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Fast Online Learning of CLiFF-maps in Changing Environments

16 October 2024
Yufei Zhu
Andrey Rudenko
Luigi Palmieri
Lukas Heuer
A. Lilienthal
Martin Magnusson
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Abstract

Maps of dynamics are effective representations of motion patterns learned from prior observations, with recent research demonstrating their ability to enhance various downstream tasks such as human-aware robot navigation, long-term human motion prediction, and robot localization. Current advancements have primarily concentrated on methods for learning maps of human flow in environments where the flow is static, i.e., not assumed to change over time. In this paper we propose an online update method of the CLiFF-map (an advanced map of dynamics type that models motion patterns as velocity and orientation mixtures) to actively detect and adapt to human flow changes. As new observations are collected, our goal is to update a CLiFF-map to effectively and accurately integrate them, while retaining relevant historic motion patterns. The proposed online update method maintains a probabilistic representation in each observed location, updating parameters by continuously tracking sufficient statistics. In experiments using both synthetic and real-world datasets, we show that our method is able to maintain accurate representations of human motion dynamics, contributing to high performance flow-compliant planning downstream tasks, while being orders of magnitude faster than the comparable baselines.

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@article{zhu2025_2410.12237,
  title={ Fast Online Learning of CLiFF-maps in Changing Environments },
  author={ Yufei Zhu and Andrey Rudenko and Luigi Palmieri and Lukas Heuer and Achim J. Lilienthal and Martin Magnusson },
  journal={arXiv preprint arXiv:2410.12237},
  year={ 2025 }
}
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