ARTÍCULO
TITULO

Near Relation-Based Indoor Positioning Method under Sparse Wi-Fi Fingerprints

Yankun Wang    
Renzhong Guo    
Weixi Wang    
Xiaoming Li    
Shengjun Tang    
Wei Zhang    
Luyao Wang    
Liang Chen    
You Li and Wenqun Xiu    

Resumen

Indoor positioning is of great importance in the era of mobile computing. Currently, considerable focus has been on RSS-based locations because they can provide position information without additional equipment. However, this method suffers from two challenges: (1) fingerprint ambiguity and (2) labour-intensive fingerprint collection. To overcome these drawbacks, we provide a near relation-based indoor positioning method under a sparse Wi-Fi fingerprint. To effectively obtain the fingerprint database, certain interpolation methods are used to enrich sparse Wi-Fi fingerprints. A near relation boundary is provided, and Wi-Fi fingerprints are constrained to this region to reduce fingerprint ambiguity, which can also improve the efficiency of fingerprint matching. Extensive experiments show that the kriging interpolation method performs well, and a positioning accuracy of 2.86 m can be achieved with a near relation under a 1 m interpolation density.

 Artículos similares

       
 
Shixiong Xia, Yi Liu, Guan Yuan, Mingjun Zhu and Zhaohui Wang    

 
Chunjing Song and Jian Wang