TY - GEN
T1 - Toward A Dynamic K in K-nearest neighbor fingerprint indoor positioning
AU - Hu, Jiusong
AU - Liu, Hongli
AU - Liu, Dawei
N1 - Publisher Copyright:
© 2018 IEEE.
PY - 2018/8/2
Y1 - 2018/8/2
N2 - K-nearest neighbor (KNN) fingerprint positioning is a promising solution for WLAN-based indoor positioning that has received much attention over the past ten years. In order to achieve good positioning results, much effort has been made to develop advanced KNN algorithms and to find the optimal K. So far most of the work has concentrated on using a fixed K for a given positioning system. A drawback is that the positioning system would become unstable since the best K at one place may not be the best for another. In order to address this problem, we propose a dynamic KNN algorithm that can adjust the value of K dynamically to offset noises of different levels. The value adjustment is made based on the WiFi signals measured in realtime, therefore, it does not require any prior knowledge of the WLAN or the indoor environment. Analysis on field measurement data shows that, for a large percentage of the positioning area, the best K is 1 instead of 3 or 5 found in previous studies. The field experiment also shows, by setting K=1, the proposed method can achieve better positioning accuracy compared with the classical KNN method.
AB - K-nearest neighbor (KNN) fingerprint positioning is a promising solution for WLAN-based indoor positioning that has received much attention over the past ten years. In order to achieve good positioning results, much effort has been made to develop advanced KNN algorithms and to find the optimal K. So far most of the work has concentrated on using a fixed K for a given positioning system. A drawback is that the positioning system would become unstable since the best K at one place may not be the best for another. In order to address this problem, we propose a dynamic KNN algorithm that can adjust the value of K dynamically to offset noises of different levels. The value adjustment is made based on the WiFi signals measured in realtime, therefore, it does not require any prior knowledge of the WLAN or the indoor environment. Analysis on field measurement data shows that, for a large percentage of the positioning area, the best K is 1 instead of 3 or 5 found in previous studies. The field experiment also shows, by setting K=1, the proposed method can achieve better positioning accuracy compared with the classical KNN method.
KW - Fingerprint positioning
KW - Indoor positioning
KW - K-nearest neighbor
UR - http://www.scopus.com/inward/record.url?scp=85052288449&partnerID=8YFLogxK
U2 - 10.1109/IRI.2018.00054
DO - 10.1109/IRI.2018.00054
M3 - Conference Proceeding
AN - SCOPUS:85052288449
SN - 9781538626597
T3 - Proceedings - 2018 IEEE 19th International Conference on Information Reuse and Integration for Data Science, IRI 2018
SP - 308
EP - 314
BT - Proceedings - 2018 IEEE 19th International Conference on Information Reuse and Integration for Data Science, IRI 2018
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 19th IEEE International Conference on Information Reuse and Integration for Data Science, IRI 2018
Y2 - 7 July 2018 through 9 July 2018
ER -