Ultra-wideband (UWB) has shown promising potential in GPS-denied localization thanks to its lightweight and drift-free characteristics, while the accuracy is limited in real scenarios due to its sensitivity to sensor arrangement and non-Gaussian pattern induced by multi-path or multi-signal interference, which commonly occurs in many typical applications like long tunnels. We introduce a novel neural fusion framework for ranging inertial odometry which involves a graph attention UWB network and a recurrent neural inertial network. Our graph net learns scene-relevant ranging patterns and adapts to any number of anchors or tags, realizing accurate positioning without calibration. Additionally, the integration of least squares and the incorporation of nominal frame enhance overall performance and scalability. The effectiveness and robustness of our methods are validated through extensive experiments on both public and self-collected datasets, spanning indoor, outdoor, and tunnel environments. The results demonstrate the superiority of our proposed IR-ULSG in handling challenging conditions, including scenarios outside the convex envelope and cases where only a single anchor is available.


翻译:超宽带(UWB)技术凭借其轻量级和无漂移特性,在无GPS定位场景中展现出广阔的应用前景,但其精度在实际应用中受到限制,原因在于其对传感器布局的敏感性以及由多径或多信号干扰(常见于长隧道等典型应用场景)引起的非高斯模式。我们提出了一种新颖的神经融合框架用于测距惯性里程计,该框架包含图注意力UWB网络和循环神经惯性网络。我们的图网络能够学习场景相关的测距模式,并适应任意数量的锚点或标签,实现无需校准的精准定位。此外,最小二乘法的集成与标称帧的引入进一步提升了整体性能与可扩展性。通过在公开数据集和自采集数据集(涵盖室内、室外及隧道环境)上进行大量实验,验证了所提方法的有效性与鲁棒性。结果表明,我们提出的IR-ULSG在处理挑战性条件(包括凸包外部场景及仅单个锚点可用的情况)方面具有显著优势。

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