Article ID Journal Published Year Pages File Type
725738 The Journal of China Universities of Posts and Telecommunications 2012 7 Pages PDF
Abstract
In this paper, a new ℓ1-graph regularized semi-supervised manifold learning (LRSML) method is proposed for indoor localization. Due to noise corruption and non-linearity of received signal strength (RSS), traditional approaches always fail to deliver accurate positioning results. The ℓ1-graph is constructed by sparse representation of each sample with respect to remaining samples. Noise factor is considered in the construction process of ℓ1-graph, leading to more robustness compared to traditional k-nearest-neighbor graph (KNN-graph). The KNN-graph construction is supervised, while the ℓ1-graph is assumed to be unsupervised without harnessing any data label information and uncovers the underlying sparse relationship of each data. Combining KNN-graph and ℓ1-graph, both labeled and unlabeled information are utilized, so the LRSML method has the potential to convey more discriminative information compared to conventional methods. To overcome the non-linearity of RSS, kernel-based manifold learning method (K-LRSML) is employed through mapping the original signal data to a higher dimension Hilbert space. The efficiency and superiority of LRSML over current state of art methods are verified with extensive experiments on real data.
Related Topics
Physical Sciences and Engineering Engineering Electrical and Electronic Engineering
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