Title
AF-DCGAN: Amplitude Feature Deep Convolutional GAN for Fingerprint Construction in Indoor Localization System.
Abstract
Wi-Fi positioning is currently the mainstream indoor positioning method, and the construction of fingerprint database is crucial to Wi-Fi based localization system. However, the accuracy requirement needs to sample enough data at many reference points, which consumes significant manpower and time. In this paper, we convert the CSI data collected at reference points into amplitude feature maps and then extend the fingerprint database using the proposed Amplitude Feature Deep Convolutional Generative Adversarial Network (AF-DCGAN) model. Using this model, the convergence process in the training phase can be accelerated, and the diversity of the CSI amplitude feature maps can be increased significantly. Based on the extended fingerprint database, the accuracy of indoor localization system can be improved with reduced human effort.
Year
DOI
Venue
2018
10.1109/tetci.2019.2948058
arXiv: Networking and Internet Architecture
Field
DocType
Volume
Convergence (routing),Generative adversarial network,Pattern recognition,Computer science,Fingerprint,Localization system,Artificial intelligence,Fingerprint database,Amplitude,Distributed computing
Journal
abs/1804.05347
Citations 
PageRank 
References 
1
0.37
13
Authors
6
Name
Order
Citations
PageRank
Qiyue Li15414.45
Heng Qu210.37
Zhi Liu394.60
Nana Zhou410.37
Wei Sun55012.99
Jie Li648736.48