학술논문

Deep and Shallow Features Fusion Based Deep CNN for Spectrum Sensing in Cognitive Radio
Document Type
Conference
Source
2022 IEEE 22nd International Conference on Communication Technology (ICCT) Communication Technology (ICCT), 2022 IEEE 22nd International Conference on. :236-240 Nov, 2022
Subject
Communication, Networking and Broadcast Technologies
Signal Processing and Analysis
Deep learning
Fuses
Convolution
Neural networks
Feature extraction
Sensors
Classification algorithms
cognitive radio
spectrum sensing
convolutional neural network
deep learning
deep and shallow features fusion
Language
ISSN
2576-7828
Abstract
The powerful classification capability of deep neural network (DNN) makes the DNN-based spectrum sensing algorithms very attractive in practical applications. However, it is worth noting that most existing DNN-based spectrum sensing algorithms only utilize deep features of the received signals, which may limit the further improvement of sensing performance of those algorithms. On the one hand, DNNs often lose most of the global information in the process of extracting deep features, resulting in that the deep features sometimes will not be the optimal choice for classification; on the other hand, shallow features will retain most of the global information, but they are hard to highlight the detailed information. In view of this, a deep and shallow features fusion based CNN (DSFF-CNN) framework is proposed for spectrum sensing. The DSFF-CNN based algorithm uses the sample covariance matrix (SCM) of the received signal as input and fuses the features of different convolutional layers, allowing to make full use of both deep and shallow features. The experimental results show that the proposed algorithm obtains higher detection probability than the classical spectrum sensing algorithm based on CNN, which verifies the effectiveness of the algorithm.