Lightweight map matching for indoor localisation using conditional random fields

Zhuoling Xiao, Hongkai Wen, A. Markham, A. Trigoni
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引用次数: 155

Abstract

Indoor tracking and navigation is a fundamental need for pervasive and context-aware smartphone applications. Although indoor maps are becoming increasingly available, there is no practical and reliable indoor map matching solution available at present. We present MapCraft, a novel, robust and responsive technique that is extremely computationally efficient (running in under 10 ms on an Android smartphone), does not require training in different sites, and tracks well even when presented with very noisy sensor data. Key to our approach is expressing the tracking problem as a conditional random field (CRF), a technique which has had great success in areas such as natural language processing, but has yet to be considered for indoor tracking. Unlike directed graphical models like Hidden Markov Models, CRFs capture arbitrary constraints that express how well observations support state transitions, given map constraints. Extensive experiments in multiple sites show how MapCraft outperforms state-of-the art approaches, demonstrating excellent tracking error and accurate reconstruction of tortuous trajectories with zero training effort. As proof of its robustness, we also demonstrate how it is able to accurately track the position of a user from accelerometer and magnetometer measurements only (i.e. gyro- and WiFi-free). We believe that such an energy-efficient approach will enable always-on background localisation, enabling a new era of location-aware applications to be developed.
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使用条件随机场的室内定位轻量级地图匹配
室内跟踪和导航是普及和环境感知智能手机应用程序的基本需求。虽然室内地图越来越多,但目前还没有实用可靠的室内地图匹配解决方案。我们介绍了MapCraft,这是一种新颖的、健壮的、响应迅速的技术,它具有极高的计算效率(在Android智能手机上运行不到10毫秒),不需要在不同的地点进行培训,即使在非常嘈杂的传感器数据中也能很好地跟踪。我们方法的关键是将跟踪问题表示为条件随机场(CRF),这一技术在自然语言处理等领域取得了巨大成功,但尚未考虑用于室内跟踪。与隐马尔可夫模型等有向图形模型不同,CRFs捕获任意约束,这些约束表示给定映射约束下观测值对状态转换的支持程度。在多个站点进行的大量实验表明,MapCraft如何优于最先进的方法,展示了出色的跟踪误差和零训练努力的曲折轨迹的准确重建。作为其稳健性的证明,我们还演示了它如何能够准确地跟踪用户的位置,仅从加速度计和磁力计测量(即陀螺仪和无wifi)。我们相信这种节能的方法将使后台定位始终处于开启状态,从而开创位置感知应用程序的新时代。
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