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A Hidden Markov Model for urban navigation based on fingerprinting and pedestrian dead reckoning

机译:基于指纹和行人死亡的城市航海的隐藏马尔可夫模型

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An algorithm for pedestrian navigation in indoor and urban canyon environments is presented. It considers platforms with low processing power and low-cost sensors. A combination of Wi-Fi positioning and dead reckoning, based on a Hidden Markov Model, is used. The positions of the Wi-Fi fingerprints in the database are used as hidden states. Dead reckoning is taken for state transition and a database correlation of the Wi-Fi signal strength measurements is performed in the measurement update. The dead reckoning consists of an accelerometer driven step length estimation and a magnetic field based heading calculation. Simulations and tests demonstrate that in this way ambiguities common in Wi-Fi positioning can be solved and outages can be bridged. Therefore, higher accuracy and robustness can be achieved.
机译:介绍了室内和城市峡谷环境中行人导航算法。它考虑了低处理电源和低成本传感器的平台。使用基于隐马尔可夫模型的Wi-Fi定位和死亡的组合。数据库中的Wi-Fi指纹的位置用作隐藏状态。对状态转换采取死亡次数,并在测量更新中执行Wi-Fi信号强度测量的数据库相关性。死亡再次估算包括加速度计驱动的步长估计和基于磁场的前线计算。模拟和测试表明,通过这种方式可以解决Wi-Fi定位中常见的模糊,并且可以弥合中断。因此,可以实现更高的准确性和鲁棒性。

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