Convolution based feature extraction for edge computing access authentication
Artículo
Open/ Download
Access note
Acceso Abierto
Publication date
2020Metadata
Show full item record
Cómo citar
Xie, Feiyi
Cómo citar
Convolution based feature extraction for edge computing access authentication
Author
Abstract
In this article, a convolutional neural network (CNN)
enhanced radio frequency fingerprinting (RFF) authentication
scheme is presented for Internet of things (IoT). RFF is a
non-cryptographic authentication technology, identifies devices
through the waveforms of the RF transient signals by processing
received RF signals on the edge server, which places no cost
burden to low-end (low-cost) devices without implementing any
encryption algorithmand meet the demands of the real-time access
authentication in Internet of things. In the new scheme, the
feasibility of extracting features based on one-dimensional
(1D) signal convolution is discussed, referring to the method
of extracting features from CNN, and combining with the
characteristics of signal convolution. A convolution kernel for 1D
signals is designed to extract the feature of signals in order to
reduce training time and ensure classification accuracy. Therefore,
it can improve the accuracy compared with these traditional
algorithms, while saving the training time of updating parameters
repeatedly as the neural network. The accuracy and training time
of thealgorithm are verified in a real signal acquisition system. The
results prove that the novel algorithm can effectively improve the
classification accuracy in low signal-to-noise ratio (SNR), while
keeps the training time in an acceptable range.
Patrocinador
National major RD program 2018YFB0904900
2018YFB0904905
Sichuan sci and tech service developement project 18KJFWSF0368
Chile CONICYT 181809
Sichuan sci and tech basic research condition platform project 2018TJPT0041
Indexation
Artículo de publicación ISI Artículo de publicación SCOPUS
Quote Item
IEEE Transactions on Network Science and Engineering, Vol. 7, No. 4, October-December 2020
Collections
The following license files are associated with this item: