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Crowdsourcing and Multisource Fusion-Based Fingerprint Sensing in Smartphone Localization

机译:智能手机本地化的众包和基于多源融合的指纹感应

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摘要

Traditional WiFi fingerprint positioning normally uses a time consuming and labor intensive process called site survey. This paper proposes a crowdsourcing and multisource fusion-based fingerprint sensing (CMFS) to replace the traditional site survey approach. In CMFS, motion sensors are used to construct the radio map by volunteers and pedestrian dead reckoning based on motion sensors equipped in smartphones is used for positioning. In positioning phase, an extended Kalman filter (EKF)-based multisource fusion algorithm is further developed to tackle the nonlinear fusion so that both positioning accuracy and robustness can be improved. Both experimental and simulation results verify that the performance of proposed schemes is comparable to the traditional fingerprint approaches. Further the EKF-based fusion scheme is found to improve smoothness and stability of CMFS greatly.
机译:传统的WiFi指纹定位通常使用耗时和劳动密集型过程,称为网站调查。 本文提出了一种众包和基于多源融合的指纹感应(CMF)来取代传统的现场调查方法。 在CMFS中,运动传感器用于通过志愿者构建无线电映射,并且基于智能手机的运动传感器的行人死算用于定位。 在定位阶段,进一步开发出扩展的卡尔曼滤波器(EKF)的多源融合算法以解决非线性融合,从而可以提高定位精度和鲁棒性。 两种实验和仿真结果验证了所提出的方案的性能与传统的指纹方法相当。 此外,发现基于EKF的融合方案可以大大提高CMF的平滑性和稳定性。

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