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Indoor Localization and Radio Map Estimation Using Unsupervised Manifold Alignment with Geometry Perturbation
2016
IEEE Transactions on Mobile Computing
The Received Signal Strength (RSS) based fingerprinting approaches for indoor localization pose a need for updating the fingerprint databases due to dynamic nature of the indoor environment. This process is hectic and time-consuming when the size of the indoor area is large. The semi-supervised approaches reduce this workload and achieve good accuracy around 15% of the fingerprinting load but the performance is severely degraded if it is reduced below this level. We propose an indoor
doi:10.1109/tmc.2015.2510631
fatcat:bqri7v3swjcyjebj63ioyg4uai