收录:
摘要:
In order to improve the quality of the RSS (Received Signal Strength) during the offline phase, a Mixture Gaussian Calibration Model(MGCM) is proposed by us, and a Time Latency Calibration Model(TLCM) is proposed to address the time latency effect during the online phase for a fast moving object. Firstly, MGCM is applied to the collected RSS data to precisely extract the less noised RSS. Then a feed forward neural network is trained to build a model between RSS and physical location. Finally, TLCM is applied during the online phase. The experimental results indicate that MGCM and TLCM reduce error compared to traditional positioning method respectively, which demonstrate the advantages of the proposed algorithms. © 2017 IEEE.
关键词:
通讯作者信息:
电子邮件地址: