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A Smartphone Camera-Based Indoor Positioning Algorithm of Crowded Scenarios with the Assistance of Deep CNN

机译:深度CNN辅助的基于智能手机相机的拥挤场景室内定位算法

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Considering the installation cost and coverage, the received signal strength indicator (RSSI)-based indoor positioning system is widely used across the world. However, the indoor positioning performance, due to the interference of wireless signals that are caused by the complex indoor environment that includes a crowded population, cannot achieve the demands of indoor location-based services. In this paper, we focus on increasing the signal strength estimation accuracy considering the population density, which is different to the other RSSI-based indoor positioning methods. Therefore, we propose a new wireless signal compensation model considering the population density, distance, and frequency. First of all, the number of individuals in an indoor crowded scenario can be calculated by our convolutional neural network (CNN)-based human detection approach. Then, the relationship between the population density and the signal attenuation is described in our model. Finally, we use the trilateral positioning principle to realize the pedestrian location. According to the simulation and tests in the crowded scenarios, the proposed model increases the accuracy of the signal strength estimation by 1.53 times compared to that without considering the human body. Therefore, the localization accuracy is less than 1.37 m, which indicates that our algorithm can improve the indoor positioning performance and is superior to other RSSI models.
机译:考虑到安装成本和覆盖范围,基于接收信号强度指示器(RSSI)的室内定位系统已在全球范围内广泛使用。然而,由于包括拥挤的人群在内的复杂的室内环境引起的无线信号的干扰,室内定位性能无法满足室内定位服务的需求。在本文中,我们着重考虑人口密度提高信号强度估计的准确性,这与其他基于RSSI的室内定位方法不同。因此,我们提出一种考虑人口密度,距离和频率的新型无线信号补偿模型。首先,可以通过基于卷积神经网络(CNN)的人体检测方法来计算室内拥挤场景中的个体数量。然后,在我们的模型中描述了人口密度与信号衰减之间的关系。最后,我们采用三边形定位原理来实现行人定位。通过在拥挤场景中的仿真和测试,与不考虑人体的情况相比,该模型将信号强度估计的精度提高了1.53倍。因此,定位精度小于1.37 m,表明我们的算法可以提高室内定位性能,优于其他RSSI模型。

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