SPLGMar 28, 2024

Removing the need for ground truth UWB data collection: self-supervised ranging error correction using deep reinforcement learning

arXiv:2403.19262v22 citationsh-index: 16IEEE Trans Mach Learn Commun Netw
AI Analysis

This addresses the impracticality of collecting large labeled datasets for UWB error correction, offering a scalable solution for real-world deployments.

The paper tackles the problem of UWB ranging errors in indoor positioning by proposing a self-supervised deep reinforcement learning approach that eliminates the need for labeled ground truth data, achieving performance comparable to state-of-the-art supervised methods.

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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