraying, mowing, and sowing while being steered automatically. However, for such systems to be fully autonomous and self-driven, not only their specific agricultural tasks must be automated. An accurate and robust perception system automatically detecting and avoiding all obstacles must also be realized to ensure safety of humans, animals, and other surroundings. In this paper, we present a multi-modal obstacle and environment detection and recognition approach for process evaluation in agricultural fields. The proposed pipeline detects and maps static and dynamic obstacles globally, while providing process-relevant information along the traversed trajectory. Detection algorithms are introduced for a variety of sensor technologies, including range sensors (lidar and radar) and cameras (stereo and thermal). Detection information is mapped globally into semantical occupancy grid maps and fused across all sensors with late fusion, resulting in accurate traversability assessment and semantical mapping of process-relevant categories (e.g., crop, ground, and obstacles). Finally, a decoding step uses a Hidden Markov model to extract relevant process-specific parameters along the trajectory of the vehicle, thus informing a potential control system of unexpected structures in the planned path. The method is evaluated on a public dataset for multi-modal obstacle detection in agricultural fields. Results show that a combination of multiple sensor modalities increases detection performance and that different fusion strategies must be applied between algorithms detecting similar and dissimilar classes.
Copyright © 2018 Korthals, Kragh, Christiansen, Karstoft, Jørgensen and Rückert.

Entities:  

Keywords:  inverse sensor models; mapping and localization; multi-modal perception; obstacle detection; occupancy grid maps; precision agriculture; process evaluation; sensor fusion

Year:  2018        PMID: 33500915      PMCID: PMC7806069          DOI: 10.3389/frobt.2018.00028

Source DB:  PubMed          Journal:  Front Robot AI        ISSN: 2296-9144


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