Yunjia WangW. WangX. LiWenwen ZhangRenzhong Guo
Abstract. Indoor positioning is of great importance to the era of mobile computing. Currently, much attention has been paid to RSS-based location for that it can provide position information without additional equipment. However, this method suffers from many challenges: (1) fingerprint ambiguity; (2) labor-intensive of fingerprint collection; (3) low efficiency of fingerprint matching. To get over these drawbacks, we provide a collaborative WiFi fingerprinting indoor positioning method using near relation. The base idea of this method is that interpolation method is used to enrich sparse Wi-Fi fingerprint. Near relation boundary is provided and Wi-Fi fingerprints is constrained to this region to reduce fingerprint ambiguity, which also can improve the efficiency of fingerprint matching. Extensive experiments show that a positioning accuracy of 3.8 m can be achieved with the near relation under 1 m interpolation density.
Md. Hossen AliKamilia KamardinSiti Nurhafizza MaidinNgu War HlaingHazilah Mad KaidiIrfanuddin Shafi AhmedNoureen TajUniversiti Teknologi MalaysiaHazilah Mad KaidiUniversiti Teknologi MalaysiaIrfanuddin Shafi AhmedUniversiti Teknologi MalaysiaNoureen TajComputer Science Engineering
Yan LuoOrland HoeberYuanzhu Chen
Omar Costilla-ReyesKamesh Namuduri
Elena Simona LohanJoaquín Torres-SospedraHelena LeppäkoskiPhilipp RichterZhe PengJoaquı́n Huerta