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WiFi-Aided Magnetic Matching for Indoor Navigation with Consumer Portable Devices

机译:WiFi辅助磁性匹配,可与消费类便携式设备进行室内导航

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This paper presents a WiFi-aided magnetic matching (MM) algorithm for indoor pedestrian navigation with consumer portable devices. This algorithm reduces both the mismatching rate (i.e., the rate of matching to an incorrect point that is more than 20 m away from the true value) and computational load of MM by using WiFi positioning solutions to limit the MM search space. Walking tests with Samsung Galaxy S3 and S4 smartphones in two different indoor environments (i.e., Environment #1 with abundant WiFi APs and significant magnetic features, and Environment #2 with less WiFi and magnetic information) were conducted to evaluate the proposed algorithm. It was found that WiFi fingerprinting accuracy is related to the signal distributions. MM provided results with small fluctuations but had a significant mismatch rate; when aided by WiFi, MM’s robustness was significantly improved. The outcome of this research indicates that WiFi and MM have complementary characteristics as the former is a point-by-point matching approach and the latter is based on profile-matching. Furthermore, performance improvement through integrating WiFi and MM depends on the environment (e.g., the signal distributions of magnetic intensity and WiFi RSS): In Environment #1 tests, WiFi-aided MM and WiFi provided similar results; in Environment #2 tests, the former was approximately 41.6% better. Our results supported that the WiFi-aided MM algorithm provided more reliable solutions than both WiFi and MM in the areas that have poor WiFi signal distribution or indistinctive magnetic-gradient features.
机译:本文提出了一种使用消费者便携式设备进行室内行人导航的WiFi辅助磁匹配(MM)算法。通过使用WiFi定位解决方案来限制MM搜索空间,该算法既降低了失配率(即与正确值相距超过20 m的错误点的匹配率),又降低了MM的计算负荷。使用三星Galaxy S3和S4智能手机在两个不同的室内环境(即具有丰富WiFi AP和显着磁性的环境#1和具有较少WiFi和磁性信息的环境#2)进行了步行测试,以评估该算法。发现WiFi指纹识别的准确性与信号分布有关。 MM提供的结果波动很小,但不匹配率很高;借助WiFi,MM的坚固性得到了显着提高。这项研究的结果表明,WiFi和MM具有互补性,因为前者是点对点匹配方法,而后者是基于轮廓匹配的。此外,通过整合WiFi和MM来提高性能取决于环境(例如,磁强度和WiFi RSS的信号分布):在环境#1测试中,WiFi辅助MM和WiFi提供了相似的结果;在2号环境测试中,前者要好大约41.6%。我们的结果表明,在WiFi信号分布较差或磁梯度特征不明显的地区,WiFi辅助MM算法可提供比WiFi和MM更为可靠的解决方案。

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