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Topological map-based approach for localization and mapping memory optimization
Authors:André S Aguiar  Filipe N dos Santos  Luis C Santos  Armando J Sousa  José Boaventura-Cunha
Affiliation:1. Centre for Robotics in Industry and Intelligent Systems, INESC TEC—INESC Technology and Science, Porto, Portugal;2. Centre for Robotics in Industry and Intelligent Systems, INESC TEC—INESC Technology and Science, Porto, Portugal

School of Science and Technology, University of Trás-os-Montes e Alto Douro, Vila Real, Portugal;3. Centre for Robotics in Industry and Intelligent Systems, INESC TEC—INESC Technology and Science, Porto, Portugal

FEUP, University Of Porto, Porto, Portugal

Abstract:Robotics in agriculture faces several challenges, such as the unstructured characteristics of the environments, variability of luminosity conditions for perception systems, and vast field extensions. To implement autonomous navigation systems in these conditions, robots should be able to operate during large periods and travel long trajectories. For this reason, it is essential that simultaneous localization and mapping algorithms can perform in large-scale and long-term operating conditions. One of the main challenges for these methods is maintaining low memory resources while mapping extensive environments. This work tackles this issue, proposing a localization and mapping approach called VineSLAM that uses a topological mapping architecture to manage the memory resources required by the algorithm. This topological map is a graph-based structure where each node is agnostic to the type of data stored, enabling the creation of a multilayer mapping procedure. Also, a localization algorithm is implemented, which interacts with the topological map to perform access and search operations. Results show that our approach is aligned with the state-of-the-art regarding localization precision, being able to compute the robot pose in long and challenging trajectories in agriculture. In addition, we prove that the topological approach innovates the state-of-the-art memory management. The proposed algorithm requires less memory than the other benchmarked algorithms, and can maintain a constant memory allocation during the entire operation. This consists of a significant innovation, since our approach opens the possibility for the deployment of complex 3D SLAM algorithms in real-world applications without scale restrictions.
Keywords:agriculture  autonomous robots  memory management  SLAM  topological mapping
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