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Probabilistic Multi-Sensor Fusion Based Indoor Positioning System on a Mobile Device

机译:基于概率多传感器融合的移动设备室内定位系统

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摘要

Nowadays, smart mobile devices include more and more sensors on board, such as motion sensors (accelerometer, gyroscope, magnetometer), wireless signal strength indicators (WiFi, Bluetooth, Zigbee), and visual sensors (LiDAR, camera). People have developed various indoor positioning techniques based on these sensors. In this paper, the probabilistic fusion of multiple sensors is investigated in a hidden Markov model (HMM) framework for mobile-device user-positioning. We propose a graph structure to store the model constructed by multiple sensors during the offline training phase, and a multimodal particle filter to seamlessly fuse the information during the online tracking phase. Based on our algorithm, we develop an indoor positioning system on the iOS platform. The experiments carried out in a typical indoor environment have shown promising results for our proposed algorithm and system design.
机译:如今,智能移动设备包括板上越来越多的传感器,例如运动传感器(加速度计,陀螺仪,磁力计),无线信号强度指示器(WiFi,蓝牙,Zigbee)和视觉传感器(LiDAR,摄像头)。人们已经基于这些传感器开发了各种室内定位技术。在本文中,在用于移动设备用户定位的隐马尔可夫模型(HMM)框架中研究了多个传感器的概率融合。我们提出了一种图形结构,用于在脱机训练阶段存储由多个传感器构建的模型,并提出一种多模式粒子过滤器,以在在线跟踪阶段无缝融合信息。基于我们的算法,我们在iOS平台上开发了一个室内定位系统。在典型的室内环境中进行的实验表明,对于我们提出的算法和系统设计,其结果令人鼓舞。

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