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Online Dynamic Window (ODW) Assisted 2-Stage LSTM Indoor Localization for Smart Phones

机译:在线动态窗口(ODW)为智能手机辅助2级LSTM室内定位

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There has been a recent surge of interest on smart phone-based indoor localization due to the urgent need for real-time, accurate, and scalable indoor positioning solutions independent of any proprietary sensors/modules. Existing Inertial Measurement Unit (IMU)-based approaches, typically, use statistical and error prone heading and step length estimation techniques rendering them impractical for robust, real-time and accurate indoor positioning. In this regard, the paper takes one step forward to transfer offline IMU-based models to online positioning frameworks. More specifically, inspired by prominent advances in sequential Signal Processing (SP) and Natural Language Processing (NLP) techniques, two near real-time dynamic windowing mechanisms are proposed based on a two stage Long Short-Term Memory (LSTM) localization architecture. The two underlying LSTM architectures are trained with 2100 Action Units (AU). Compared to the traditional LSTM-based positioning approaches suffering from either high tensor computation requirements or low accuracy preventing them for real-time deployment, the proposed Online Dynamic Windowing (ODW) assisted two stage LSTM models can perform localization in a real-time fashion. Performance evaluations based on a real Pedestrian Dead Reckoning (PDR) dataset shows that the proposed model can achieve exceptional classification accuracy of 97.9% and 95.5% for the two underlying LSTMs.
机译:由于迫切需要实时,准确,可扩展的室内定位解决方案,最近有利于智能手机的室内定位兴趣兴趣。现有的惯性测量单元(IMU)基础的方法,通常使用统计和误差易于出头和步长估计技术,使它们不切实际地用于鲁棒,实时和准确的室内定位。在这方面,本文需要一步,将基于IMU的模型转移到在线定位框架。更具体地,通过在顺序信号处理(SP)和自然语言处理(NLP)技术中的突出前进的启发,基于两个阶段长的短期存储器(LSTM)定位架构提出了两个接近实时动态窗口机制。两个底层的LSTM架构接受了2100个动作单位(AU)。与传统的基于LSTM的定位方法相比,患有高张量计算要求或低精度,防止它们进行实时部署,所提出的在线动态窗口(ODW)辅助两个阶段LSTM模型可以以实时方式执行本地化。基于真正的行人死亡(PDR)数据集的性能评估表明,所提出的模型可以实现卓越的分类精度为两个底层LSTMS的97.9%和95.5%。

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