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V2X Wireless Technology Identification Using Time–Frequency Analysis and Random Forest Classifier

Camelia Skiribou, F. Elbahhar

2021Sensors18 citationsDOIOpen Access PDF

Abstract

Signal identification is of great interest for various applications such as spectrum sharing and interference management. A typical signal identification system can be divided into two steps. A feature vector is first extracted from the received signal, then a decision is made by a classification algorithm according to its observed values. Some existing techniques show good performance but they are either sensitive to noise level or have high computational complexity. In this paper, a machine learning algorithm is proposed for the identification of vehicular communication signals. The feature vector is made up of Instantaneous Frequency (IF) resulting from time-frequency (TF) analysis. Its dimension is then reduced using the Singular Value Decomposition (SVD) technique, before being fed into a Random Forest classifier. Simulation results show the relevance and the low complexity of IF features compared to existing cyclostationarity-based ones. Furthermore, we found that the same accuracy can be maintained regardless of the noise level. The proposed framework thus provides a more accurate, robust and less complex V2X signal identification system.

Topics & Concepts

Random forestComputer scienceClassifier (UML)Singular value decompositionPattern recognition (psychology)Support vector machineTime–frequency analysisArtificial intelligenceComputational complexity theoryIdentification (biology)Feature vectorSpeech recognitionData miningAlgorithmFilter (signal processing)Computer visionBotanyBiologyWireless Signal Modulation ClassificationTerahertz technology and applicationsRadar Systems and Signal Processing
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