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Seamless Navigation Methodology optimized for Indoor/Outdoor Detection Based on WIFI

机译:基于WiFi的室内/室外检测优化无缝导航方法

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Smartphones with multiple sensors become more popular in contemporary society. The LBS (Location-Based Service), based on smartphones, develops rapidly. One of the most important prerequisite for LBS is to determine the indoor or outdoor environment and the location of the users, so that different service information can be offered. A seamless navigation methodology optimized for indoor/outdoor detection based on WIFI is proposed in this paper. The RSSI (Received Signal Strength Indication) values of WIFI collected by the smartphone are used by the AdaBoost algorithm to train the weak classifier into the strong classifier to distinguish the indoor/outdoor environment, as well as improving the overall accuracy of the indoor and outdoor seamless navigation. The classic AdaBoost method is improved in this paper: First, the RSSI value of a pair of APs (Access Points) is compared to construct a weak classifier, in order to solve the problem of device heterogeneity; Second, the optimized AdaBoost method adding several weak classifiers in each training phase, so that the abnormal conditions of APs can be reduced. When the device detects that the current environment is indoors or outdoors, the navigation mode is adapted to the current environment and the navigation accuracy can be improved. The experiment results indicate that the accuracy of indoor/outdoor detection is more than 97%, and it can significantly improve the continuity and the accuracy of the indoor/outdoor seamless navigation.
机译:具有多个传感器的智能手机在当代社会中变得更加受欢迎。基于智能手机的LBS(基于位置为基础的服务)迅速发展。 LBS最重要的先决条件是确定室内或室外环境以及用户的位置,从而可以提供不同的服务信息。本文提出了一种针对WiFi的室内/室外检测优化的无缝导航方法。智能手机收集的WiFi的RSSI(接收信号强度指示)值由Adaboost算法使用,将弱分类器培训到强分类器中以区分室内/室外环境,以及提高室内和室外的整体精度无缝导航。本文改进了经典的Adaboost方法:首先,将一对AP的RSSI值进行比较,以构造弱分类器,以解决设备异质性的问题;其次,优化的Adaboost方法在每个训练阶段中添加多个弱分类器,从而可以减少AP的异常情况。当设备检测到当前环境在室内或室外时,导航模式适用于当前环境,并且可以提高导航精度。实验结果表明室内/室外检测的准确性超过97%,可以显着提高室内/室外无缝导航的连续性和准确性。

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