Removing the Need for Ground Truth UWB Data Collection: Self-Supervised Ranging Error Correction Using Deep Reinforcement Learning

Dieter Coppens;Ben van Herbruggen;Adnan Shahid;Eli de Poorter
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Abstract

Indoor positioning using UWB technology has gained interest due to its centimeter-level accuracy potential. However, multipath effects and non-line-of-sight conditions cause ranging errors between anchors and tags. Existing approaches for mitigating these ranging errors rely on collecting large labeled datasets, making them impractical for real-world deployments. This paper proposes a novel self-supervised deep reinforcement learning approach that does not require labeled ground truth data. A reinforcement learning agent uses the channel impulse response as a state and predicts corrections to minimize the error between corrected and estimated ranges. The agent learns, self-supervised, by iteratively improving corrections that are generated by combining the predictability of trajectories with filtering and smoothening. Experiments on real-world UWB measurements demonstrate comparable performance to state-of-the-art supervised methods, overcoming data dependency and lack of generalizability limitations. This makes self-supervised deep reinforcement learning a promising solution for practical and scalable UWB-ranging error correction.
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无需收集地面实况 UWB 数据:利用深度强化学习进行自监督测距纠错
使用 UWB 技术进行室内定位因其厘米级精度潜力而备受关注。然而,多径效应和非视距条件会导致锚点和标签之间产生测距误差。现有的减小这些测距误差的方法依赖于收集大量标签数据集,这使得它们在现实世界的部署中变得不切实际。本文提出了一种无需标注地面实况数据的新型自监督深度强化学习方法。强化学习代理将信道脉冲响应作为一种状态,并预测修正,以尽量减小修正范围与估计范围之间的误差。该代理通过迭代改进修正来进行自我监督学习,这些修正是通过将轨迹的可预测性与过滤和平滑相结合而生成的。对真实世界 UWB 测量的实验表明,其性能与最先进的监督方法不相上下,克服了数据依赖性和缺乏通用性的限制。这使得自监督深度强化学习成为实用、可扩展的 UWB 范围误差校正的理想解决方案。
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