2017
DOI: 10.1109/tim.2017.2729438
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Indoor Localization Without a Prior Map by Trajectory Learning From Crowdsourced Measurements

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Cited by 33 publications
(25 citation statements)
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“…Result shows that the size of the radio map can be reduced by 72% with 2m localization error. In [126], PCA is also employed together with linear discriminant analysis to extract lower dimensional features from raw RSS measurement.…”
Section: Self-organizing Mapmentioning
confidence: 99%
“…Result shows that the size of the radio map can be reduced by 72% with 2m localization error. In [126], PCA is also employed together with linear discriminant analysis to extract lower dimensional features from raw RSS measurement.…”
Section: Self-organizing Mapmentioning
confidence: 99%
“…By subtracting the covariance matrix of the white noise samples from the covariance matrix of the signal samples and applying PCA into the remaining covariance matrix, the cognitive user can obtain the largest principal component of the remaining covariance matrix, which can be used as a good test statistic for spectrum sensing. In [63], the authors have developed a PCA-based radio localization scheme. In particular, the received signal strength (RSS) contains the information of user's location, which is a random variable due to multi-path impacts.…”
Section: B Learning From Radio Environmentmentioning
confidence: 99%
“…They derived the significant information by feature extraction. The feature representations have been categorized by a Gaussian Process (GP) regression algorithm [ 28 ]. Lee et al created an IPS where the basic service set identity (BSSID) has also been learned along with the RSS record to classify indoor locations.…”
Section: Associated Work On Ipsmentioning
confidence: 99%