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Hidden Markov Model based mobility learning fo improving indoor tracking of mobile users

机译:基于隐马尔可夫模型的移动性学习可改善移动用户的室内跟踪

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Indoors, a user's movements are typically confined by walls, corridors, and doorways, and further he is typically repeating the same movements such as walking between certain points in the building. Conventional indoor localization systems do usually not take these properties of the user's movements into account. In this paper we propose a Hidden Markov Model (HMM) based tracking algorithm, which takes a user's previous movements into account. In a quantized grid representation of an indoor scenario, past movement information is used to update the HMM transition probabilities. The user's most likely trajectory is then calculated using and extended version of the Viterbi algorithm. The results show significant improvements of the proposed algorithm compared to a simpler moving average smoothing.
机译:在室内,用户的动作通常受墙壁,走廊和门口的限制,此外,他通常重复相同的动作,例如在建筑物中的某些点之间行走。常规的室内定位系统通常不考虑用户运动的这些属性。在本文中,我们提出了一种基于隐马尔可夫模型(HMM)的跟踪算法,该算法考虑了用户的先前动作。在室内场景的量化网格表示中,过去的移动信息用于更新HMM转换概率。然后,使用维特比算法的扩展版本来计算用户最可能的轨迹。结果表明,与较简单的移动平均平滑相比,该算法得到了显着改进。

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