Learned Long-Term Stability Scan Filtering for Robust Robot Localisation in Continuously Changing Environments

Hroob, Ibrahim, Molina Mellado, Sergio, Polvara, Riccardo , Cielniak, Grzegorz and Hanheide, Marc (2023) Learned Long-Term Stability Scan Filtering for Robust Robot Localisation in Continuously Changing Environments. In: European Conference on Mobile Robots (ECMR), 4 - 7 September, Coimbra, Portugal.

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Learned Long-Term Stability Scan Filtering for Robust Robot Localisation in Continuously Changing Environments
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Abstract

In field robotics, particularly in the agricultural sector, precise localization presents a challenge due to the constantly changing nature of the environment. Simultaneous Localization and Mapping algorithms can provide an effective estimation of a robot’s position, but their long-term performance may be impacted by false data associations. Additionally, alternative strategies such as the use of RTK-GPS can also have limitations, such as dependence on external infrastructure. To address these challenges, this paper introduces a novel stability scan filter. This filter can learn and infer the motion status of objects in the environment, allowing it to identify the most stable objects and use them as landmarks for robust robot localization in a continuously changing environment. The proposed method involves an unsupervised point-wise labelling of LiDAR frames by utilizing temporal observations of the environment, as well as a regression network called Long-Term Stability Network (LTSNET) to learn and infer 3D LiDAR points long-term motion status. Experiments demonstrate the ability of the stability scan filter to infer the motion stability of objects on a real agricultural long-term dataset. Results show that by only utilizing points belonging to long-term stable objects, the localization system exhibits reliable and robust localization performance for longterm missions compared to using the entire LiDAR frame points.

Keywords:mobile robotics, localization, Deep learning, Agricultural Robotics
Subjects:H Engineering > H671 Robotics
G Mathematical and Computer Sciences > G760 Machine Learning
Divisions:COLLEGE OF HEALTH AND SCIENCE > School of Computer Science
ID Code:56036
Deposited On:06 Sep 2023 14:58

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