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    Niu Jianwei, Liu Yang, Lu Banghui, and Song Wenfang. An In-Building Localization Algorithm Based on Wi-Fi Signal Fingerprint[J]. Journal of Computer Research and Development, 2013, 50(3): 568-577.
    Citation: Niu Jianwei, Liu Yang, Lu Banghui, and Song Wenfang. An In-Building Localization Algorithm Based on Wi-Fi Signal Fingerprint[J]. Journal of Computer Research and Development, 2013, 50(3): 568-577.

    An In-Building Localization Algorithm Based on Wi-Fi Signal Fingerprint

    • Since GPS cannot be used under in-building environment and current in-building localization approaches require pre-installed infrastructure, in-building localization becomes a problem demanding prompt solutions for location-based services. Therefore, this paper proposes a novel room-level in-building localization algorithm R-kNN (relativity k-nearest neighbor), which solves the localization problem by leveraging MAC address and RSSI (received signal strength indication) of Wi-Fi access points (APs) deployed in buildings. R-kNN falls into category of property-weighted k-nearest neighbor algorithm. By assigning the weight of each AP according to the relativity between AP pairs, R-kNN can reduce the negative effect of dimension redundancy. Moreover, since it makes no assumption on the physical distribution of rooms and APs, R-kNN can work well with existing APs without deploying any new infrastructure or modifying the existing ones. Experimental results demonstrate that when a large number of APs are available, the localization accuracy of R-kNN is bigger than those of the original kNN algorithm and nave Bayes classifier, while its false positive ratio and false negative ratio is smaller than those of the original kNN algorithm and Nave Bayes classifier in most cases.
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